現実認識型情報端末uScopeの提案

Size: px
Start display at page:

Download "現実認識型情報端末uScopeの提案"

Transcription

1 uscope YRP AR(Augmented Reality:) uscope POI(Point Of Interest) 1. AR(Augmented Reality)/MR(Mixed Reality) [1] Layer [2] GPS POI Point Of Interest POI 2(a) POI POI POI 2(b) POI GPS 5 10m (a) (b) 1 uscope

2 Khufu's Pyramid Khafre's Pyramid Menkaure's Pyramid?? (a) : (b) :POI 2 AR uscope 1(a),1(b) POI POI GPS Castle [4] PTAMM PTAM [3] POI OmniDB OmniDB AR Klein [3] PTAM(Parallel Tracking And Mapping) iphone 15fps [13] Castle [4] PTAMM(Parallel Tracking and Multiple Mapping)

3 3 Yazawa [5] SURF Valgren [6] 7 SURF [7] SIFT [8] 15% AR POI 3 SURF [7] SURF POI 1.

4 SURF SURF + = 12:15 SURFPoints = X 14:30 SURFPoints = Y OmniDB SURFPoints = X+Y 4 OmniDB : 12:15 X 14:30 Y OmniDB X+Y POI 3. 2 OminDB DB 4 12:15 14:30 OmniDB 4 12:15 X SURF 14:30 Y SURF X+Y SURF OmniDB OmniDB OmniDB OmniDB 3 4. OmniDB OmniDB

5 (a) 博物館 (b) 美術館 (c) レストラン 図 5 観測場所写真 4. 3 定点観測画像全数マッチング 検出ずれ 各地点の定点観測データより 各地点ごとに観測画像 間のマッチング結果のずれを算出した これは5分間隔 取得した観測画像対観測画像で全数マッチングを行い マッチングした結果が何 px 分ずれていたかを求めたも のである 前程として定点観測画像間のマッチングであ る為 ずれが 0px であることが理想である これを行う ことで 何時に撮影した画像をリファレンスとして用い ると日中の全時間帯でマッチングが可能になるかを求め (a) 博物館:検出ずれ ることができる 図 6(a),6(b),6(c) に観測時間を軸とした観測地点毎の 結果を示す 色が暗いほどずれが小さく 明るいほどず れが大きいことを示している この結果から言えることは まず美術館においては全 般的に色が暗く マッチングを行なった際のずれがどの 時間においても非常に小さいと言える これは筐体設置 場所前のガラスに円形のマークが貼られており これが 目印となって外の日照条件が変わったとしてもその円形 マークを観測することで正確なマッチングが行えたと考 えられる また博物館においてはずれが各所で発生して (b) 美術館:検出ずれ いる これは市街地にむけた観測であったため 人工物 が多数存在することで日照条件が変わると特徴点の出 現が大きく変わったことが要因であると考えられる し かし細かく見ていくと 16:15 周辺の写真を用いた際にず れの少ないマッチングが一日を通して行えている この 時間帯は夕方であったため 強い日差しが他と比べて弱 く 特徴点が安定して出現したことが要因であると考え られる 一方でレストランにおいてマッチングが 100%成功す る時間帯は無かった これは先に上げたような目印が近 くに無かったことが大きな原因であると考えられる こ の条件の違いによって日照変化が影響して安定したマッ (c) レストラン:検出ずれ 図6 分析 定点観測データ 色が暗いほどマッチングした結果 のずれが小さく 明るいほどずれが大きい チングが行えなかったものと考えられる 4. 4 OmniDB を用いたマッチング ここで 4. 3 章にて算出した検出ずれが 5px 以内であっ た場合にマッチングが成功したとみなし 一日を通して 何%マッチングに成功したかを求めた これをマッチン グ成功率とする このマッチング成功率を求めることで 一日を通して最もマッチングしやすい写真と最もマッ チングしにくい写真を求め そこから提案手法である OmniDB を作成した ここではレストランを例に挙げ る レストランにてマッチング成功率が低かった時間帯 12:15 と 14:30 の観測結果から SURF 特徴量を求め そ れをマージして OmniDB を作成した 表 2 にてマッチ ング成功率の最低 最高 そして OmniDB を適用した

6 :25 10:45 11:05 11:25 11:45 12:05 12:25 12:45 13:05 13:25 13:45 14:05 14:25 14:45 15:05 15:25 15:45 16:05 16:25 16: :10 14:40 OmniDB 2 OmniDB : 14:40 12:15 OmniDB 43.20% 95.06% % OmniDB 100% 7 5px 12: :40 OmniDB 5. uscope DB OmniDB OmniDB [1] TonchidotCorporation: sekaicamera.com, SekaiCamera. [2] Layer: Layar. [3] G. Klein and D. Murray: Parallel tracking and mapping for small ar workspaces, Proceedings of the th IEEE and ACM International Symposium on Mixed and Augmented Reality, pp (2007). [4] R. Castle and D. Murray: Object recognition and localization while tracking and mapping, Proceedings of the th IEEE... (2009). [5] N. Yazawa, H. Uchiyama, H. Saito, M. Servieres, G. Moreau and E. IRSTV: Image based view localization system retrieving from a panorama database by surf, IAPR Conference on Machine Vision Application, Yokohama, Japan (2009). [6] C. Valgren and A. Lilienthal: Sift, surf & seasons: Appearance-based long-term localization in outdoor environments, Robotics and Autonomous Systems, 58, 2, pp (2010). [7] H. Bay, T. Tuytelaars and L. V. Gool: Surf: Speeded up robust features, Lecture Notes in Computer Science (2006). [8] D. Lowe: Object recognition from local scaleinvariant features, iccv (1999). [9] M. Muja and D. Lowe: Fast approximate nearest neighbors with automatic algorithm con guration, International Conference on Computer Vision Theory... (2009). [10] D. Gossow, P. Decker and D. Paulus: An evaluation of open source surf implementations, pp [11] D. Ta, W. Chen, N. Gelfand and K. Pulli: Surftrac: E cient tracking and continuous object recognition using local feature descriptors, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR) (2009). [12] E. Chu, E. Hsu and S. Yu: Image-guided tours: Fast-approximated sift with u-surf features. [13] G. Klein and D. Murray: Parallel tracking and mapping on a camera phone, Proceedings of the International Symposium on Mixed and Augmented Reality (ISMAR) (2009). [14] A. Ascani, E. Frontoni and A. Mancini: Robot localization using omnidirectional vision in large and dynamic outdoor environments,... on Mechtronic and... (2008).

7 [15] N. Snavely, S. Seitz and R. Szeliski: Photo tourism: exploring photo collections in 3d, ACM SIG- GRAPH 2006 Papers (2006). [16] C. Evans: Notes on the opensurf library, Technical Report CSTR (2009). [17] A. Murillo and J. Guerrero: Surf features for efficient robot localization with omnidirectional images,... Conference on Robotics... (2007). [18] K. NOGUCHI, T. NAKAI and K. KISE: Experimental investigation of relation between near neighbor search methods for feature vectors and efficiency of object recognition, IPSJ SIG Technical... (2006). [19] N. Zhang: Computing parallel speeded-up robust features (p-surf) via posix threads, Proceedings of the 5th international conference on Emerging intelligent computing technology and applications, pp (2009). [20] S. Sinha, J. Frahm, M. Pollefeys and Y. Genc: Gpubased video feature tracking and matching, EDGE (2006). [21] NokiaCorporation: qt.nokia.com, Qt-A crossplatform application and UI framework. [22] V. Paelke and C. Brenner: Development of a mixed reality device for interactive on-site geovisualization, Proceedings of 18th Simulation and Visualization Conference (2007). [23] M. Özuysal, M. Calonder, V. Lepetit and P. Fua: Fast keypoint recognition using random ferns, IEEE transactions on pattern analysis and machine intelligence (2009). [24] W. Zhang and J. Kosecka: Localization based on building recognition,... Vision and Pattern Recognition-... (2005). [25] G. Bradski and A. Kaehler: Learning OpenCV: Computer Vision with the OpenCV Library (2008). [26] W. Thompson, T. Henderson, T. Colvin, L. Dick and C. Valiquette: Vision-based localization, DARPA Image Understanding Workshop, pp (1993). [27] M. Shapshak: New approaches for mixed reality in urban environments: The cinespace project, 5th International Conference Virtual City and Territory. Spain (2009). 1. uscope uscope 1. 1 SURF SURF POI POI DB POI 1. 2 SURF [7] SURF Harr Wavelet SURF SIFT [8] SIFT SURF SIFT SURF GPGPU [20] 1. 3 FLANN(Fast Library for Approximate Nearest Neighbors) [9]

