DA-YOLOv5:基于双注意的改进YOLOv5煤化工目标检测

Yan Wang, Haijiang Zhu, Yutong Liu
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引用次数: 0

摘要

人员安全防护服的穿着检查在煤化工安全生产中具有重要的现实意义。目前煤化工企业对人员的安全检测主要采用人工检测或传统的目标检测方法。但在煤化工工厂,由于摄像机的安装位置和光照强度的变化,严重降低了服装检测精度。提出了一种基于YOLOv5的煤化工双注意力目标检测方法。在YOLOv5网络的空间金字塔池(SPP)模块和瓶颈(Bottleneck)模块中集成了高效通道注意(ECA)和金字塔分裂注意(PSA)两个注意模块。从而获得更多的全局上下文信息,弥补了全局卷积的不足,增强了提取特征和学习多尺度信息的能力。利用工作中的安全帽佩戴检测数据集(SHWD)和自制数据集验证了改进方法的有效性。与原来的YOLOv5算法相比,改进后的方法在不同阈值下的平均准确率提高了2.7%。大量对比实验进一步验证了改进方法的可行性。
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DA-YOLOv5: Improved YOLOv5 based on Dual Attention for Object Detection on Coal Chemical Industry
The wearing inspection of personnel’s safety protective clothing has important practical significance in the safety production of coal chemical plants. Manual detection or traditional target detection methods are utilized in coal chemical plants for personnel’s safety detection at the moment. However, the clothing detection accuracy is seriously reduced due to the installation position of cameras and the change of light intensity in coal chemical plants. An dual attention based on YOLOv5 is proposed on coal chemical for object detection. Two attention modules, including Efficient Channel Attention (ECA) and Pyramid Split Attention (PSA) module, are integrated into the Spatial Pyramid Pooling (SPP) module and Bottleneck module of this YOLOv5 network. Thus, more global context information is obtained to make up for the lack of global convolution, and the ability to extract features and learn multi-scale information is enhanced. Safety helmet wearing detect data set (SHWD) and self-made data set in our work are utilized to display the improved method’s effectiveness. Compared with the original YOLOv5 algorithm, the improved method achieved an average accuracy increase of 2.7% at different thresholds. Numerous comparative experiments further verify the feasibility of the improved method.
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