CVDec 10, 2025

Gradient-Guided Learning Network for Infrared Small Target Detection

arXiv:2512.09497v137 citationsh-index: 11Has CodeIEEE Geoscience and Remote Sensing Letters
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge in infrared imaging for applications like surveillance, but it is incremental as it builds on existing deep learning methods with novel modules.

The paper tackles the problem of inaccurate edge positioning and background interference in infrared small target detection by proposing a gradient-guided learning network (GGL-Net), which achieves state-of-the-art results on public datasets.

Recently, infrared small target detection has attracted extensive attention. However, due to the small size and the lack of intrinsic features of infrared small targets, the existing methods generally have the problem of inaccurate edge positioning and the target is easily submerged by the background. Therefore, we propose an innovative gradient-guided learning network (GGL-Net). Specifically, we are the first to explore the introduction of gradient magnitude images into the deep learning-based infrared small target detection method, which is conducive to emphasizing the edge details and alleviating the problem of inaccurate edge positioning of small targets. On this basis, we propose a novel dual-branch feature extraction network that utilizes the proposed gradient supplementary module (GSM) to encode raw gradient information into deeper network layers and embeds attention mechanisms reasonably to enhance feature extraction ability. In addition, we construct a two-way guidance fusion module (TGFM), which fully considers the characteristics of feature maps at different levels. It can facilitate the effective fusion of multi-scale feature maps and extract richer semantic information and detailed information through reasonable two-way guidance. Extensive experiments prove that GGL-Net has achieves state-of-the-art results on the public real NUAA-SIRST dataset and the public synthetic NUDT-SIRST dataset. Our code has been integrated into https://github.com/YuChuang1205/MSDA-Net

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