8 RANSAC RANdom SAmple Consensus 90 5% 1. 5 ID ID POI 1. 6 Qt WebKit HTML CSS JavaScript OSX Qt Windows Linux A 1 PC MacPro MB535J/A Video Camera SONY HDR-CX550V HDMI Capture BlackMagicDesign Intensity Pro LCD 22inc FullHD Display MacPro Xeon 2.26GHz QuadCore X p HDMI 1080p HDMI 180 1(a) 1. 7 Qt OpenCV SURF OpenSURF

IPSJ SIG Technical Report iphone iphone,,., OpenGl ES 2.0 GLSL(OpenGL Shading Language), iphone GPGPU(General-Purpose Computing on Graphics Proc

IPSJ SIG Technical Report iphone iphone,,., OpenGl ES 2.0 GLSL(OpenGL Shading Language), iphone GPGPU(General-Purpose Computing on Graphics Proc iphone 1 1 1 iphone,,., OpenGl ES 2.0 GLSL(OpenGL Shading Language), iphone GPGPU(General-Purpose Computing on Graphics Processing Unit)., AR Realtime Natural Feature Tracking Library for iphone Makoto

More information

(MIRU2010) Geometric Context Randomized Trees Geometric Context Rand

(MIRU2010) Geometric Context Randomized Trees Geometric Context Rand (MIRU2010) 2010 7 Geometric Context Randomized Trees 487-8501 1200 E-mail: {fukuta,ky}@vision.cs.chubu.ac.jp, hf@cs.chubu.ac.jp Geometric Context Randomized Trees 10 3, Geometric Context, Abstract Image

More information

IPSJ SIG Technical Report Vol.2012-CG-149 No.13 Vol.2012-CVIM-184 No /12/4 3 1,a) ( ) DB 3D DB 2D,,,, PnP(Perspective n-point), Ransa

IPSJ SIG Technical Report Vol.2012-CG-149 No.13 Vol.2012-CVIM-184 No /12/4 3 1,a) ( ) DB 3D DB 2D,,,, PnP(Perspective n-point), Ransa 3,a) 3 3 ( ) DB 3D DB 2D,,,, PnP(Perspective n-point), Ransac. DB [] [2] 3 DB Web Web DB Web NTT NTT Media Intelligence Laboratories, - Hikarinooka Yokosuka-Shi, Kanagawa 239-0847 Japan a) yabushita.hiroko@lab.ntt.co.jp

More information

& Vol.5 No (Oct. 2015) TV 1,2,a) , Augmented TV TV AR Augmented Reality 3DCG TV Estimation of TV Screen Position and Ro

& Vol.5 No (Oct. 2015) TV 1,2,a) , Augmented TV TV AR Augmented Reality 3DCG TV Estimation of TV Screen Position and Ro TV 1,2,a) 1 2 2015 1 26, 2015 5 21 Augmented TV TV AR Augmented Reality 3DCG TV Estimation of TV Screen Position and Rotation Using Mobile Device Hiroyuki Kawakita 1,2,a) Toshio Nakagawa 1 Makoto Sato

More information

SICE東北支部研究集会資料(2013年)

SICE東北支部研究集会資料(2013年) 280 (2013.5.29) 280-4 SURF A Study of SURF Algorithm using Edge Image and Color Information Yoshihiro Sasaki, Syunichi Konno, Yoshitaka Tsunekawa * *Iwate University : SURF (Speeded Up Robust Features)

More information

3 2 2 (1) (2) (3) (4) 4 4 AdaBoost 2. [11] Onishi&Yoda [8] Iwashita&Stoica [5] 4 [3] 3. 3 (1) (2) (3)

3 2 2 (1) (2) (3) (4) 4 4 AdaBoost 2. [11] Onishi&Yoda [8] Iwashita&Stoica [5] 4 [3] 3. 3 (1) (2) (3) (MIRU2012) 2012 8 820-8502 680-4 E-mail: {d kouno,shimada,endo}@pluto.ai.kyutech.ac.jp (1) (2) (3) (4) 4 AdaBoost 1. Kanade [6] CLAFIC [12] EigenFace [10] 1 1 2 1 [7] 3 2 2 (1) (2) (3) (4) 4 4 AdaBoost

More information

27 AR

27 AR 27 AR 28 2 19 12111002 AR AR 1 3 1.1....................... 3 1.1.1...................... 3 1.1.2.................. 4 1.2............................ 4 1.2.1 AR......................... 5 1.2.2......................

More information

光学

光学 Fundamentals of Projector-Camera Systems and Their Calibration Methods Takayuki OKATANI To make the images projected by projector s appear as desired, it is e ective and sometimes an only choice to capture

More information

Duplicate Near Duplicate Intact Partial Copy Original Image Near Partial Copy Near Partial Copy with a background (a) (b) 2 1 [6] SIFT SIFT SIF

Duplicate Near Duplicate Intact Partial Copy Original Image Near Partial Copy Near Partial Copy with a background (a) (b) 2 1 [6] SIFT SIFT SIF Partial Copy Detection of Line Drawings from a Large-Scale Database Weihan Sun, Koichi Kise Graduate School of Engineering, Osaka Prefecture University E-mail: sunweihan@m.cs.osakafu-u.ac.jp, kise@cs.osakafu-u.ac.jp

More information

IPSJ SIG Technical Report Vol.2010-MPS-77 No /3/5 VR SIFT Virtual View Generation in Hallway of Cybercity Buildings from Video Sequen

IPSJ SIG Technical Report Vol.2010-MPS-77 No /3/5 VR SIFT Virtual View Generation in Hallway of Cybercity Buildings from Video Sequen VR 1 1 1 1 1 SIFT Virtual View Generation in Hallway of Cybercity Buildings from Video Sequences Sachiyo Yoshida, 1 Masami Takata 1 and Joe Kaduki 1 Appearance of Three-dimensional (3D) building model

More information

IPSJ SIG Technical Report Vol.2009-DPS-141 No.20 Vol.2009-GN-73 No.20 Vol.2009-EIP-46 No /11/27 1. MIERUKEN 1 2 MIERUKEN MIERUKEN MIERUKEN: Spe

IPSJ SIG Technical Report Vol.2009-DPS-141 No.20 Vol.2009-GN-73 No.20 Vol.2009-EIP-46 No /11/27 1. MIERUKEN 1 2 MIERUKEN MIERUKEN MIERUKEN: Spe 1. MIERUKEN 1 2 MIERUKEN MIERUKEN MIERUKEN: Speech Visualization System Based on Augmented Reality Yuichiro Nagano 1 and Takashi Yoshino 2 As the spread of the Augmented Reality(AR) technology and service,

More information

Google Goggles [1] Google Goggles Android iphone web Google Goggles Lee [2] Lee iphone () [3] [4] [5] [6] [7] [8] [9] [10] :

Google Goggles [1] Google Goggles Android iphone web Google Goggles Lee [2] Lee iphone () [3] [4] [5] [6] [7] [8] [9] [10] : THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE.,, 182-8585 1-5-1 E-mail: {maruya-t,akiyama-m}@mm.inf.uec.ac.jp, yanai@cs.uec.ac.jp SURF Bag-of-Features

More information

5104-toku3.indd

5104-toku3.indd 基礎 : 開発用ツール 橋本 直 ( 独 ) 科学技術振興機構 敷居が低くなった AR 開発 2007 AR AR 1 CPU GPU AR CG AR PC AR 2 Web Web Web 5,000 USB Web 10 1280 960 0fps AR PC AR AR 2007 AR AR Web PC AR Flash AR FLARToolKit Web AR IT AR ツールキットが提供する基本的な機能と開発者に求められるスキル

More information

[1] SBS [2] SBS Random Forests[3] Random Forests ii

[1] SBS [2] SBS Random Forests[3] Random Forests ii Random Forests 2013 3 A Graduation Thesis of College of Engineering, Chubu University Proposal of an efficient feature selection using the contribution rate of Random Forests Katsuya Shimazaki [1] SBS

More information

29 AR

29 AR 29 AR 30 2 13 16350901 AR AR AR AR 2 1 3 1.1....................... 3 1.1.1................. 3 1.1.2 AR............. 4 1.2................................. 5 2 6 2.0.1 AR......................... 6 2.0.2......................

