FSC-YOLOv5s:一种航空红外场景目标检测算法

Mingyang Guo, J. Sha, Yanheng Wang, Jixin Gao
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引用次数: 0

摘要

针对无人机红外观测图像背景复杂、分辨率低、目标尺度变化等问题,提出了一种高效的红外场景目标检测算法(FSC-YOLOv5s),可有效提高无人机视角下红外目标检测精度。首先,我们提出FC3模块对YOLOv5s骨干网进行改进,实现骨干网间的信息融合。然后,在特征提取的末端加入Swin Transformer模块进行空间金字塔池化结构(SPPF)和颈部网络特征融合,充分提取图像特征信息。最后,在原始特征融合的基础上,对浅层特征进行下采样融合,提取丰富的语义信息。实验结果表明,虽然模型参数数量略有增加,但检测精度mAP达到92.3%,比YOLOv5s提高了2%,速度达到37.88FPS。可以看出,FSC-YOLOv5s具有更快的收敛速度、更高的检测精度和良好的实时性,更有利于实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FSC-YOLOv5s: A target detection algorithm for aerial infrared scenes
Aiming at the problems of complex background, low resolution, and target scale variation in infrared images observed from UAV, we propose an efficient infrared scene target detection algorithm (FSC-YOLOv5s), which can effectively improve the accuracy of infrared target detection in the perspective of UAV. Firstly, we propose the FC3 module to improve the backbone network of YOLOv5s, which has information fusion between the backbone networks. Then, the Swin Transformer module is added to the end of the feature extraction Spatial Pyramid Pooling Structure (SPPF) and the neck network feature fusion to fully extract the image feature information. Finally, on the basis of the original feature fusion, the shallow features were fused by downsampling to extract rich semantic information. Experimental results show that although the number of model parameters is increased slightly, the detection accuracy mAP reaches 92.3%, which is 2% higher than that of YOLOv5s, and the speed reaches 37.88FPS. It can be seen that FSC-YOLOv5s has faster convergence speed, higher detection accuracy, and good real-time performance, which is more conducive to practical applications.
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