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A REAL-TIME DEFORMABLE DETECTOR 謝汝欣 20131114. OUTLINE  Introduction  Related Work  Proposed Method  Experiments 2.

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Presentation on theme: "A REAL-TIME DEFORMABLE DETECTOR 謝汝欣 20131114. OUTLINE  Introduction  Related Work  Proposed Method  Experiments 2."— Presentation transcript:

1 A REAL-TIME DEFORMABLE DETECTOR 謝汝欣 20131114

2 OUTLINE  Introduction  Related Work  Proposed Method  Experiments 2

3 OUTLINE  Introduction - Object detection - Challenge  Related Work  Proposed Method  Experiments 3

4 OBJECT DETECTION  Human Detection 4

5 OBJECT DETECTION  Hand Detection 5

6 OUTLINE  Introduction - Object detection - Challenge  Related Work  Proposed Method  Experiments 6

7 CHALLENGE  Changes in appearance - Location - Scale - In-plane rotations - Out-of-plane rotations - Viewpoint changes - Deformations - Variations in illumination 7

8 OUTLINE  Introduction  Related Work  Proposed Method  Experiments 8

9 OUTLINE  Introduction  Related Work - A collection of detectors - Pyramid System - Pose-Index feature  Proposed Method  Experiments 9

10 A COLLECTION OF DETECTORS  Combine a collection of classifiers, each dedicated to a single pose. - A zero-background classifier - A one-background classifier - A three-background classifier - A five-background classifier A classifier which can detect 0,1,3,5 hand posture. 10

11 A COLLECTION OF DETECTORS A zero-background classifier A one-background classifier A three-background classifier A five-background classifier Combination Hand 11

12 OUTLINE  Introduction  Related Work - A collection of detectors - Pyramid System - Pose-Index feature  Proposed Method  Experiments 12

13 PYRAMID SYSTEM  Pose estimation at first stage.  Pose-dedicated classifier at second stage. Five Classifier Hand Pose estimator One Classifier Hand Estimate 5 Estimate 1 13

14 PROBLEM  Training data must be appropriately annotated in order for them to be partitioned into clusters of similar poses.  Partitioning of the available training data reduces the number of samples used to train each pose-dedicated classifier. Zero classifier One classifier Three classifierFive classifier 14

15 OUTLINE  Introduction  Related Work - A collection of detectors - Pyramid System - Pose-Index feature  Proposed Method  Experiments 15

16 POSE-INDEX FEATURE  Allowing features to be parameterized with the pose.  Need exhaustive pose exploration in testing. 16

17 POSE-INDEX FEATURE  Training Labeled Zero Labeled One Labeled ThreeLabeled Five Pose-Index Feature parameterized with the pose. 17

18 POSE-INDEX FEATURE  Testing Pose-index feature Hand Feature parameterized by zero hand posture. Feature parameterized by one hand posture. Feature parameterized by three hand posture. Feature parameterized by five hand posture. 18

19 PROBLEM  Require the training data to be labeled.  Need exploration of pose parameters in testing. Labeled Zero Labeled One Labeled ThreeLabeled Five Training & Testing Dataset 19

20 OUTLINE  Introduction  Related Work  Proposed Method  Experiments 20

21 OUTLINE  Introduction  Related Work  Proposed Method - Main Idea - Framework - Implementation Details  Experiments 21

22 MAIN IDEA  Use the pose-indexed features - Training proceeds on the unpartitioned dataset.  Pose-estimator learning and feature learning occur jointly. - No need to label for training data. - No need to exploration of these pose parameters in testing. 22

23 OUTLINE  Introduction  Related Work  Proposed Method - Main Idea - Definition - Framework - Implementation Details  Experiments 23

24 DEFINITION 24

25 DEFINITION 25

26 OUTLINE  Introduction  Related Work  Proposed Method - Main Idea - Framework - Implementation Details  Experiments 26

27 FRAMEWORK Edge Detector frame Pose-Indexed Feature 0/1 Final Detector Pose Estimator 27

28 OUTLINE  Introduction  Related Work  Proposed Method - Main Idea - Framework - Implementation Details  Experiments 28

29 IMPLEMENTATION DETAILS Edge Detector frame Pose-Indexed Feature 0/1 Final Detector Pose Estimator 29

30 IMPLEMENTATION DETAILS 30

31 IMPLEMENTATION DETAILS 8 bins Input frame 31

32 IMPLEMENTATION DETAILS Edge Detector frame Pose-Indexed Feature 0/1 Final Detector Pose Estimator 32

33 IMPLEMENTATION DETAILS 14 Pose Estimators 33

34 IMPLEMENTATION DETAILS  Pose Estimators - 1 st Pose Estimator h 1 =0.08h 2 =0.15h 3 =0.12h 4 =0.09 h 5 =0.06h 8 =0.11h 7 =0.18 h 6 =0.21 8 bins Input frame l=(u,v) 34

35 IMPLEMENTATION DETAILS  Pose Estimators - 2 nd Pose Estimator h 1 =0.05h 2 =0.12h 3 =0.18h 4 =0.02 h 5 =0.05h 8 =0.10 h 6 =0.16 h 7 =0.32 8 bins Input frame l=(u,v) 35

36 IMPLEMENTATION DETAILS Edge Detector frame Pose-Indexed Feature 0/1 Final Detector Pose Estimator 36

37 IMPLEMENTATION DETAILS 37

38 IMPLEMENTATION DETAILS 8 bins Input frame g 1 =0.06g 2 =0.17g 3 =0.18g 4 =0.09 g 5 =0.04g 8 =0.11 g 6 =0.15 g 7 =0.20 l=(u,v) 38

39 IMPLEMENTATION DETAILS 8 bins Input frame g 1 =0.03g 2 =0.15g 3 =0.16g 4 =0.03 g 5 =0.04g 8 =0.17 g 6 =0.13 g 7 =0.28 l=(u,v) 39

40 IMPLEMENTATION DETAILS Edge Detector frame Pose-Indexed Feature 0/1 Final Detector Pose Estimator 40

41 IMPLEMENTATION DETAILS 41

42 OUTLINE  Introduction  Related Work  Proposed Method  Experiments 42

43 OUTLINE  Introduction  Related Work  Proposed Method  Experiments - Aerial Images of Cars - Face Images - Hand Video Sequence 43

44 EXPERIMENTS  Aerial Images of Cars 44

45 OUTLINE  Introduction  Related Work  Proposed Method  Experiments - Aerial Images of Cars - Face Images - Hand Video Sequence 45

46 EXPERIMENTS  Face Images 46

47 OUTLINE  Introduction  Related Work  Proposed Method  Experiments - Aerial Images of Cars - Face Images - Hand Video Sequence 47

48 EXPERIMENTS  Hand Video Sequence https://www.youtube.com/watch?v=NbeHYxRNtAw 48

49 REFERENCE  “A Real-Time Deformable Detector,” Karim Ali, Franc¸ois Fleuret, David Hasler, and Pascal Fua, IEEE Transactions on Pattern Analysis and Machine Intelligence 2012. 49


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