More information

THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE. TRECVID2012 Instance Search {sak

THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE. TRECVID2012 Instance Search {sak THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE. TRECVID2012 Instance Search 599 8531 1 1 E-mail: {sakata,matozaki}@m.cs.osakafu-u.ac.jp, {kise,masa}@cs.osakafu-u.ac.jp

More information

(a) 1 (b) 3. Gilbert Pernicka[2] Treibitz Schechner[3] Narasimhan [4] Kim [5] Nayar [6] [7][8][9] 2. X X X [10] [11] L L t L s L = L t + L s

(a) 1 (b) 3. Gilbert Pernicka[2] Treibitz Schechner[3] Narasimhan [4] Kim [5] Nayar [6] [7][8][9] 2. X X X [10] [11] L L t L s L = L t + L s 1 1 1, Extraction of Transmitted Light using Parallel High-frequency Illumination Kenichiro Tanaka 1 Yasuhiro Mukaigawa 1 Yasushi Yagi 1 Abstract: We propose a new sharpening method of transmitted scene

More information

2). 3) 4) 1.2 NICTNICT DCRA Dihedral Corner Reflector micro-arraysdcra DCRA DCRA DCRA 3D DCRA PC USB PC PC ON / OFF Velleman K8055 K8055 K8055

2). 3) 4) 1.2 NICTNICT DCRA Dihedral Corner Reflector micro-arraysdcra DCRA DCRA DCRA 3D DCRA PC USB PC PC ON / OFF Velleman K8055 K8055 K8055 1 1 1 2 DCRA 1. 1.1 1) 1 Tactile Interface with Air Jets for Floating Images Aya Higuchi, 1 Nomin, 1 Sandor Markon 1 and Satoshi Maekawa 2 The new optical device DCRA can display floating images in free

More information

IPSJ SIG Technical Report 1,a) 1,b) 1,c) 1,d) 2,e) 2,f) 2,g) 1. [1] [2] 2 [3] Osaka Prefecture University 1 1, Gakuencho, Naka, Sakai,

IPSJ SIG Technical Report 1,a) 1,b) 1,c) 1,d) 2,e) 2,f) 2,g) 1. [1] [2] 2 [3] Osaka Prefecture University 1 1, Gakuencho, Naka, Sakai, 1,a) 1,b) 1,c) 1,d) 2,e) 2,f) 2,g) 1. [1] [2] 2 [3] 1 599 8531 1 1 Osaka Prefecture University 1 1, Gakuencho, Naka, Sakai, Osaka 599 8531, Japan 2 565 0871 Osaka University 1 1, Yamadaoka, Suita, Osaka

More information

LBP 2 LBP 2. 2 Local Binary Pattern Local Binary pattern(lbp) [6] R

LBP 2 LBP 2. 2 Local Binary Pattern Local Binary pattern(lbp) [6] R DEIM Forum 24 F5-4 Local Binary Pattern 6 84 E-mail: {tera,kida}@ist.hokudai.ac.jp Local Binary Pattern (LBP) LBP 3 3 LBP 5 5 5 LBP improved LBP uniform LBP.. Local Binary Pattern, Gradient Local Auto-Correlations,,,,

More information

Fig Measurement data combination. 2 Fig. 2. Ray vector. Fig (12) 1 2 R 1 r t 1 3 p 1,i i 2 3 Fig.2 R 2 t 2 p 2,i [u, v] T (1)(2) r R 1 R 2

Fig Measurement data combination. 2 Fig. 2. Ray vector. Fig (12) 1 2 R 1 r t 1 3 p 1,i i 2 3 Fig.2 R 2 t 2 p 2,i [u, v] T (1)(2) r R 1 R 2 IP 06 16 / IIS 06 32 3 3-D Environment Modeling from Images Acquired with an Omni-Directional Camera Mounted on a Mobile Robot Atsushi Yamashita, Tomoaki Harada, Ryosuke Kawanishi, Toru Kaneko (Shizuoka

More information

(4) ω t(x) = 1 ω min Ω ( (I C (y))) min 0 < ω < C A C = 1 (5) ω (5) t transmission map tmap 1 4(a) 2. 3 2. 2 t 4(a) t tmap RGB 2 (a) RGB (A), (B), (C)

(4) ω t(x) = 1 ω min Ω ( (I C (y))) min 0 < ω < C A C = 1 (5) ω (5) t transmission map tmap 1 4(a) 2. 3 2. 2 t 4(a) t tmap RGB 2 (a) RGB (A), (B), (C) (MIRU2011) 2011 7 890 0065 1 21 40 105-6691 1 1 1 731 3194 3 4 1 338 8570 255 346 8524 1836 1 E-mail: {fukumoto,kawasaki}@ibe.kagoshima-u.ac.jp, ryo-f@hiroshima-cu.ac.jp, fukuda@cv.ics.saitama-u.ac.jp,

More information

( 1) 3. Hilliges 1 Fig. 1 Overview image of the system 3) PhotoTOC 5) 1993 DigitalDesk 7) DigitalDesk Koike 2) Microsoft J.Kim 4). 2 c 2010

( 1) 3. Hilliges 1 Fig. 1 Overview image of the system 3) PhotoTOC 5) 1993 DigitalDesk 7) DigitalDesk Koike 2) Microsoft J.Kim 4). 2 c 2010 1 2 2 Automatic Tagging System through Discussing Photos Kazuma Mishimagi, 1 Masashi Toda 2 and Toshio Kawashima 2 Many media forms can be stored easily at present. Photographs, for example, can be easily

More information

2. 30 Visual Words TF-IDF Lowe [4] Scale-Invarient Feature Transform (SIFT) Bay [1] Speeded Up Robust Features (SURF) SIFT 128 SURF 64 Visual Words Ni

2. 30 Visual Words TF-IDF Lowe [4] Scale-Invarient Feature Transform (SIFT) Bay [1] Speeded Up Robust Features (SURF) SIFT 128 SURF 64 Visual Words Ni DEIM Forum 2012 B5-3 606 8510 E-mail: {zhao,ohshima,tanaka}@dl.kuis.kyoto-u.ac.jp Web, 1. Web Web TinEye 1 Google 1 http://www.tineye.com/ 1 2. 3. 4. 5. 6. 2. 30 Visual Words TF-IDF Lowe [4] Scale-Invarient

More information

WISS Woodman Labs GoPro 1 [5, 3, 2] Copyright is held by the author(s). 1 GoPro GoPro 2 6 GoPro RICOH THETA 3 Kodak P

WISS Woodman Labs GoPro 1 [5, 3, 2] Copyright is held by the author(s). 1 GoPro GoPro 2 6 GoPro RICOH THETA 3 Kodak P WISS 2016. 8 1 Woodman Labs GoPro 1 [5, 3, 2] Copyright is held by the author(s). 1 GoPro https://gopro.com/ 360 GoPro 2 6 GoPro RICOH THETA 3 Kodak PIXPRO SP360 4 Samsung Gear 360 5 1 RICOH THETA S Brazucam

More information

258 5) GPS 1 GPS 6) GPS DP 7) 8) 10) GPS GPS 2 3 4 5 2. 2.1 3 1) GPS Global Positioning System

258 5) GPS 1 GPS 6) GPS DP 7) 8) 10) GPS GPS 2 3 4 5 2. 2.1 3 1) GPS Global Positioning System Vol. 52 No. 1 257 268 (Jan. 2011) 1 2, 1 1 measurement. In this paper, a dynamic road map making system is proposed. The proposition system uses probe-cars which has an in-vehicle camera and a GPS receiver.

More information

1 Kinect for Windows M = [X Y Z] T M = [X Y Z ] T f (u,v) w 3.2 [11] [7] u = f X +u Z 0 δ u (X,Y,Z ) (5) v = f Y Z +v 0 δ v (X,Y,Z ) (6) w = Z +

1 Kinect for Windows M = [X Y Z] T M = [X Y Z ] T f (u,v) w 3.2 [11] [7] u = f X +u Z 0 δ u (X,Y,Z ) (5) v = f Y Z +v 0 δ v (X,Y,Z ) (6) w = Z + 3 3D 1,a) 1 1 Kinect (X, Y) 3D 3D 1. 2010 Microsoft Kinect for Windows SDK( (Kinect) SDK ) 3D [1], [2] [3] [4] [5] [10] 30fps [10] 3 Kinect 3 Kinect Kinect for Windows SDK 3 Microsoft 3 Kinect for Windows

More information

3 webui [1] 3 3 3D e- 3D 1 1a 1b 3 2. AR 3 3 AR Autodesk 123D Catch [3] Autodesk 3 Martin [4] Shape From Sillhouette 3 [5] 3 3 Watanabe [6]

3 webui [1] 3 3 3D e- 3D 1 1a 1b 3 2. AR 3 3 AR Autodesk 123D Catch [3] Autodesk 3 Martin [4] Shape From Sillhouette 3 [5] 3 3 Watanabe [6] 情 報 処 理 学 会 インタラクション 2013 IPSJ Interaction 2013 2013-Interaction (3EXB-50) 2013/3/2 1,a) 2 2 e- 2 2 ( ) e- 3 Intuitive Recording and Viewing of Multiple Images for E-Commerce Tatsuhito Oe 1,a) Shigaku

More information

IPSJ SIG Technical Report Vol.2015-MUS-107 No /5/23 HARK-Binaural Raspberry Pi 2 1,a) ( ) HARK 2 HARK-Binaural A/D Raspberry Pi 2 1.

