TL;DR
This paper introduces a physics-inspired, bi-level rebalancing framework with pseudo-label diffusion for improved point-supervised infrared small-target detection, achieving faster annotation and higher accuracy.
Contribution
It proposes a novel adaptive framework combining pseudo-label expansion and bi-level optimization to address label instability and data imbalance in infrared detection.
Findings
Five-fold annotation acceleration achieved
Superior detection accuracy demonstrated
Comparable performance with only 30% of training data
Abstract
Point supervision has become a scalable solution to address dense annotation for infrared small target detection, but its performance is limited by two coupled bottlenecks: unstable pseudo-label evolution in cluttered, low-contrast infrared imagery and severe sample-distribution imbalance. In this paper, we present a more adaptive and stable framework to address these issues. Leveraging the intrinsic consistency between thermal radiation patterns and heat diffusion, we propose a physics-induced annotation strategy that expands single-point labels into reliable pseudo-masks. To further enhance supervision and alleviate sample imbalance, we develop a bi-level dual-update framework that jointly optimizes detector weights, sample weights, and diffusion parameters. A meta-classifier dynamically predicts sample-wise loss weights, while a differentiable diffusion module refines pseudo-labels…
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