基于改进YOLOv5s的充电站内车辆起火检测
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TP391.4;TN919.82

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国网新疆电力有限公司科技项目(5230BJ230003)资助


Vehicle fire detection in charging stations based on improved YOLOv5s
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    摘要:

    针对目前对于充电站内车辆起火现象的检测精度较低、检测速度慢等问题,从实用化角度出发,提出了一种基于 YOLOv5s改进的车辆起火检测方法YOLOv5s-Fast。首先在Backbone网络中采用了全局上下文注意力机制与C3 模块进行 融合,成为一种新的特征提取的模块C3GC, 增强模型提取特征的能力,减少了计算量;其次在Neck 网络中采用了轻量级上采 样算子,能够根据输入图像进行自适应的上采样,提升了检测精度;最后引入解耦头,提高了目标检测的准确率与效率。实验 结果表明,所提出的方法 YOLOv5s-Fast与 原YOLOv5s 相比,平均精度提升了4.9%、检测帧率由原先的46 fps 提高到 59 fps,方法更加实用化。

    Abstract:

    In response to the current problems of low detection accuracy and slow detection speed of vehicle fires in charging stations,this paper proposes a vehicle fire detection method YOLOv5s-Fast based on YOLOv5s improvement from a practical perspective.This article first uses the global context attention mechanism and C3 module to fuse in the Backbone network,becoming a new feature extraction module C3GC,enhancing the models ability to extract features and reducing computational complexity.Secondly,in the Neck network,this paper adopts a lightweight upsampling operator that can adaptively upsample based on the input image,improving detection accuracy.Finally,this article introduces a decoupling head to improve the accuracy and efficiency of object detection.The experimental results show that the proposed method YOLOv5-Fast has an average accuracy improvement of 4.9%and frame rate increase from 46 fps to 59 fps compared to the original YOLOv5s,making the method more practical.

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阿斯卡尔 · 艾山,高瑞,马智轲,孙清振,刘凯波,杨春萍.基于改进YOLOv5s的充电站内车辆起火检测[J].国外电子测量技术,2024,43(10):145-152

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  • 在线发布日期: 2024-12-19
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