IPSJ SIG Technical Report Vol.2015-MUS-107 No /5/23 HARK-Binaural Raspberry Pi 2 1,a) ( ) HARK 2 HARK-Binaural A/D Raspberry Pi 2 1. HARK-Binaural Raspberry Pi 2 1,a) 1 1 1 2 3 () HARK 2 HARK-Binaural A/D Raspberry Pi 2 1. [1,2] [2 5] () HARK (Honda Research Institute Japan audition for robots with Kyoto University) *1 GUI ( 1) Python

More information

IS1-09 第 回画像センシングシンポジウム, 横浜,14 年 6 月 2 Hough Forest Hough Forest[6] Random Forest( [5]) Random Forest Hough Forest Hough Forest 2.1 Hough Forest 1 2.2

IS1-09 第 回画像センシングシンポジウム, 横浜,14 年 6 月 2 Hough Forest Hough Forest[6] Random Forest( [5]) Random Forest Hough Forest Hough Forest 2.1 Hough Forest 1 2.2 IS1-09 第 回画像センシングシンポジウム, 横浜,14 年 6 月 MI-Hough Forest () E-mail: ym@vision.cs.chubu.ac.jphf@cs.chubu.ac.jp Abstract Hough Forest Random Forest MI-Hough Forest Multiple Instance Learning Bag Hough Forest

More information

(MIRU2008) HOG Histograms of Oriented Gradients (HOG)

(MIRU2008) HOG Histograms of Oriented Gradients (HOG) (MIRU2008) 2008 7 HOG - - E-mail: katsu0920@me.cs.scitec.kobe-u.ac.jp, {takigu,ariki}@kobe-u.ac.jp Histograms of Oriented Gradients (HOG) HOG Shape Contexts HOG 5.5 Histograms of Oriented Gradients D Human

More information

28 Horizontal angle correction using straight line detection in an equirectangular image

28 Horizontal angle correction using straight line detection in an equirectangular image 28 Horizontal angle correction using straight line detection in an equirectangular image 1170283 2017 3 1 2 i Abstract Horizontal angle correction using straight line detection in an equirectangular image

More information

IPSJ SIG Technical Report Vol.2010-CVIM-170 No /1/ Visual Recognition of Wire Harnesses for Automated Wiring Masaki Yoneda, 1 Ta

IPSJ SIG Technical Report Vol.2010-CVIM-170 No /1/ Visual Recognition of Wire Harnesses for Automated Wiring Masaki Yoneda, 1 Ta 1 1 1 1 2 1. Visual Recognition of Wire Harnesses for Automated Wiring Masaki Yoneda, 1 Takayuki Okatani 1 and Koichiro Deguchi 1 This paper presents a method for recognizing the pose of a wire harness

More information

IPSJ SIG Technical Report GPS LAN GPS LAN GPS LAN Location Identification by sphere image and hybrid sensing Takayuki Katahira, 1 Yoshio Iwai 1

IPSJ SIG Technical Report GPS LAN GPS LAN GPS LAN Location Identification by sphere image and hybrid sensing Takayuki Katahira, 1 Yoshio Iwai 1 1 1 1 GPS LAN GPS LAN GPS LAN Location Identification by sphere image and hybrid sensing Takayuki Katahira, 1 Yoshio Iwai 1 and Hiroshi Ishiguro 1 Self-location is very informative for wearable systems.

More information

IPSJ SIG Technical Report Vol.2014-MBL-70 No.49 Vol.2014-UBI-41 No /3/15 2,a) 2,b) 2,c) 2,d),e) WiFi WiFi WiFi 1. SNS GPS Twitter Facebook Twit

IPSJ SIG Technical Report Vol.2014-MBL-70 No.49 Vol.2014-UBI-41 No /3/15 2,a) 2,b) 2,c) 2,d),e) WiFi WiFi WiFi 1. SNS GPS Twitter Facebook Twit 2,a) 2,b) 2,c) 2,d),e) WiFi WiFi WiFi 1. SNS GPS Twitter Facebook Twitter Ustream 1 Graduate School of Information Science and Technology, Osaka University, Japan 2 Cybermedia Center, Osaka University,

More information

1 Web [2] Web [3] [4] [5], [6] [7] [8] S.W. [9] 3. MeetingShelf Web MeetingShelf MeetingShelf (1) (2) (3) (4) (5) Web MeetingShelf

1 Web [2] Web [3] [4] [5], [6] [7] [8] S.W. [9] 3. MeetingShelf Web MeetingShelf MeetingShelf (1) (2) (3) (4) (5) Web MeetingShelf 1,a) 2,b) 4,c) 3,d) 4,e) Web A Review Supporting System for Whiteboard Logging Movies Based on Notes Timeline Taniguchi Yoshihide 1,a) Horiguchi Satoshi 2,b) Inoue Akifumi 4,c) Igaki Hiroshi 3,d) Hoshi

More information

BDH Cao BDH BDH Cao Cao Cao BDH ()*$ +,-+.)*$!%&'$!"#$ 2. 1 Weng [4] Metric Learning Weng DB DB Yang [5] John [6] Sparse Coding sparse coding DB [7] K

BDH Cao BDH BDH Cao Cao Cao BDH ()*$ +,-+.)*$!%&'$!#$ 2. 1 Weng [4] Metric Learning Weng DB DB Yang [5] John [6] Sparse Coding sparse coding DB [7] K Bucket Distance Hashing Metric Learning 1,a) 1,b) 1,c) 1,d) (DB) [1] DB Cao [2] Cao Metric Learning Cao Cao Cao Cao Cao 100 DB 10% 1. m DB DB DB 1 599 8531 1 1 Graduate School of Engineering, Osaka Prefecture

More information

Vol. 23 No. 4 Oct. 2006 37 2 Kitchen of the Future 1 Kitchen of the Future 1 1 Kitchen of the Future LCD [7], [8] (Kitchen of the Future ) WWW [7], [3

Vol. 23 No. 4 Oct. 2006 37 2 Kitchen of the Future 1 Kitchen of the Future 1 1 Kitchen of the Future LCD [7], [8] (Kitchen of the Future ) WWW [7], [3 36 Kitchen of the Future: Kitchen of the Future Kitchen of the Future A kitchen is a place of food production, education, and communication. As it is more active place than other parts of a house, there

More information

VRSJ-SIG-MR_okada_79dce8c8.pdf

VRSJ-SIG-MR_okada_79dce8c8.pdf THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE. 630-0192 8916-5 E-mail: {kaduya-o,takafumi-t,goshiro,uranishi,miyazaki,kato}@is.naist.jp,.,,.,,,.,,., CG.,,,

More information

IPSJ SIG Technical Report Vol.2013-CVIM-187 No /5/30 1,a) 1,b), 1,,,,,,, (DNN),,,, 2 (CNN),, 1.,,,,,,,,,,,,,,,,,, [1], [6], [7], [12], [13]., [

IPSJ SIG Technical Report Vol.2013-CVIM-187 No /5/30 1,a) 1,b), 1,,,,,,, (DNN),,,, 2 (CNN),, 1.,,,,,,,,,,,,,,,,,, [1], [6], [7], [12], [13]., [ ,a),b),,,,,,,, (DNN),,,, (CNN),,.,,,,,,,,,,,,,,,,,, [], [6], [7], [], [3]., [8], [0], [7],,,, Tohoku University a) omokawa@vision.is.tohoku.ac.jp b) okatani@vision.is.tohoku.ac.jp, [3],, (DNN), DNN, [3],

More information

[6] DoN DoN DDoN(Donuts DoN) DoN 4(2) DoN DDoN 3.2 RDoN(Ring DoN) 4(1) DoN 4(3) DoN RDoN 2 DoN 2.2 DoN PCA DoN DoN 2 DoN PCA 0 DoN 3. DoN

[6] DoN DoN DDoN(Donuts DoN) DoN 4(2) DoN DDoN 3.2 RDoN(Ring DoN) 4(1) DoN 4(3) DoN RDoN 2 DoN 2.2 DoN PCA DoN DoN 2 DoN PCA 0 DoN 3. DoN 3 1,a) 1,b) 3D 3 3 Difference of Normals (DoN)[1] DoN, 1. 2010 Kinect[2] 3D 3 [3] 3 [4] 3 [5] 3 [6] [7] [1] [8] [9] [10] Difference of Normals (DoN) 48 8 [1] [6] DoN DoN 1 National Defense Academy a) em53035@nda.ac.jp

