Deep learning for multiple object tracking
The past several years has seen the rapid development of multiple object tracking object detection and re-identification. Most of work focuses on pedestrian body tracking with one-shot anchor-free structure and few work is conducted on face tracking. The main reason is that the pedestrian tracking a...
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2022
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sg-ntu-dr.10356-1610582022-08-15T02:26:18Z Deep learning for multiple object tracking Gao, Junjie Lin Zhiping School of Electrical and Electronic Engineering EZPLin@ntu.edu.sg Engineering::Electrical and electronic engineering The past several years has seen the rapid development of multiple object tracking object detection and re-identification. Most of work focuses on pedestrian body tracking with one-shot anchor-free structure and few work is conducted on face tracking. The main reason is that the pedestrian tracking always conduct on surveillance video with limited resolution. Human faces in these videos are usually not clear enough to distinguish them from each other. As the result, body tracking became an important alternative technology when face recognition fails. This dissertation will focus on the face tracking when the resolution of video is high enough. Human face detector usually apply anchor-based detector to obtain the better performance. However, one-shot anchor-based detector performs badly on re-identification task because of serious network fuzziness. Our face detection network applies the anchor-free structure on face detector and the performance is just slightly worse than the state-of-the-arts anchor-based face detector. Traditional method to train the re-identification branch usually append a full connection layer after the output of extracted id feature to do id classification. My work combines this traditional strategy with the idea of metric learning together to ensure the robustness of trained identity information. Master of Science (Signal Processing) 2022-08-15T02:26:17Z 2022-08-15T02:26:17Z 2022 Thesis-Master by Coursework Gao, J. (2022). Deep learning for multiple object tracking. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/161058 https://hdl.handle.net/10356/161058 en application/pdf Nanyang Technological University |
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Engineering::Electrical and electronic engineering Gao, Junjie Deep learning for multiple object tracking |
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The past several years has seen the rapid development of multiple object tracking object detection and re-identification. Most of work focuses on pedestrian body tracking with one-shot anchor-free structure and few work is conducted on face tracking. The main reason is that the pedestrian tracking always conduct on surveillance video with limited resolution. Human faces in these videos are usually not clear enough to distinguish them from each other. As the result, body tracking became an important alternative technology when face recognition fails. This dissertation will focus on the face tracking when the resolution of video is high enough. Human face detector usually apply anchor-based detector to obtain the better performance. However, one-shot anchor-based detector performs badly on re-identification task because of serious network fuzziness. Our face detection network applies the anchor-free structure on face detector and the performance is just slightly worse than the state-of-the-arts anchor-based face detector. Traditional method to train the re-identification branch usually append a full connection layer after the output of extracted id feature to do id classification. My work combines this traditional strategy with the idea of metric learning together to ensure the robustness of trained identity information. |
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Lin Zhiping |
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Lin Zhiping Gao, Junjie |
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Thesis-Master by Coursework |
author |
Gao, Junjie |
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Gao, Junjie |
title |
Deep learning for multiple object tracking |
title_short |
Deep learning for multiple object tracking |
title_full |
Deep learning for multiple object tracking |
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Deep learning for multiple object tracking |
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Deep learning for multiple object tracking |
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deep learning for multiple object tracking |
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Nanyang Technological University |
publishDate |
2022 |
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https://hdl.handle.net/10356/161058 |
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1743119593480650752 |