HIPTrack: Visual Tracking with Historical Prompts

3 Nov 2023  ·  Wenrui Cai, Qingjie Liu, Yunhong Wang ·

Trackers that follow Siamese paradigm utilize similarity matching between template and search region features for tracking. Many methods have been explored to enhance tracking performance by incorporating tracking history to better handle scenarios involving target appearance variations such as deformation and occlusion. However, the utilization of historical information in existing methods is insufficient and incomprehensive, which typically requires repetitive training and introduces a large amount of computation. In this paper, we show that by providing a tracker that follows Siamese paradigm with precise and updated historical information, a significant performance improvement can be achieved with completely unchanged parameters. Based on this, we propose a historical prompt network that uses refined historical foreground masks and historical visual features of the target to provide comprehensive and precise prompts for the tracker. We build a novel tracker called HIPTrack based on the historical prompt network, which achieves considerable performance improvements without the need to retrain the entire model. We conduct experiments on seven datasets and experimental results demonstrate that our method surpasses the current state-of-the-art trackers on LaSOT, LaSOText, GOT-10k and NfS. Furthermore, the historical prompt network can seamlessly integrate as a plug-and-play module into existing trackers, providing performance enhancements. The source code is available at https://github.com/WenRuiCai/HIPTrack.

PDF Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Visual Object Tracking GOT-10k HIPTrack Average Overlap 77.4 # 4
Success Rate 0.5 88.0 # 1
Success Rate 0.75 74.5 # 4
Visual Object Tracking LaSOT HIPTrack AUC 72.7 # 6
Normalized Precision 82.9 # 1
Precision 79.5 # 4
Visual Object Tracking LaSOT-ext HIPTrack AUC 53.0 # 4
Normalized Precision 64.3 # 1
Precision 60.6 # 2
Visual Object Tracking NeedForSpeed HIPTrack AUC 0.681 # 2
Visual Object Tracking OTB-2015 HIPTrack AUC 0.71 # 4
Visual Object Tracking TrackingNet HIPTrack Precision 83.8 # 8
Normalized Precision 89.1 # 6
Accuracy 84.5 # 9
Visual Object Tracking UAV123 HIPTrack AUC 0.705 # 6

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