Remote Sensing, Vol. 17, Pages 3457: Spatio-Temporal Residual Attention Network for Satellite-Based Infrared Small Target Detection


Remote Sensing, Vol. 17, Pages 3457: Spatio-Temporal Residual Attention Network for Satellite-Based Infrared Small Target Detection

Remote Sensing doi: 10.3390/rs17203457

Authors:
Yan Chang
Decao Ma
Qisong Yang
Shaopeng Li
Daqiao Zhang

With the development of infrared remote sensing technology and the deployment of satellite constellations, infrared video from orbital platforms is playing an increasingly important role in airborne target surveillance. However, due to the limitations of remote sensing imaging, the aerial targets in such videos are often small in scale, low in contrast, and slow in movement, making them difficult to detect in complex backgrounds. In this paper, we propose a novel detection network that integrates inter-frame residual guidance with spatio-temporal feature enhancement to address the challenge of small object detection in infrared satellite video. This method first extracts residual features to highlight motion-sensitive regions, then uses a dual-branch structure to encode spatial semantics and temporal evolution, and then fuses them deeply through a multi-scale feature enhancement module. Extensive experiments show that this method outperforms mainstream methods in terms on various infrared small target video datasets, and has good robustness under low-signal-to-noise-ratio conditions.



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Yan Chang www.mdpi.com