Abstract

Multi-resolution feature fusion DCF (Discriminative Correlation Filter) methods have significantly advanced the object tracking performance. However, careless choice and fusion of sample features make the algorithm susceptible to interference, leading to tracking failure. Some trackers embed the re-detection module to remedy tracking failures, yet distinguishing ability and stability of the sample features are scarcely considered when training the detector, resulting in low effectiveness detection. Firstly, this paper proposes a criterion of feature tracking reliability and conduct a novel feature adaptive fusion framework. The feature tracking reliability criterion is proposed to evaluate the robustness and distinguishing ability of the sample features. Secondly, a re-detection module is proposed to further avoid tracking failures and increase the accuracy of target re-detection. The re-detection module consists of multiple SVM detectors trained by different sample features. When the tracking fails, the SVM detector trained by the most reliable sample feature will be activated to recover the target and adjust the target position. Finally, comparison experiments on OTB2015 and UAV123 databases demonstrate the accuracy and robustness of the proposed method.

Highlights

  • Visual single-object tracking is one of the fundamental problems in computer vision, and it involves multiple research fields such as signal processing, image processing and artificial intelligence

  • This paper uses One Pass Evaluation (OPE) criterion including center location error and the bounding box overlap score to evaluate the performance of trackers

  • We firstly evaluate the effect of feature adaptive fusion based on the feature tracking reliability criterion in our method

Read more

Summary

Introduction

Visual single-object tracking is one of the fundamental problems in computer vision, and it involves multiple research fields such as signal processing, image processing and artificial intelligence. The task of visual object tracking is to continuously localize a target in a video sequence with given prior information such as initial location and scale of the target. Classical tracker is able to quickly and accurately localize the target only in the ideal scenario. Some factors including deformation, occlusion and illumination variation, etc., caused by complex environment make visual object tracking challenging

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call