DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy
Drone-based crowd tracking faces difficulties in accurately identifying and monitoring objects from an aerial perspective, largely due to their small size and close proximity to each other, which complicates both localization and tracking. To address these challenges, we present the Density-aware Tr...
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sg-smu-ink.sis_research-107662024-12-16T02:40:43Z DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy LEI, Yi ZHU, Huilin YUAN, Jingling XIANG, Guangli ZHONG, Xian HE, Shengfeng Drone-based crowd tracking faces difficulties in accurately identifying and monitoring objects from an aerial perspective, largely due to their small size and close proximity to each other, which complicates both localization and tracking. To address these challenges, we present the Density-aware Tracking (DenseTrack) framework. DenseTrack capitalizes on crowd counting to precisely determine object locations, blending visual and motion cues to improve the tracking of small-scale objects. It specifically addresses the problem of cross-frame motion to enhance tracking accuracy and dependability. DenseTrack employs crowd density estimates as anchors for exact object localization within video frames. These estimates are merged with motion and position information from the tracking network, with motion offsets serving as key tracking cues. Moreover, DenseTrack enhances the ability to distinguish small-scale objects using insights from the visual-language model, integrating appearance with motion cues. The framework utilizes the Hungarian algorithm to ensure the accurate matching of individuals across frames. Demonstrated on DroneCrowd dataset, our approach exhibits superior performance, confirming its effectiveness in scenarios captured by drones. 2024-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9766 info:doi/10.1145/3664647.3680617 https://ink.library.smu.edu.sg/context/sis_research/article/10766/viewcontent/2407.17272v2.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Multi-object Tracking Crowd Localization Vision-language Pre-training Motion-appearance Fusion Computer Sciences Graphics and Human Computer Interfaces |
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Multi-object Tracking Crowd Localization Vision-language Pre-training Motion-appearance Fusion Computer Sciences Graphics and Human Computer Interfaces |
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Multi-object Tracking Crowd Localization Vision-language Pre-training Motion-appearance Fusion Computer Sciences Graphics and Human Computer Interfaces LEI, Yi ZHU, Huilin YUAN, Jingling XIANG, Guangli ZHONG, Xian HE, Shengfeng DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
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Drone-based crowd tracking faces difficulties in accurately identifying and monitoring objects from an aerial perspective, largely due to their small size and close proximity to each other, which complicates both localization and tracking. To address these challenges, we present the Density-aware Tracking (DenseTrack) framework. DenseTrack capitalizes on crowd counting to precisely determine object locations, blending visual and motion cues to improve the tracking of small-scale objects. It specifically addresses the problem of cross-frame motion to enhance tracking accuracy and dependability. DenseTrack employs crowd density estimates as anchors for exact object localization within video frames. These estimates are merged with motion and position information from the tracking network, with motion offsets serving as key tracking cues. Moreover, DenseTrack enhances the ability to distinguish small-scale objects using insights from the visual-language model, integrating appearance with motion cues. The framework utilizes the Hungarian algorithm to ensure the accurate matching of individuals across frames. Demonstrated on DroneCrowd dataset, our approach exhibits superior performance, confirming its effectiveness in scenarios captured by drones. |
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LEI, Yi ZHU, Huilin YUAN, Jingling XIANG, Guangli ZHONG, Xian HE, Shengfeng |
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LEI, Yi ZHU, Huilin YUAN, Jingling XIANG, Guangli ZHONG, Xian HE, Shengfeng |
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LEI, Yi |
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DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
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DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
title_full |
DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
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DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
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DenseTrack : Drone-based crowd tracking via density-aware motion-appearance synergy |
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densetrack : drone-based crowd tracking via density-aware motion-appearance synergy |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/sis_research/9766 https://ink.library.smu.edu.sg/context/sis_research/article/10766/viewcontent/2407.17272v2.pdf |
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