Multi-view hockey tracking with trajectory smoothing and camera selection
We address the problem of multi-view multi-target tracking using multiple stationary cameras in the application of hockey tracking and test the approach with data from two cameras. The system is based on the previous work by Okuma et al. [50]. We replace AdaBoost detection with blob detection in bot...
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ndltd-UBC-oai-circle.library.ubc.ca-2429-24022018-01-05T17:22:57Z Multi-view hockey tracking with trajectory smoothing and camera selection Wu, Lan HMM Smoothing Viterbi algorithm Camera selection We address the problem of multi-view multi-target tracking using multiple stationary cameras in the application of hockey tracking and test the approach with data from two cameras. The system is based on the previous work by Okuma et al. [50]. We replace AdaBoost detection with blob detection in both image coordinate systems after background subtraction. The sets of blob-detection results are then mapped to the rink coordinate system using a homography transformation. These observations are further merged into the final detection result which will be incorporated into the particle filter. In addition, we extend the particle filter to use multiple observation models, each corresponding to a view. An observation likelihood and a reference color model are also maintained for each player in each view and are updated only when the player is not occluded in that view. As a result of the expanded coverage range and multiple perspectives in the multi-view tracking, even when the target is occluded in one view, it still can be tracked as long as it is visible from another view. The multi-view tracking data are further processed by trajectory smoothing using the Maximum a posteriori smoother. Finally, automatic camera selection is performed using the Hidden Markov Model to create personalized video programs. Science, Faculty of Computer Science, Department of Graduate 2008-09-30T14:30:19Z 2008-09-30T14:30:19Z 2008 2008-11 Text Thesis/Dissertation http://hdl.handle.net/2429/2402 eng Attribution-NonCommercial-NoDerivatives 4.0 International http://creativecommons.org/licenses/by-nc-nd/4.0/ 2444767 bytes application/pdf University of British Columbia |
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HMM Smoothing Viterbi algorithm Camera selection |
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HMM Smoothing Viterbi algorithm Camera selection Wu, Lan Multi-view hockey tracking with trajectory smoothing and camera selection |
description |
We address the problem of multi-view multi-target tracking using multiple stationary cameras in the application of hockey tracking and test the approach with data from two cameras. The system is based on the previous work by Okuma et al. [50]. We replace AdaBoost detection with blob detection in both image coordinate systems after background subtraction. The sets of blob-detection results are then mapped to the rink coordinate system using a homography transformation. These observations are further merged into the final detection result which will be incorporated into the particle filter. In addition, we extend the particle filter to use multiple observation models, each corresponding to a view. An observation likelihood and a reference color model are also maintained for each player in each view and are updated only when the player is not occluded in that view. As a result of the expanded coverage range and multiple perspectives in the multi-view tracking, even when the target is occluded in one view, it still can be tracked as long as it is visible from another view. The multi-view tracking data are further processed by trajectory smoothing using the Maximum a posteriori smoother. Finally, automatic camera selection is performed using the Hidden Markov Model to create personalized video programs. === Science, Faculty of === Computer Science, Department of === Graduate |
author |
Wu, Lan |
author_facet |
Wu, Lan |
author_sort |
Wu, Lan |
title |
Multi-view hockey tracking with trajectory smoothing and camera selection |
title_short |
Multi-view hockey tracking with trajectory smoothing and camera selection |
title_full |
Multi-view hockey tracking with trajectory smoothing and camera selection |
title_fullStr |
Multi-view hockey tracking with trajectory smoothing and camera selection |
title_full_unstemmed |
Multi-view hockey tracking with trajectory smoothing and camera selection |
title_sort |
multi-view hockey tracking with trajectory smoothing and camera selection |
publisher |
University of British Columbia |
publishDate |
2008 |
url |
http://hdl.handle.net/2429/2402 |
work_keys_str_mv |
AT wulan multiviewhockeytrackingwithtrajectorysmoothingandcameraselection |
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1718581766518734848 |