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基于RCR-YOLO的红外多尺度目标检测算法

陈笑寒 许媛媛

红外技术2025,Vol.47Issue(4):459-467,9.
红外技术2025,Vol.47Issue(4):459-467,9.

基于RCR-YOLO的红外多尺度目标检测算法

Infrared Multi-Scale Target Detection Algorithm Based on RCR-YOLO

陈笑寒 1许媛媛1

作者信息

  • 1. 上海海事大学物流工程学院,上海 201306
  • 折叠

摘要

Abstract

Infrared target detection has been widely used in both military and civilian fields.To address the issues of missed and false detections in infrared multi-scale target detection under complex backgrounds,an improved YOLOv5s algorithm,RCR-YOLO,is proposed in this paper.First,the backbone network CSPDarkNet53 of the original YOLOv5s was replaced with ResNet50 to avoid gradient vanishing caused by the deep network and to enhance the network's feature extraction capability.Subsequently,the CA attention mechanism module was added to the end of the backbone to capture feature information from different locations.Finally,the Res2Net module was added to the neck network to improve the network's representational ability and process multi-scale feature information by introducing a multi-branch structure and progressively increasing resolution,thereby enhancing detection performance.Experimental results show that this method outperforms mainstream target detection algorithms such as Faster R-CNN,SSD,and YOLOv3.Compared to YOLOv5s,mAP50-95 increased by 1.1%,while mAP50 remained at 99.5%,indicating better detection performance.The algorithm effectively performs multi-scale infrared target detection under complex backgrounds.

关键词

红外目标检测/YOLOv5/深度学习/多尺度

Key words

infrared target detection/YOLOv5/deep learning/multi-scale

分类

电子信息工程

引用本文复制引用

陈笑寒,许媛媛..基于RCR-YOLO的红外多尺度目标检测算法[J].红外技术,2025,47(4):459-467,9.

红外技术

OA北大核心

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