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Papers/Breaking Shallow Limits: Task-Driven Pixel Fusion for Gap-...

Breaking Shallow Limits: Task-Driven Pixel Fusion for Gap-free RGBT Tracking

Andong Lu, Yuanzhi Guo, Wanyu Wang, Chenglong Li, Jin Tang, Bin Luo

2025-03-14Representation LearningRgb-T Tracking
PaperPDF

Abstract

Current RGBT tracking methods often overlook the impact of fusion location on mitigating modality gap, which is key factor to effective tracking. Our analysis reveals that shallower fusion yields smaller distribution gap. However, the limited discriminative power of shallow networks hard to distinguish task-relevant information from noise, limiting the potential of pixel-level fusion. To break shallow limits, we propose a novel \textbf{T}ask-driven \textbf{P}ixel-level \textbf{F}usion network, named \textbf{TPF}, which unveils the power of pixel-level fusion in RGBT tracking through a progressive learning framework. In particular, we design a lightweight Pixel-level Fusion Adapter (PFA) that exploits Mamba's linear complexity to ensure real-time, low-latency RGBT tracking. To enhance the fusion capabilities of the PFA, our task-driven progressive learning framework first utilizes adaptive multi-expert distillation to inherits fusion knowledge from state-of-the-art image fusion models, establishing robust initialization, and then employs a decoupled representation learning scheme to achieve task-relevant information fusion. Moreover, to overcome appearance variations between the initial template and search frames, we presents a nearest-neighbor dynamic template updating scheme, which selects the most reliable frame closest to the current search frame as the dynamic template. Extensive experiments demonstrate that TPF significantly outperforms existing most of advanced trackers on four public RGBT tracking datasets. The code will be released upon acceptance.

Results

TaskDatasetMetricValueModel
Visual TrackingLasHeRPrecision75.1TPF
Visual TrackingLasHeRSuccess59.5TPF
Visual TrackingGTOTPrecision94.3TPF
Visual TrackingGTOTSuccess76.3TPF
Visual TrackingRGBT234Precision89.7TPF
Visual TrackingRGBT234Success67.1TPF
Visual TrackingRGBT210Precision88TPF
Visual TrackingRGBT210Success63.8TPF

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