轻量级YOLOv4遥感图像检测算法

Li Ma, Tongdi He, Yong Sun, Bin Hu
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引用次数: 0

摘要

遥感图像具有背景复杂、分辨率高、目标小的特点。现有的目标检测算法虽然可以提高检测精度,但普遍存在模型参数多、计算成本高、实时性差等问题。针对上述问题,本文设计了一种基于YOLOv4的轻量级目标检测算法GSC-YOLO,实现对遥感图像的快速准确检测。首先,采用Ghostnet作为GSC-YOLO的特征提取网络,减少了参数数量,提高了检测速度;其次,在预测头部引入改进的洗牌注意机制,使模型关注重要信息,提高检测精度;最后,利用置信传播聚类算法CP-Cluster对预测帧进行后处理,提高目标识别能力。以预处理后的DOTA数据集为实验对象,实验结果表明,GSC-YOLO算法的检测准确率为93.44%,检测速度为58帧/秒,模型大小为43.65MB。与基于YOLOv4的遥感图像目标检测算法相比,检测精度提高了3.93%,检测速度提高了1.87倍,模型尺寸缩小了5.62倍,更适合在资源有限的设备上部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lightweight YOLOv4 Algorithm for Remote Sensing Image Detection
Remote sensing images have the characteristics of complex backgrounds, high resolution, and small targets. Although the existing object detection algorithms can improve the detection accuracy, there are generally problems such as a large number of model parameters, high computational cost, and poor real-time performance. Aiming at the above problems, this paper designs a lightweight object detection algorithm GSC-YOLO based on YOLOv4 to achieve fast and accurate detection of remote sensing images. First, Ghostnet is used as the feature extraction network of GSC-YOLO to reduce the number of parameters and improve the detection speed; Secondly, the improved shuffle attention mechanism is introduced in the prediction head to make the model pay attention to important information and improve the detection accuracy; Finally, the Confidence Propagation Cluster algorithm CP-Cluster is used to post-process the prediction frame to improve the object recognition. Taking the preprocessed DOTA dataset as the experimental object, the experimental results show that the GSC-YOLO algorithm has a detection accuracy of 93.44%, a detection speed of 58 frames per second, and a model size of 43.65MB. Compared with the remote sensing image object detection algorithm based on YOLOv4, the detection accuracy is increased by 3.93%, the detection speed is increased by 1.87 times, and the model size is reduced by 5.62 times, which is more suitable for deployment on devices with limited resources.
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