SF-YOLOv5:改进的YOLOv5,带有旋转变压器和融合连接方法,用于多无人机检测

Jun Ma, Xiao Wang, Cuifeng Xu, Jing Ling
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引用次数: 0

摘要

传统的基于YOLOv5网络的检测方法在处理复杂的飞行轨迹以及无人机自身或其他飞行物的干扰时,主要针对一架无人机,难以有效检测多架无人机。为了改进检测方法,提出了一种将swin变压器块与基于YOLOv5网络的融合连接方法相结合的新算法SF-YOLOv5。此外,该网络采用距离交联和非最大抑制(DIoU-NMS)作为后处理方法,可以去除冗余检测盒,提高多无人机的检测效率。实验结果验证了该网络的可行性和有效性,实验中使用的两个数据集上训练的mAP分别提高了2.5%和4.11%。该网络能够在保证精度和速度的前提下对多架无人机进行检测,可有效应用于无人机监控领域或其他类型的多目标检测应用。
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SF-YOLOv5: Improved YOLOv5 with swin transformer and fusion-concat method for multi-UAV detection
When dealing with complex trajectories, and the interference by the unmanned aerial vehicle (UAV) itself or other flying objects, the traditional detecting methods based on YOLOv5 network mainly focus on one UAV and difficult to detect the multi-UAV effectively. In order to improve the detection method, a novel algorithm combined with swin transformer blocks and a fusion-concat method based on YOLOv5 network, so called SF-YOLOv5, is proposed. Furthermore, by using the distance intersection over union and non-maximum suppression (DIoU-NMS) as post-processing method, the proposed network can remove redundant detection boxes and improve the efficiency of the multi-UAV detection. Experimental results verify the feasibility and effectiveness of the proposed network, and show that the mAP trained on the two datasets used in experiments has been improved by 2.5 and 4.11% respectively. The proposed network can detect multi-UAV while ensuring accuracy and speed, and can be effectively used in the field of UAV monitoring or other types of multi-object detection applications.
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