Litcius/Paper detail

RRCANet: Recurrent Reusable-Convolution Attention Network for Infrared Small Target Detection

Yongxian Liu, Boyang Li, Ting Liu, Zaiping Lin, Wei An

2025IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing8 citationsDOIOpen Access PDF

Abstract

Infrared small target detection is a challenging task due to its unique characteristics (e.g., small, dim, shapeless and changeable). Recently published CNN-based methods have achieved promising performance with heavy feature extraction and fusion modules. To achieve efficient and effective detection, we propose a recurrent reusable-convolution attention network (RRCA-Net) for infrared small target detection. Specifically, RRCA-Net incorporates reusable-convolution block (RuCB) in a recurrent manner without introducing extra parameters. With the help of the repetitive iteration in RuCB, the high-level information of small targets in the deep layers can be well maintained and further refined. Then, a dual interactive attention aggregation module (DIAAM) is proposed to promote the mutual enhancement and fusion of refined information. In this way, RRCA-Net can both achieve high-level feature refinement and enhance the correlation of contextual information between adjacent layers. Moreover, to achieve steady convergence, we design a target characteristic inspired loss function (DpT-k loss) by integrating physical and mathematical constraints. Experimental results on three benchmark datasets (e.g. NUAA-SIRST, IRSTD1k, DenseSIRST) demonstrate that our RRCA-Net can achieve comparable performance to the state-of-the-art methods while maintaining a small number of parameters, and act as a plug and play module to introduce consistent performance improvement for several popular IRSTD methods. Our code will be available at https://github.com/yongxianLiu/RRCANet soon.

Topics & Concepts

Computer scienceBenchmark (surveying)Block (permutation group theory)Feature (linguistics)Feature extractionTask (project management)Code (set theory)Artificial intelligenceFunction (biology)Pattern recognition (psychology)Mutual informationSource codeTask analysisSimilarity (geometry)Information lossReduction (mathematics)InfraredFusionAttention networkDual (grammatical number)Sensor fusionInformation extractionPerformance improvementObject detectionInfrared Target Detection MethodologiesCalibration and Measurement TechniquesAdvanced Semiconductor Detectors and Materials