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Online Learning Samples and Adaptive Recovery for Robust RGB-T Tracking

Jun Liu, Zhongqiang Luo, Xingzhong Xiong

2023IEEE Transactions on Circuits and Systems for Video Technology34 citationsDOI

Abstract

With the increasing diversity of visual tracking tasks, object tracking in RGB and thermal (RGB-T) modalities has received widespread interest. Most of the existing RGB-T tracking methods mainly improve tracking performance by integrating hierarchically complementary information from RGB and thermal modalities, however, they are insufficient in handling tracking failures due to the lack of re-detection capability. To address these issues, we propose a new RGB-T tracking method with online learning samples and adaptive object recovery. First, the features of RGB and thermal modalities are concatenated for robust appearance modeling. Second, a multimodal fusion strategy is designed to stably integrate reliable information of modalities and propose to use similarity to measure tracking confidence. Finally, a detector with online learning of positive and negative samples and adaptive recovery is developed to correct unreliable tracking results. Numerical results on five recent large-scale benchmark datasets demonstrate that the proposed tracker achieves competitive performance compared to other state-of-the-art methods.

Topics & Concepts

Artificial intelligenceComputer scienceRGB color modelComputer visionBenchmark (surveying)Tracking (education)Video trackingModalitiesOnline modelEye trackingTracking systemSimilarity (geometry)Object (grammar)MathematicsImage (mathematics)GeographyPedagogySociologyStatisticsKalman filterSocial sciencePsychologyGeodesyVideo Surveillance and Tracking MethodsInfrared Target Detection MethodologiesVisual Attention and Saliency Detection
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