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基于改进YOLOv5的露天矿山目标检测方法
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Object Detection Method in Open-pit Mine Based on Improved YOLOv5
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    目前实地部署的商用采矿无人系统大都采用激光雷达和毫米波雷达作为感知传感器,难以准确识别障碍物的类型,尤其是较远处障碍物,不利于正确决策,从而影响无人作业的安全和整体效率.针对这些问题,本文采集了不同场景的矿山数据,并提出了一种基于YOLOv5S的图像目标检测算法.该算法主要进行了三方面改进:首先,使用不同的填充策略和空间注意模块优化采样方法,提高了模型的采样能力;其次,解耦Head预测分支,让每个分支专注自己的任务;最后,优化损失函数,耦合定位和分类,实现定位和分类任务的联合优化.试验表明,三种方法在保持实时性的前提下,可将YOLOv5S的平均精度(Average Precesion, AP)从49.9%提高至58.9%,实现白天、夜间场景下不同尺度的障碍物识别.

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    Most of the commercially deployed unmanned mining systems use LiDAR and radar as sensors, which is difficult to identify object types, especially for distant objects. This affects the subsequent correct decision-making, as well as the safety and overall efficiency of the unmanned system. To solve these problems, this paper collects mine data from different scenes and proposes an image object detection algorithm based on YOLOv5S. The algorithm mainly improves in the following three aspects. Firstly, the sampling ability of the model is optimized by using different padding strategies and spatial attention modules. Secondly, it decouples the head prediction branches and makes each branch focus on its own task. Finally, the loss function is optimized to couple localization and classi-fication so as to realize the joint optimization of localization and classification tasks. Experiments show that the above three methods can improve the AP of YOLOv5S from 49.9% to 58.9% with real-time performance and realize object recognition in daytime and night scenes with different scales.

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秦晓辉 ?,黄启东 ,常灯祥 ,刘建 ,胡满江 ,徐彪 ,谢国涛 .基于改进YOLOv5的露天矿山目标检测方法[J].湖南大学学报:自然科学版,2023,(2):23~30

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  • 在线发布日期: 2023-03-06
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