Laser & Optoelectronics Progress, Volume. 58, Issue 16, 1615002(2021)
Multi-Task Learning Tracking Method Based on the Similarity of Dynamic Samples
To solve the problem of noisy samples easily interfering with the online updating tracking method and resulting in a drift phenomenon, a method suitable for long-term tracking is proposed, and the proposed method is combined with a multi-task learning training mode and a loss detection step is added into the tracking process. The proposed method constantly collects the appearance of the target during tracking to construct a dynamic sample set, which detects the loss of target according to sample similarity to reduce the tracker’s learning of noisy samples; further, the dynamic threshold is used to adapt to different targets. To make the tracker build a complete model of the target appearance, short- and long-term memory subtasks are jointly trained. During redetection, after the target is lost, regions are proposed based on regional outline features and scale information about the target to improve the quality of target redetection. The proposed method is evaluated on the object tracking datasets OTB-2015 and VOT-2016, and the tracker has an accuracy of 90.8% and a success rate of 68.1%. Experimental results show that the proposed method can effectively track a target in complex scenes, such as occlusion.
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Zaifeng Shi, Cheng Sun, Qingjie Cao, Zhe Wang, Qiangqiang Fan. Multi-Task Learning Tracking Method Based on the Similarity of Dynamic Samples[J]. Laser & Optoelectronics Progress, 2021, 58(16): 1615002
Category: Machine Vision
Received: Oct. 22, 2020
Accepted: Dec. 8, 2020
Published Online: Aug. 19, 2021
The Author Email: Shi Zaifeng (shizaifeng@tju.edu.cn), Sun Cheng (suncheng@tju.edu.cn)