2023
DOI: 10.21203/rs.3.rs-3133773/v1
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Boosting Infrared Target Detection: Unveiling the Power of ResNet-SA and Detection Block

Abstract: We propose an IR-YOLOv5 to address the limitations of general target detection approaches in infrared scenes. Specifically, IR-YOLOv5 takes into account common issues present in infrared images, such as low resolution, high noise, low contrast, and small targets. To achieve an efficient interaction of information between different channels and obtain rich semantic information of targets in infrared images, the feature extraction network leverages the attention mechanism. Additionally, the detection scheme of Y… Show more

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