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Visual Object Tracking Xu Yan Quantitative Imaging Laboratory 1 Xu Yan Advisor: Shishir K. Shah Quantitative Imaging Laboratory Computer Science Department.

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Presentation on theme: "Visual Object Tracking Xu Yan Quantitative Imaging Laboratory 1 Xu Yan Advisor: Shishir K. Shah Quantitative Imaging Laboratory Computer Science Department."— Presentation transcript:

1 Visual Object Tracking Xu Yan Quantitative Imaging Laboratory 1 Xu Yan Advisor: Shishir K. Shah Quantitative Imaging Laboratory Computer Science Department University of Houston

2 Multiple Object Tracking - Objective Xu Yan Quantitative Imaging Laboratory 2 To develop Human tracking system by single camera in outdoor environment

3 Multiple Object Tracking - Challenges The core challenges of the visual object tracking task is the enormous unpredictable variations in targets due to : 3 Xu Yan Quantitative Imaging Laboratory  environment changes  target deformations  partial occlusions  abrupt motion  camouflage  low image qualities

4 Multiple Object Tracking - Framework 4 Human Detector Predictor Prior Knowledge Initialize Data Association Human Trajectories Human Detection Tracker Xu Yan Quantitative Imaging Laboratory

5 Human Detection Now we give the tracker manual initialization in the first frame. 5 Xu Yan Quantitative Imaging Laboratory

6 Prediction - Social Interaction 6 Xu Yan Quantitative Imaging Laboratory

7 Data Association 7 Blob region Prediction region Comparison Frame t Frame t+1 Likelihood of every particle Xu Yan Quantitative Imaging Laboratory

8 Multiple Object Tracking – Results 8 Xu Yan Quantitative Imaging Laboratory OUR trackerBPF tracker MCMC trackerVTD tracker

9 Contribution and future work Conclusion – The experimental results demonstrate that the proposed method enables tracking of pedestrians in complex scenes with occlusions and varying interaction behaviors. Future work – Incorporate online updating observation model – More robust data association model Paper – Xu Yan, Ioannis Kakadiaris and Shishir Shah. Predicting Social Interactions for Visual Tracking. In Jesse Hoey, Stephen McKenna and Emanuele Trucco, Proceedings of the British Machine Vision Conference, pages 102.1-102.11. BMVA Press, September 2011. 9 Xu Yan Quantitative Imaging Laboratory


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