Mask Guided Spatial-Temporal Fusion Network for Multiple Object Tracking.

ICIP(2022)

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摘要
Multi-object trackers make the association almost perfectly when no occlusion occurred between two or more targets. However, it is hard to extract reliable features on account of partial occlusion caused by a nearby object, which often leads to tracking failure. In this paper, we utilize mask to guide attention of the neural network in order to focus on the visible part of the target and design a tracklet-level feature extraction method. Then, a tracking framework is proposed based on a mask guided fusion network and multi-hypothesis tracking algorithm. Comprehensive evaluation on the MOT17 dataset shows that our approach achieves competitive results.
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关键词
mask,fusion,spatial-temporal
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