More information

xx/xx Vol. Jxx A No. xx 1 Fig. 1 PAL(Panoramic Annular Lens) PAL(Panoramic Annular Lens) PAL (2) PAL PAL 2 PAL 3 2 PAL 1 PAL 3 PAL PAL 2. 1 PAL

xx/xx Vol. Jxx A No. xx 1 Fig. 1 PAL(Panoramic Annular Lens) PAL(Panoramic Annular Lens) PAL (2) PAL PAL 2 PAL 3 2 PAL 1 PAL 3 PAL PAL 2. 1 PAL PAL On the Precision of 3D Measurement by Stereo PAL Images Hiroyuki HASE,HirofumiKAWAI,FrankEKPAR, Masaaki YONEDA,andJien KATO PAL 3 PAL Panoramic Annular Lens 1985 Greguss PAL 1 PAL PAL 2 3 2 PAL DP

More information

IPSJ SIG Technical Report Vol.2009-CVIM-167 No /6/10 Real AdaBoost HOG 1 1 1, 2 1 Real AdaBoost HOG HOG Real AdaBoost HOG A Method for Reducing

IPSJ SIG Technical Report Vol.2009-CVIM-167 No /6/10 Real AdaBoost HOG 1 1 1, 2 1 Real AdaBoost HOG HOG Real AdaBoost HOG A Method for Reducing Real AdaBoost HOG 1 1 1, 2 1 Real AdaBoost HOG HOG Real AdaBoost HOG A Method for Reducing number of HOG Features based on Real AdaBoost Chika Matsushima, 1 Yuji Yamauchi, 1 Takayoshi Yamashita 1, 2 and

More information

2.2 6).,.,.,. Yang, 7).,,.,,. 2.3 SIFT SIFT (Scale-Invariant Feature Transform) 8).,. SIFT,,. SIFT, Mean-Shift 9)., SIFT,., SIFT,. 3.,.,,,,,.,,,., 1,

2.2 6).,.,.,. Yang, 7).,,.,,. 2.3 SIFT SIFT (Scale-Invariant Feature Transform) 8).,. SIFT,,. SIFT, Mean-Shift 9)., SIFT,., SIFT,. 3.,.,,,,,.,,,., 1, 1 1 2,,.,.,,, SIFT.,,. Pitching Motion Analysis Using Image Processing Shinya Kasahara, 1 Issei Fujishiro 1 and Yoshio Ohno 2 At present, analysis of pitching motion from baseball videos is timeconsuming

More information

(a) (b) 2 2 (Bosch, IR Illuminator 850 nm, UFLED30-8BD) ( 7[m] 6[m]) 3 (PointGrey Research Inc.Grasshopper2 M/C) Hz (a) (b

(a) (b) 2 2 (Bosch, IR Illuminator 850 nm, UFLED30-8BD) ( 7[m] 6[m]) 3 (PointGrey Research Inc.Grasshopper2 M/C) Hz (a) (b (MIRU202) 202 8 AdrianStoica 89 0395 744 89 0395 744 Jet Propulsion Laboratory 4800 Oak Grove Drive, Pasadena, CA 909, USA E-mail: uchino@irvs.ait.kyushu-u.ac.jp, {yumi,kurazume}@ait.kyushu-u.ac.jp 2 nearest

More information

Worm Hole View 2 ( ) ( ) Evaluation of a Presentation Method of Multilevel Urban Structures using Panorama Views Yohei Abe, Ismail Arai and Nobuhiko N

Worm Hole View 2 ( ) ( ) Evaluation of a Presentation Method of Multilevel Urban Structures using Panorama Views Yohei Abe, Ismail Arai and Nobuhiko N Worm Hole View 2 ( ) ( ) Evaluation of a Presentation Method of Multilevel Urban Structures using Panorama Views Yohei Abe, Ismail Arai and Nobuhiko Nishio In the place with the multilevel structures,

More information

(MIRU2009) cuboid cuboid SURF 6 85% Web. Web Abstract Extracting Spatio-te

(MIRU2009) cuboid cuboid SURF 6 85% Web. Web Abstract Extracting Spatio-te (MIRU2009) 2009 7 182 8585 1 5 1 E-mail: noguchi-a@mm.cs.uec.ac.jp, yanai@cs.uec.ac.jp cuboid cuboid SURF 6 85% Web. Web Abstract Extracting Spatio-temporal Local Features Considering Consecutiveness of

More information

([ ]!) name1 name2 : [Name]! name10 2. 3 SuperSQL,,,,,,, (@) < >@{ < > } =,,., 200,., TFE,, 1 2.,, 4, 3.,,,, Web EGG [5] SSVisual [6], Java SSedit( ss

([ ]!) name1 name2 : [Name]! name10 2. 3 SuperSQL,,,,,,, (@) < >@{ < > } =,,., 200,., TFE,, 1 2.,, 4, 3.,,,, Web EGG [5] SSVisual [6], Java SSedit( ss DEIM Forum 2016 H6-3 SuperSQL CSS 223 8522 3-14-1 E-mail: {ryosuke,goto}@db.ics.keio.ac.jp, toyama@ics.keio.ac.jp SuperSQL, SQL. SuperSQL HTML, PHP,,,, SuperSQL Web, CSS 1. SQL, SuperSQL, CSS SuperSQL,

More information

3: 2: 2. 2 Semi-supervised learning Semi-supervised learning [5,6] Semi-supervised learning Self-training [13] [14] Self-training Self-training Semi-s

3: 2: 2. 2 Semi-supervised learning Semi-supervised learning [5,6] Semi-supervised learning Self-training [13] [14] Self-training Self-training Semi-s THE INSTITUTE OF ELECTRONICS, INFORMATION AND COMMUNICATION ENGINEERS TECHNICAL REPORT OF IEICE. 599-8531 1-1 E-mail: tsukada@m.cs.osakafu-u.ac.jp, {masa,kise}@cs.osakafu-u.ac.jp Semi-supervised learning

More information

IPSJ SIG Technical Report Vol.2017-MUS-116 No /8/24 MachineDancing: 1,a) 1,b) 3 MachineDancing MachineDancing MachineDancing 1 MachineDan

IPSJ SIG Technical Report Vol.2017-MUS-116 No /8/24 MachineDancing: 1,a) 1,b) 3 MachineDancing MachineDancing MachineDancing 1 MachineDan MachineDancing: 1,a) 1,b) 3 MachineDancing 2 1. 3 MachineDancing MachineDancing 1 MachineDancing MachineDancing [1] 1 305 0058 1-1-1 a) s.fukayama@aist.go.jp b) m.goto@aist.go.jp 1 MachineDancing 3 CG

More information

IPSJ SIG Technical Report Vol.2014-MBL-70 No.46 Vol.2014-UBI-41 No /3/15 1,a) 1,b) 1,c) 6 Assist of Sharing the Experiences in Library using Mu

IPSJ SIG Technical Report Vol.2014-MBL-70 No.46 Vol.2014-UBI-41 No /3/15 1,a) 1,b) 1,c) 6 Assist of Sharing the Experiences in Library using Mu 1,a) 1,b) 1,c) 6 Assist of Sharing the Experiences in Library using Multiple Person s Vision Abstract: In this paper, I propose the system that assists of sharing the experiences in library using multiple

More information

IPSJ SIG Technical Report Vol.2014-GN-90 No.16 Vol.2014-CDS-9 No.16 Vol.2014-DCC-6 No /1/24 1,a) 2,b) 2,c) 1,d) QUMARION QUMARION Kinect Kinect

IPSJ SIG Technical Report Vol.2014-GN-90 No.16 Vol.2014-CDS-9 No.16 Vol.2014-DCC-6 No /1/24 1,a) 2,b) 2,c) 1,d) QUMARION QUMARION Kinect Kinect 1,a) 2,b) 2,c) 1,d) QUMARION QUMARION Kinect Kinect Using a Human-Shaped Input Device for Remote Pose Instruction Yuki Tayama 1,a) Yoshiaki Ando 2,b) Misaki Hagino 2,c) Ken-ichi Okada 1,d) Abstract: There

More information

1 Table 1: Identification by color of voxel Voxel Mode of expression Nothing Other 1 Orange 2 Blue 3 Yellow 4 SSL Humanoid SSL-Vision 3 3 [, 21] 8 325

1 Table 1: Identification by color of voxel Voxel Mode of expression Nothing Other 1 Orange 2 Blue 3 Yellow 4 SSL Humanoid SSL-Vision 3 3 [, 21] 8 325 社団法人人工知能学会 Japanese Society for Artificial Intelligence 人工知能学会研究会資料 JSAI Technical Report SIG-Challenge-B3 (5/5) RoboCup SSL Humanoid A Proposal and its Application of Color Voxel Server for RoboCup SSL

