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Retrieving Actions in Group Contexts Tian Lan, Yang Wang, Greg Mori, Stephen Robinovitch Simon Fraser University Sept. 11, 2010.

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Presentation on theme: "Retrieving Actions in Group Contexts Tian Lan, Yang Wang, Greg Mori, Stephen Robinovitch Simon Fraser University Sept. 11, 2010."— Presentation transcript:

1 Retrieving Actions in Group Contexts Tian Lan, Yang Wang, Greg Mori, Stephen Robinovitch Simon Fraser University Sept. 11, 2010

2 Outline Action Retrieval as Ranking Results and Future Work Contextual Representation of Actions

3

4 Nursing Home Fall analysis in nursing home surveillance videos – a system automatically rank the videos according to the relevance to fall action is expected

5 Action-Action Context Context What other people are doing ?

6 Actions in Group Context Motivation – human actions are rarely performed in isolation, the actions of individuals in a group can serve as context for each other. Goal – explore the benefit of contextual information in action retrieval in challenging real-world applications

7 Action Context Descriptor τ action τ z + Focal personContext

8 Action Context Descriptor Feature Descriptor Multi-class SVM action class score action class score … action class score max action class score e.g. HOG by Dalal & Triggs

9 Outline Action Retrieval as Ranking Results and Future Work Contextual Representation of Actions

10 Classification or Retrieval Previous Work – Most work in human action understanding focuses on action classification.

11 Classification or Retrieval Most surveillance tasks are typical retrieval tasks – retrieve a small video segment contains a particular action from thousands of hours of videos. The “action of interest” is rare event – Extremely imbalanced classes

12 Action Retrieval Rank according to the relevance to falls Query : fall

13 Learning Input: document-rank pair (x i,y i ) Optimization Joachims, KDD 06

14 Ranking SVM Ranking function h(x) h(x) Rank r1 Rank r2 Rank r3

15 Action Retrieval - training irrelevant very relevant

16 Outline Action Retrieval as Ranking Results and Future Work Contextual Representation of Actions

17 Dataset Nursing Home Dataset 5 action categories: walking, standing, sitting, bending and falling. (per person) 18 video clips. Query: fall Collective Activity Dataset (Choi et al. VS. 09) 5 action categories: crossing, waiting, queuing, walking, talking. (per person) 44 video clips. Query: each of the five actions

18 Nursing Home Dataset Dataset

19 Collective Activity Dataset

20 System Overview Person Detector Person Detector Person Descriptor Person Descriptor Video u v Rank SVM Rank SVM Pedestrian Detection by Felzenszwalb et al. Background Subtraction HOG by Dalal & Triggs LST by Loy et al. at cvpr 09

21 Baselines Context vs No Context – Action Context Descriptor – Original feature descriptors, e.g. HOG (Dalal & Triggs at CVPR 05), LST (Loy et al. at CVPR 09) RankSVM vs SVM Methods – Context + RankSVM (our method) – Context + SVM – No Context + RankSVM – No Context + SVM

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23 Retrieval Results Nursing Home Dataset

24 Retrieval Results Collective Activity Dataset

25 Retrieval Results Collective Activity Dataset

26 Retrieval Results Collective Activity Dataset

27 1 1 2 2 3 3 4 4

28 7 7 8 8 6 6 5 5

29 Action Classification [10] Choi et al. in VS. 09 Collective Activity Dataset

30 Conclusion A new contextual feature descriptor to represent actions – action context (AC) descriptor Formulate our problem as a retrieval task.

31 Future Work Contextual Feature Descriptors – How to only encode useful context? Rank-SVM loss, optimize the NDCG score

32 Thank you!

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34 7 7 8 8 6 6 5 5


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