基于深度学习和仿射校正的电动汽车充电插座快速识别与定位

Peiyuan Zhao, Xiaopeng Chen, Shengquan Tang, Yang Xu, Mingming Yu, Peng Xu
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引用次数: 1

摘要

随着电动汽车的普及和智能化,人们对充电便利性的需求日益增长,推动了自动充电技术的发展。电动汽车充电插座的识别与定位是实现自动充电的关键。提出了一种基于深度学习和仿射校正的电动汽车充电插座快速识别与定位系统。首先,修改充电插座识别yolov4网络结构,提高识别速度。其次,采用meanshift聚类算法,有效去除噪声,提高识别成功率;第三,提出了一种基于仿射变换的充电插座像素坐标校正方法。摄像机正对充电插座时的投影变换近似为仿射变换。根据电荷孔的协方差和距离比不变性,对电荷孔的像素坐标进行校正。最后,采用PnP (Perspective-n-Point)算法定位充电插座。在不同角度、距离和光照强度下,充电插座的识别成功率为100%,单帧图像的平均识别时间为27ms。测试了不同光强和距离下的定位精度。经过仿射校正后,定位精度得到提高,最终在Rx、Ry、Rz、x、y和$z$上的平均定位误差分别为1.418度、1.660度、0.050度、0.217mm、0.215mm和0.855mm。结果表明,该方法对复杂环境下充电插座的识别和定位有较好的效果。
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Fast Recognition and Localization of Electric Vehicle Charging Socket Based on Deep Learning and Affine Correction
With the popularity and intelligence of electric vehicle, the increasing demand for charging convenience has driven the development of automatic charging technology. The recognition and localization of electric vehicle charging socket is the key to automatic charging. This study proposes a system for fast recognition and localization of electric vehicle charging socket based on deep learning and affine correction. First, modify the yolov4 network structure for recognizing the charging socket to improve the recognition speed. Second, using the meanshift clustering algorithm, the noise is effectively removed to improve the recognition success rate. Third, we propose a pixel coordinate correction method for the charging socket based on the affine transformation. The projective transformation is approximated to the affine transformation when the camera is facing the charging socket. According to the properties of covariance and distance ratio invariance, the pixel coordinates of the charging holes are corrected. Finally, the charging socket is located by the Perspective-n-Point (PnP) algorithm. With different angles, distances and light intensities, the recognition success rate of the charging socket is 100%, and the average recognition time for single-frame image is 27ms. The localization accuracy is tested under different light intensity and distances. After affine correction, the localization accuracy is improved, and the final average localization errors are 1.418 degrees, 1.660 degrees, 0.050 degrees, 0.217mm, 0.215mm and 0.855mm in Rx, Ry, Rz, x, y and $z$ respectively. The results show that our method has a good effect on the recognition and localization of the charging socket in complex environment.
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