Litcius/Paper detail

Revisiting RGBT Tracking Benchmarks From the Perspective of Modality Validity: A New Benchmark, Problem, and Solution

Zhangyong Tang, Tianyang Xu, Xiao‐Jun Wu, Xuefeng Zhu, Chunyang Cheng, Zhenhua Feng, Josef Kittler

2025IEEE Transactions on Image Processing9 citationsDOI

Abstract

RGBT tracking draws increasing attention because of its robustness in multi-modal warranting (MMW) scenarios, such as nighttime and adverse weather conditions, where relying on a single sensing modality fails to ensure stable tracking results. However, existing benchmarks predominantly contain videos collected in common scenarios where both RGB and thermal infrared (TIR) information are of sufficient quality. This weakens the representativeness of existing benchmarks in severe imaging conditions, leading to tracking failures in MMW scenarios. To bridge this gap, we present a new benchmark considering the modality validity, MV-RGBT, captured specifically from MMW scenarios where either RGB (extreme illumination) or TIR (thermal truncation) modality is invalid. Hence, it is further divided into two subsets according to the valid modality, offering a new compositional perspective for evaluation and providing valuable insights for future designs. Moreover, MV-RGBT is the most diverse benchmark of its kind, featuring 36 different object categories captured across 19 distinct scenes. Furthermore, considering severe imaging conditions in MMW scenarios, a new problem is posed in RGBT tracking, named 'when to fuse', to stimulate the development of fusion strategies for such scenarios. To facilitate its discussion, we propose a new solution with a mixture of experts, named MoETrack, where each expert generates independent tracking results along with a confidence score. Extensive results demonstrate the significant potential of MV-RGBT in advancing RGBT tracking and elicit the conclusion that fusion is not always beneficial, especially in MMW scenarios. Besides, MoETrack achieves state-of-the-art results on several benchmarks, including MV-RGBT, GTOT, and LasHeR. Source codes and benchmarks are available at https://github.com/Zhangyong-Tang/MVRGBT.

Topics & Concepts

Robustness (evolution)Computer scienceArtificial intelligenceBenchmark (surveying)Modality (human–computer interaction)Computer visionPerspective (graphical)Tracking (education)RGB color modelSnapshot (computer storage)Video trackingSensor fusionMachine learningObject detectionClutterRepresentativeness heuristicTracking systemData miningImage fusionHyperspectral imagingScalabilityAdverse weatherIndustrial Vision Systems and Defect Detection