Litcius/Paper detail

SiamATL: Online Update of Siamese Tracking Network via Attentional Transfer Learning

Bo Huang, Tingfa Xu, Ziyi Shen, Shenwang Jiang, Bingqing Zhao, Ziyang Bian

2021IEEE Transactions on Cybernetics39 citationsDOI

Abstract

Visual object tracking with semantic deep features has recently attracted much attention in computer vision. Especially, Siamese trackers, which aim to learn a decision making-based similarity evaluation, are widely utilized in the tracking community. However, the online updating of the Siamese fashion is still a tricky issue due to the limitation, which is a tradeoff between model adaption and degradation. To address such an issue, in this article, we propose a novel attentional transfer learning-based Siamese network (SiamATL), which fully exploits the previous knowledge to inspire the current tracker learning in the decision-making module. First, we explicitly model the template and surroundings by using an attentional online update strategy to avoid template pollution. Then, we introduce an instance-transfer discriminative correlation filter (ITDCF) to enhance the distinguishing ability of the tracker. Finally, we suggest a mutual compensation mechanism that integrates cross-correlation matching and ITDCF detection into the decision-making subnetwork to achieve online tracking. Comprehensive experiments demonstrate that our approach outperforms state-of-the-art tracking algorithms on multiple large-scale tracking datasets.

Topics & Concepts

Computer scienceBitTorrent trackerDiscriminative modelArtificial intelligenceSubnetworkEye trackingMachine learningSimilarity (geometry)Tracking (education)Video trackingMatching (statistics)Object (grammar)Computer visionImage (mathematics)StatisticsComputer securityPedagogyPsychologyMathematicsVideo Surveillance and Tracking MethodsFire Detection and Safety SystemsImage Enhancement Techniques