TL;DR
This paper introduces SPIRE, a novel encoder-only IRSTD framework that reformulates small target detection as centroid regression guided by single-point supervision, achieving high accuracy with low false alarms.
Contribution
It proposes a new single-point supervision method with a probabilistic response encoding and high-resolution encoder, simplifying IRSTD and improving efficiency.
Findings
SPIRE achieves competitive detection performance on benchmarks.
It maintains low false alarm rates across tests.
The method significantly reduces computational cost.
Abstract
Infrared small target detection (IRSTD) aims to separate small targets from clutter backgrounds. Extensive research is dedicated to the pixel-level supervision-guided "encoder-decoder" segmentation paradigm. Although having achieved promising performance, they neglect the fact that small targets only occupy a few pixels and are usually accompanied with blurred boundary caused by clutter backgrounds. Based on this observation, we argue that the first principle of IRSTD should be target localization instead of separating all target region accompanied with indistinguishable background noise. In this paper, we reformulate IRSTD as a centroid regression task and propose a novel Single-Point Supervision guided Infrared Probabilistic Response Encoding method (namely, SPIRE), which is indeed challenging due to the mismatch between reduced supervision network and equivalent output. Specifically,…
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