More information

2007/8 Vol. J90 D No. 8 Stauffer [7] 2 2 I 1 I 2 2 (I 1(x),I 2(x)) 2 [13] I 2 = CI 1 (C >0) (I 1,I 2) (I 1,I 2) Field Monitoring Server

2007/8 Vol. J90 D No. 8 Stauffer [7] 2 2 I 1 I 2 2 (I 1(x),I 2(x)) 2 [13] I 2 = CI 1 (C >0) (I 1,I 2) (I 1,I 2) Field Monitoring Server a) Change Detection Using Joint Intensity Histogram Yasuyo KITA a) 2 (0 255) (I 1 (x),i 2 (x)) I 2 = CI 1 (C>0) (I 1,I 2 ) (I 1,I 2 ) 2 1. [1] 2 [2] [3] [5] [6] [8] Intelligent Systems Research Institute,

More information

Optical Flow t t + δt 1 Motion Field 3 3 1) 2) 3) Lucas-Kanade 4) 1 t (x, y) I(x, y, t)

Optical Flow t t + δt 1 Motion Field 3 3 1) 2) 3) Lucas-Kanade 4) 1 t (x, y) I(x, y, t) http://wwwieice-hbkborg/ 2 2 4 2 -- 2 4 2010 9 3 3 4-1 Lucas-Kanade 4-2 Mean Shift 3 4-3 2 c 2013 1/(18) http://wwwieice-hbkborg/ 2 2 4 2 -- 2 -- 4 4--1 2010 9 4--1--1 Optical Flow t t + δt 1 Motion Field

More information

IPSJ SIG Technical Report Vol.2014-DBS-159 No.6 Vol.2014-IFAT-115 No /8/1 1,a) 1 1 1,, 1. ([1]) ([2], [3]) A B 1 ([4]) 1 Graduate School of Info

IPSJ SIG Technical Report Vol.2014-DBS-159 No.6 Vol.2014-IFAT-115 No /8/1 1,a) 1 1 1,, 1. ([1]) ([2], [3]) A B 1 ([4]) 1 Graduate School of Info 1,a) 1 1 1,, 1. ([1]) ([2], [3]) A B 1 ([4]) 1 Graduate School of Information Science and Technology, Osaka University a) kawasumi.ryo@ist.osaka-u.ac.jp 1 1 Bucket R*-tree[5] [4] 2 3 4 5 6 2. 2.1 2.2 2.3

More information

28 TCG SURF Card recognition using SURF in TCG play video

28 TCG SURF Card recognition using SURF in TCG play video 28 TCG SURF Card recognition using SURF in TCG play video 1170374 2017 3 2 TCG SURF TCG TCG OCG SURF Bof 20 20 30 10 1 SURF Bag of features i Abstract Card recognition using SURF in TCG play video Haruka

More information

4. C i k = 2 k-means C 1 i, C 2 i 5. C i x i p [ f(θ i ; x) = (2π) p 2 Vi 1 2 exp (x µ ] i) t V 1 i (x µ i ) 2 BIC BIC = 2 log L( ˆθ i ; x i C i ) + q

4. C i k = 2 k-means C 1 i, C 2 i 5. C i x i p [ f(θ i ; x) = (2π) p 2 Vi 1 2 exp (x µ ] i) t V 1 i (x µ i ) 2 BIC BIC = 2 log L( ˆθ i ; x i C i ) + q x-means 1 2 2 x-means, x-means k-means Bayesian Information Criterion BIC Watershed x-means Moving Object Extraction Using the Number of Clusters Determined by X-means Clustering Naoki Kubo, 1 Kousuke

More information

2011 Future University Hakodate 2011 System Information Science Practice Group Report Project Name Applied Embedded System Group Name Radio-controlled model helicopter Group /Project No. 15-B /Project

More information

(bundle adjustment) 8),9) ),6),7) GPS 8),9) GPS GPS 8) GPS GPS GPS GPS Anai 9) GPS GPS GPS GPS GPS GPS GPS Maier ) GPS GPS Anai 9) GPS GPS M GPS M inf

(bundle adjustment) 8),9) ),6),7) GPS 8),9) GPS GPS 8) GPS GPS GPS GPS Anai 9) GPS GPS GPS GPS GPS GPS GPS Maier ) GPS GPS Anai 9) GPS GPS M GPS M inf GPS GPS solve this problem, we propose ()novel model about GPS positioning which enables more robust estimation with extended bundle adjustment, and ()outlier removal for GPS positioning using video information.

More information

スライド 1

スライド 1 Randomized Trees CV 1: [Lepetit et al., 2006] CV 2: [Shotton et al., 2008] CV 3: [Amit & Geman, 1997] [Moosmann et al., 2006] [ et al., 2010] CVへの応用例4: TomokazuMitsui パーツベースの人検出 [三井 et al., 2011] 人の領域をパーツに分割し

More information

特別寄稿.indd

特別寄稿.indd 特別寄稿 ソフトインフラとしてのデジタル地図を活用した自動運転システム Autonomous vehicle using digital map as a soft infrastructure 菅沼直樹 Naoki SUGANUMA 1. はじめに 1) 2008 2012 ITS 2) CO 2 3) 4) Door to door Door to door Door to door DARPA(

More information

ICT a) Caption Presentation Method with Speech Expression Utilizing Speech Bubble Shapes for Video Content Yuko KONYA a) and Itiro SIIO 1. Graduate Sc

ICT a) Caption Presentation Method with Speech Expression Utilizing Speech Bubble Shapes for Video Content Yuko KONYA a) and Itiro SIIO 1. Graduate Sc VOL. J98-A NO. 1 JANUARY 2015 本 PDFの 扱 いは 電 子 情 報 通 信 学 会 著 作 権 規 定 に 従 うこと なお 本 PDFは 研 究 教 育 目 的 ( 非 営 利 )に 限 り 著 者 が 第 三 者 に 直 接 配 布 すること ができる 著 者 以 外 からの 配 布 は 禁 じられている ICT a) Caption Presentation Method

More information

Lyra 2 2 2 X Y X Y ivis Designer Lyra ivisdesigner Lyra ivisdesigner 2 ( 1 ) ( 2 ) ( 3 ) ( 4 ) ( 5 ) (1) (2) (3) (4) (5) Iv Studio [8] 3 (5) (4) (1) (

Lyra 2 2 2 X Y X Y ivis Designer Lyra ivisdesigner Lyra ivisdesigner 2 ( 1 ) ( 2 ) ( 3 ) ( 4 ) ( 5 ) (1) (2) (3) (4) (5) Iv Studio [8] 3 (5) (4) (1) ( 1,a) 2,b) 2,c) 1. Web [1][2][3][4] [5] 1 2 a) ito@iplab.cs.tsukuba.ac.jp b) misue@cs.tsukuba.ac.jp c) jiro@cs.tsukuba.ac.jp [6] Lyra[5] ivisdesigner[6] [7] 2 Lyra ivisdesigner c 2012 Information Processing

More information

27 28 2 15 14350922 1 4 1.1.................................... 4 1.2........................... 5 1.3......................... 6 1.4...................................... 7 2 9 2.1..........................

More information

dsample.dvi

dsample.dvi 1 1 1 2009 2 ( ) 600 1 2 1 2 RFID PC Practical Verification of Evacuation Guidance Based on Pedestrian Traffic Measurement Tomohisa Yamashita, 1 Shunsuke Soeda 1 and Noda Itsuki 1 In this paper, we report

More information

第1章

第1章 ( ) 2005 1 IC 1... 1 1.1... 1 1.1.1... 1 1.1.2... 1 1.2... 5 1.2.1... 5 1.2.2... 5 1.3... 7 2... 8 2.1... 8 2.1.1... 10 2.1.2... 11 2.1.3... 13 2.1.4... 13 2.2... 16 2.2.1... 19 2.2.2... 21 2.2.3... 23

More information

Convolutional Neural Network A Graduation Thesis of College of Engineering, Chubu University Investigation of feature extraction by Convolution

Convolutional Neural Network A Graduation Thesis of College of Engineering, Chubu University Investigation of feature extraction by Convolution Convolutional Neural Network 2014 3 A Graduation Thesis of College of Engineering, Chubu University Investigation of feature extraction by Convolutional Neural Network Fukui Hiroshi 1940 1980 [1] 90 3

More information

ipod touch 1 2 Apple ipod touch ipod touch 3 ( ) ipod touch ( 1 ) Apple ( 2 ) Web 1),2) 3. ipod touch 1 2 ipod touch x y z i

ipod touch 1 2 Apple ipod touch ipod touch 3 ( ) ipod touch ( 1 ) Apple ( 2 ) Web 1),2) 3. ipod touch 1 2 ipod touch x y z i ipod touch 1 1 ipod touch. 1) 6 2) 3) A library for detecting movements of an ipod touch by 3D acceleration Akira Kotaki 1 and Mariko Sasakura 1 The aim of this study is to develop a library for detecting

