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CVPR報告

玉木徹(広島大)

2012/6/29 PRMU
おことわり
おことわり

この国際会議参加報告は
   個人的に
行っているものです.
おことわり

PRMUのイベントではありませ
       ん.
 招待講演でもありません.
  依頼もされていません.
おことわり

情報処理学会CVIM研究会の
  類似イベントとは
 何の関係もありません.
おことわり

     報告内容は
ご期待に沿えない場合があります
おことわり

意見には個人差があります.
おことわり

予稿集の原稿には
何も書いてません.
bit.ly/cvpr2012report

  10ページの報告書.
勉強会

第20回 コンピュータビジョン勉強会@関東
      「CVPR2012読み会」

  第21/22回 関西CV・PRML勉強会
       (CVPR2012輪講)
謝辞

CVPRでお会いした方々
ありがとうございました
What is CVPR ?
CVPR is ...
トップカンファレンス (ICCV, ECCV, CVPR)
     毎年アメリカで開催
     参加者数1500人以上
      発表論文400以上
投稿数
                                            投稿数
                                                                                     もうすぐ200

2500
               ACCV

               ECCV
2000           ICCV

               CVPR

               SIGGRAPH
1500
               NIPS

               BMVC
1000




500




  0
       2000   2001    2002   2003   2004   2005   2006   2007   2008   2009   2010   2011   2012
採択率
                                           採択                                だいたい20%〜30%
                                                 率
0.9
                                                                                    ACCV
0.8
                                                                                    ECCV

0.7                                                                                 ICCV

                                                                                    CVPR
0.6
                                                                                    SIGGRAPH
0.5                                                                                 NIPS

                                                                                    BMVC
0.4

0.3

0.2

0.1

 0
      2000   2001   2002   2003    2004   2005   2006   2007   2008   2009   2010      2011    2012


                                  (通説)日本人はほとんど通らない
Photo by ambee
年間スケジュール

査読結果通知   採否通知




 CVPR




          投稿
日程
 16
June   ワークショップ6・チュートリアル6
 17
June   ワークショップ6・チュートリアル6
 18
June   本会議
 19
June   本会議
 20
June   本会議
 21
June   ワークショップ6・チュートリアル5
開催地 Rhode Island
開催地 Providence, RI


               80Km




     250Km
Providence Convention Center
Registration Desk
オーラル会場1
          たぶん1500人は座れる
オーラル会場2
          たぶん1000人は座れる
オーラル会場1


オーラル会場2
ビッグサイト




                                  オーラル会場1

                   福岡国際センター
         パシフィコ横浜
                              幕張メッセ
ポスター会場
ポスター会場
ポスターサイズは2.5m×1.2m

                    1日3回ポスターセッション
                    1セッションで40〜50件
研究の紹介

       注意:
おすすめの研究内容ではありません.
     順不同です.
Icon Scanning:
Towards Next Generation
      QR Codes
Dense Reconstruction
    On–the–Fly
Example-based Cross-Modal
        Denoising
FREAK: Fast Retina Keypoint
Best Open Source Code Award Winner
A New Mirror-based Extrinsic
           Camera Calibration Using an
             Orthogonality Constraint
                                 Kosuke Takahashi Shohei Nobuhara Takashi Matsuyama
Best Open Source Code Award 2nd Winner    PRMU/CVIM 2012年1月に発表
Multi View
 Registration
     for
Novelty/Backg
   round
 Separation
A Database for Fine Grained Activity
   Detection of Cooking Activities
A Combined Pose, Object, and Feature
   Model for Action Understanding
Parsing Clothing
in Fashion Photographs
Street-to-Shop: Cross-Scenario Clothing
Retrieval via Parts Alignment and Auxiliary
                    Set
Recognizing Proxemics in Personal
             Photos
Social Interactions:
A First-Person Perspective
Detecting Activities of Daily Living
 in First-person Camera Views
Understanding Collective Crowd
 Behaviors: Learning a Mixture
 Model of Dynamic Pedestrian-
            Agents
Discriminately Decreasing
Discriminability with Learned Image
                Filters
Neighborhood Repulsed Metric
Learning for Kinship Verification
Accidental pinhole and pinspeck cameras:
 revealing the scene outside the picture
No occlusion   pinspeck   pinhole
雑感
雑感

“Large scale”花盛り
•   Hasing, indexing
•   Nearest neighbor大勢
•   Linear classifier
雑感

     認識手法の今後
•   Bag-of-visual wordsを脱却したい
•   Sparse, L1ノルムは落ち着いた
雑感

Scene understanding
•   outdoorだけでなくindoorに
•   First person camera
•   Kinect
雑感

Graphical model
•   Contextからdeep networkへ
Foods!
Lobster banquet
CVPRにacceptされるまで
CVPRにacceptされるまで

     MIRU2010
   査読結果:オール1
CVPRにacceptされるまで

      MIRU2011
  査読結果:まあまあ(4)
      ポスター
CVPRにacceptされるまで

      ICCV2011
    Definitely reject
CVPRにacceptされるまで

        ICCV2011
   Area chair comment:
  読んだけど内容ダメダメ
CVPRにacceptされるまで

   ICCASP2012@京都
CVPRにacceptされるまで

   ICCASP2012@京都
  に出しちゃおうと思った
       (誘惑)
CVPRにacceptされるまで

      CVPR2012
  に出してもいい内容だから
     出しましょう
CVPRにacceptされるまで

      CVPR2012
     Borderline x2
    Weak accept x2
CVPRにacceptされるまで

       CVPR2012
   Area chair comment:
    Defenetly ACCEPT
CVPRにacceptされるコツ

    負けないこと.

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20120629PRMU CVPR2012報告