More information

光学

光学 Range Image Sensors Using Active Stereo Methods Kazunori UMEDA and Kenji TERABAYASHI Active stereo methods, which include the traditional light-section method and the talked-about Kinect sensor, are typical

More information

理工ジャーナル 23‐1☆/1.外村

理工ジャーナル 23‐1☆/1.外村 Yoshinobu TONOMURA Professor, Department of Media Informatics 1 10 YouTube 2 1900 100 1 3 2 3 3 3 1 2 3 4 90 1 90 MIT Project Athena 1983 1991 2 3 4 5 6 7 8 9 10 2 90 11 12 7 13 14 15 16 17 18 19 390 5

More information

2) TA Hercules CAA 5 [6], [7] CAA BOSS [8] 2. C II C. ( 1 ) C. ( 2 ). ( 3 ) 100. ( 4 ) () HTML NFS Hercules ( )

2) TA Hercules CAA 5 [6], [7] CAA BOSS [8] 2. C II C. ( 1 ) C. ( 2 ). ( 3 ) 100. ( 4 ) () HTML NFS Hercules ( ) 1,a) 2 4 WC C WC C Grading Student programs for visualizing progress in classroom Naito Hiroshi 1,a) Saito Takashi 2 Abstract: To grade student programs in Computer-Aided Assessment system, we propose

More information

IPSJ SIG Technical Report Vol.2013-CE-122 No.16 Vol.2013-CLE-11 No /12/14 Android 1,a) 1 1 GPS LAN 2 LAN Android,,, Android, HTML5 LAN 1. ICT(I

IPSJ SIG Technical Report Vol.2013-CE-122 No.16 Vol.2013-CLE-11 No /12/14 Android 1,a) 1 1 GPS LAN 2 LAN Android,,, Android, HTML5 LAN 1. ICT(I Android 1,a) 1 1 GPS LAN 2 LAN Android,,, Android, HTML5 LAN 1. ICT(Information and Communication Technology) (Google [2] [5] ) 2. Google 2.1 Google Google [2]( 1) Google Web, Google Web Google Chrome

More information

Input image Initialize variables Loop for period of oscillation Update height map Make shade image Change property of image Output image Change time L

Input image Initialize variables Loop for period of oscillation Update height map Make shade image Change property of image Output image Change time L 1,a) 1,b) 1/f β Generation Method of Animation from Pictures with Natural Flicker Abstract: Some methods to create animation automatically from one picture have been proposed. There is a method that gives

More information

( ), ( ) Patrol Mobile Robot To Greet Passing People Takemi KIMURA(Univ. of Tsukuba), and Akihisa OHYA(Univ. of Tsukuba) Abstract This research aims a

( ), ( ) Patrol Mobile Robot To Greet Passing People Takemi KIMURA(Univ. of Tsukuba), and Akihisa OHYA(Univ. of Tsukuba) Abstract This research aims a ( ), ( ) Patrol Mobile Robot To Greet Passing People Takemi KIMURA(Univ. of Tsukuba), and Akihisa OHYA(Univ. of Tsukuba) Abstract This research aims at the development of a mobile robot to perform greetings

More information

WISS 2008 [2] PowerPoint[7] KeyNote[8] ZUI(Zooming User Interface) ZUI 1. : Pad[9] CounterPoint[10] KidPad[11] ( ); ( ). [12] 3 4 [12] 5 3 TabletPC 2

WISS 2008 [2] PowerPoint[7] KeyNote[8] ZUI(Zooming User Interface) ZUI 1. : Pad[9] CounterPoint[10] KidPad[11] ( ); ( ). [12] 3 4 [12] 5 3 TabletPC 2 WISS2008 An Augmented Dining System for Cooking Optical Decorations and Storytelling Summary. 1 [1] 1 [2] 1 1 Flash Copyright is held by the author(s). Maki Mori,, Kazutaka Kurihara, /, Tsukada Koji,,

More information

Microsoft PowerPoint - SSII_harada pptx

Microsoft PowerPoint - SSII_harada pptx The state of the world The gathered data The processed data w d r I( W; D) I( W; R) The data processing theorem states that data processing can only destroy information. David J.C. MacKay. Information

More information

IPSJ SIG Technical Report Vol.2013-ICS-172 No /11/12 1,a), 1,b) Anomaly Detection 1. 1 Nagoya Institute of Technology 1 Presently with Nagoya In

IPSJ SIG Technical Report Vol.2013-ICS-172 No /11/12 1,a), 1,b) Anomaly Detection 1. 1 Nagoya Institute of Technology 1 Presently with Nagoya In 1,a), 1,b) Anomaly Detection 1. 1 Nagoya Institute of Technology 1 Presently with Nagoya Institute of Technology a) otsuka.takanobu@nitech.ac.jp b) ito.takayuki@nitech.ac.jp Anomaly Detection 2 3 4 5 6

More information

Human-Agent Interaction Simposium A Heterogeneous Robot System U

Human-Agent Interaction Simposium A Heterogeneous Robot System U Human-Agent Interaction Simposium 2006 2A-3 277-8561 5 1-5 113-8656 7-3-1 E-mail: {hosoi,mori,sugi}@itl.t.u-tokyo.ac.jp 3 Heterogeneous Robot System Using Blimps Kazuhiro HOSOI, Akihiro MORI, and Masanori

More information

JVRSJ Vol.13 No.3 September, 図 2 PlaceEngine を使用した位置推定の例 : フロア情報を含めて位置の推定が可能 Web 3 GPS PlaceEngine WiFi GPS GPS WiFi 図 3 GPS と WiFi による位置推

JVRSJ Vol.13 No.3 September, 図 2 PlaceEngine を使用した位置推定の例 : フロア情報を含めて位置の推定が可能 Web 3 GPS PlaceEngine WiFi GPS GPS WiFi 図 3 GPS と WiFi による位置推 22 154 日本バーチャルリアリティ学会誌第 13 巻 3 号 2008 年 9 月 1 ( ) GPS IEEE802.11b/g LAN(Wi-Fi) [1-4] Wi-Fi LAN GPS GPS ( ) GPS Wi-Fi PlaceEngine [4][5] 2 Sensonomy ( ) LAN 図 1 無線基地局位置推定結果 (PlaceEngine での例 ) 80 万強の無線 LAN

More information

No. 3 Oct The person to the left of the stool carried the traffic-cone towards the trash-can. α α β α α β α α β α Track2 Track3 Track1 Track0 1

No. 3 Oct The person to the left of the stool carried the traffic-cone towards the trash-can. α α β α α β α α β α Track2 Track3 Track1 Track0 1 ACL2013 TACL 1 ACL2013 Grounded Language Learning from Video Described with Sentences (Yu and Siskind 2013) TACL Transactions of the Association for Computational Linguistics What Makes Writing Great?

More information

WISS 2018 [2 4] [5,6] Query-by-Dancing Query-by- Dancing Cao [1] OpenPose 2 Ghias [7] Query by humming Chen [8] Query by rhythm Jang [9] Query-by-tapp

WISS 2018 [2 4] [5,6] Query-by-Dancing Query-by- Dancing Cao [1] OpenPose 2 Ghias [7] Query by humming Chen [8] Query by rhythm Jang [9] Query-by-tapp Query-by-Dancing: WISS 2018. Query-by-Dancing Query-by-Dancing 1 OpenPose [1] Copyright is held by the author(s). DJ DJ DJ WISS 2018 [2 4] [5,6] Query-by-Dancing Query-by- Dancing Cao [1] OpenPose 2 Ghias

More information

IPSJ SIG Technical Report Vol.2013-HCI-152 No /3/13 1,a) 1,b) 2,c) / GPS Bluetooth(BT) WiFi BT WiFi 1. Bluetooth WiFi 1 / 1 2 a)

IPSJ SIG Technical Report Vol.2013-HCI-152 No /3/13 1,a) 1,b) 2,c) / GPS Bluetooth(BT) WiFi BT WiFi 1. Bluetooth WiFi 1 / 1 2 a) 1,a) 1,b) 2,c) / GPS Bluetooth(BT) WiFi BT WiFi 1. Bluetooth WiFi 1 / 1 2 a) rtokuami@kwansei.ac.jp b) kono@kwansei.ac.jp c) nakamura@dl.kuis.kyoto-u.ac.jp / 2. Apple iphoto Google Picasa GPS GPS GPS [1][2]

More information

27 (2015)

27 (2015) 27 (2015) 27 (2015) SIFT HSV [ ] 356 298 3 SIFT SIFT SURF FAST SIFT HSV SIFT HSV SIFT HSV 2 SIFT HSV 1 100% 93% A b s t r a c t Title Author Advisor Key Words A study on the comic book title recognition

More information

3.1 Thalmic Lab Myo * Bluetooth PC Myo 8 RMS RMS t RMS(t) i (i = 1, 2,, 8) 8 SVM libsvm *2 ν-svm 1 Myo 2 8 RMS 3.2 Myo (Root

3.1 Thalmic Lab Myo * Bluetooth PC Myo 8 RMS RMS t RMS(t) i (i = 1, 2,, 8) 8 SVM libsvm *2 ν-svm 1 Myo 2 8 RMS 3.2 Myo (Root 1,a) 2 2 1. 1 College of Information Science, School of Informatics, University of Tsukuba 2 Faculty of Engineering, Information and Systems, University of Tsukuba a) oharada@iplab.cs.tsukuba.ac.jp 2.

More information

2003/3 Vol. J86 D II No.3 2.3. 4. 5. 6. 2. 1 1 Fig. 1 An exterior view of eye scanner. CCD [7] 640 480 1 CCD PC USB PC 2 334 PC USB RS-232C PC 3 2.1 2

2003/3 Vol. J86 D II No.3 2.3. 4. 5. 6. 2. 1 1 Fig. 1 An exterior view of eye scanner. CCD [7] 640 480 1 CCD PC USB PC 2 334 PC USB RS-232C PC 3 2.1 2 Curved Document Imaging with Eye Scanner Toshiyuki AMANO, Tsutomu ABE, Osamu NISHIKAWA, Tetsuo IYODA, and Yukio SATO 1. Shape From Shading SFS [1] [2] 3 2 Department of Electrical and Computer Engineering,

More information

IPSJ SIG Technical Report Vol.2013-CG-153 No.19 Vol.2013-CVIM-189 No /11/29 1,a) 0 1 SIFT SURF 1. Scale-Invariant Feature Transform (SIFT)[16]

IPSJ SIG Technical Report Vol.2013-CG-153 No.19 Vol.2013-CVIM-189 No /11/29 1,a) 0 1 SIFT SURF 1. Scale-Invariant Feature Transform (SIFT)[16] 1,a) 0 1 SIFT SURF 1. Scale-Invariant Feature Transform (SIFT)[16] [14], [17] [6] 1 *1 SIFT 1 Shibuya CROSS TOWER 28th Floor 2-15-1 Shibuya Shibuya-ku Tokyo, 150-0002 Japan a) manbai@d-itlab.co.jp *1 Binary

More information

2 3, 4, 5 6 2. [1] [2] [3]., [4], () [3], [5]. Mel Frequency Cepstral Coefficients (MFCC) [9] Logan [4] MFCC MFCC Flexer [10] Bogdanov2010 [3] [14],,,

2 3, 4, 5 6 2. [1] [2] [3]., [4], () [3], [5]. Mel Frequency Cepstral Coefficients (MFCC) [9] Logan [4] MFCC MFCC Flexer [10] Bogdanov2010 [3] [14],,, DEIM Forum 2016 E1-4 525-8577 1 1-1 E-mail: is0111rs@ed.ritsumei.ac.jp, oku@fc.ritsumei.ac.jp, kawagoe@is.ritsumei.ac.jp 373 1.,, itunes Store 1, Web,., 4,300., [1], [2] [3],,, [4], ( ) [3], [5].,,.,,,,

More information

20mm 63.92% ConstantZoom U 5

20mm 63.92% ConstantZoom U 5 29 30 2 13 16350926 20mm 63.92% ConstantZoom U 5 1 3 1.1...................................... 3 1.2................................. 4 2 8 2.1............... 8 2.2............................ 8 2.3..

More information

NAIST-IS-MT

NAIST-IS-MT NAIST-IS-MT1251002 2014 3 13 ( ) Augmented Reality AR AR AR AR AR (1) (2) (3) AR AR, NAIST-IS-MT1251002, 2014 3 13. i AR AR AR ii Augmented Reality Using Pre-captured Images Considering Change of Real-world

More information

Haiku Generation Based on Motif Images Using Deep Learning Koki Yoneda 1 Soichiro Yokoyama 2 Tomohisa Yamashita 2 Hidenori Kawamura Scho

Haiku Generation Based on Motif Images Using Deep Learning Koki Yoneda 1 Soichiro Yokoyama 2 Tomohisa Yamashita 2 Hidenori Kawamura Scho Haiku Generation Based on Motif Images Using Deep Learning 1 2 2 2 Koki Yoneda 1 Soichiro Yokoyama 2 Tomohisa Yamashita 2 Hidenori Kawamura 2 1 1 School of Engineering Hokkaido University 2 2 Graduate

More information

DEIM Forum 2012 E Web Extracting Modification of Objec

DEIM Forum 2012 E Web Extracting Modification of Objec DEIM Forum 2012 E4-2 670 0092 1 1 12 E-mail: nd11g028@stshse.u-hyogo.ac.jp, {dkitayama,sumiya}@shse.u-hyogo.ac.jp Web Extracting Modification of Objects for Supporting Map Browsing Junki MATSUO, Daisuke

More information

Microsoft Word - deim2011_new-ichinose-20110325.doc

Microsoft Word - deim2011_new-ichinose-20110325.doc DEIM Forum 2011 B7-4 252-0882 5322 E-mail: {t08099ai, kurabaya, kiyoki}@sfc.keio.ac.jp A Music Search Database System with a Selector for Impressive-Sections of Continuous Data Aya ICHINOSE Shuichi KURABAYASHI

More information

IPSJ SIG Technical Report Vol.2014-EIP-63 No /2/21 1,a) Wi-Fi Probe Request MAC MAC Probe Request MAC A dynamic ads control based on tra

IPSJ SIG Technical Report Vol.2014-EIP-63 No /2/21 1,a) Wi-Fi Probe Request MAC MAC Probe Request MAC A dynamic ads control based on tra 1,a) 1 1 2 1 Wi-Fi Probe Request MAC MAC Probe Request MAC A dynamic ads control based on traffic Abstract: The equipment with Wi-Fi communication function such as a smart phone which are send on a regular

More information

Dynamic Time Warping( DTW DTW 30 k-d tree Forebes [1] 2. DTW[2] DTW DTW DTW Forbes[1] k-d tree DTW Hsu[3] DTW Zhu[4] K-SVD Sun[5] Self-S

Dynamic Time Warping( DTW DTW 30 k-d tree Forebes [1] 2. DTW[2] DTW DTW DTW Forbes[1] k-d tree DTW Hsu[3] DTW Zhu[4] K-SVD Sun[5] Self-S 情報処理学会インタラクション 2015 IPSJ Interaction 2015 A62 2015/3/5 1,a) Natapon Pantuwong 2 1 1 1 Dynamic Time Warping 2 DTW DTW 30 k-d tree [1] A Rapid Motion Retrieval Technique using Simple and Discrete Representation

More information

1 2 Web Work Supporting with Virtual Display using Augmented Reality Masahiro KANEKO 1 and Jiro TANAKA 2 With the spread of online storage services an

1 2 Web Work Supporting with Virtual Display using Augmented Reality Masahiro KANEKO 1 and Jiro TANAKA 2 With the spread of online storage services an 1 2 Web Work Supporting with Virtual Display using Augmented Reality Masahiro KANEKO 1 and Jiro TANAKA 2 With the spread of online storage services and web applications, we can perform various tasks using

More information

11) 13) 11),12) 13) Y c Z c Image plane Y m iy O m Z m Marker coordinate system T, d X m f O c X c Camera coordinate system 1 Coordinates and problem

11) 13) 11),12) 13) Y c Z c Image plane Y m iy O m Z m Marker coordinate system T, d X m f O c X c Camera coordinate system 1 Coordinates and problem 1 1 1 Posture Esimation by Using 2-D Fourier Transform Yuya Ono, 1 Yoshio Iwai 1 and Hiroshi Ishiguro 1 Recently, research fields of augmented reality and robot navigation are actively investigated. Estimating

More information

,4) 1 P% P%P=2.5 5%!%! (1) = (2) l l Figure 1 A compilation flow of the proposing sampling based architecture simulation

,4) 1 P% P%P=2.5 5%!%! (1) = (2) l l Figure 1 A compilation flow of the proposing sampling based architecture simulation 1 1 1 1 SPEC CPU 2000 EQUAKE 1.6 50 500 A Parallelizing Compiler Cooperative Multicore Architecture Simulator with Changeover Mechanism of Simulation Modes GAKUHO TAGUCHI 1 YOUICHI ABE 1 KEIJI KIMURA 1

More information