基于光流的车辆速度估计方法

Qimin Xu, Xu Li, Mingming Wu, Bin Li, Xianghui Song
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引用次数: 11

摘要

车速的获取对主动安全系统具有重要意义。本文提出了一种从图像序列中获得稀疏光流来识别车速的方法。经过图像增强后,哈里斯角点检测器可以检测到明显的角点。然后,利用Lucas-Kanade法进行光流计算,将一帧的稀疏特征集匹配到连续帧上;为了提高光流的精度,引入RANSAC算法对匹配角点进行优化。最后,通过对每个优化匹配弯道估计的所有速度求平均值来确定车速。现场试验结果表明,该方法一次执行的计算时间为59ms,速度估计相对于GPS测量的平均误差为0.121 m/s。发达的方法可以获得令人满意的性能,比如精度和输出频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A methodology of vehicle speed estimation based on optical flow
It has great significance to acquire vehicle speed for active safety system. This paper presents a methodology for identifying vehicle speed by obtaining a sparse optical flow from image sequences. Distinct corners can be detected by Harris corner detector after image enhancement. Then, Lucas-Kanade method for optical flow calculation is utilized to match the sparse feature set of one frame on the consecutive frame. In order to improve the accuracy of optical flow, RANSAC algorithm is introduced to optimize the matched corners. Finally, the vehicle speed can be determined by averaging all the speeds estimated by every optimized matched corner. The results of field test indicated that the computation time of the developed method to execute for one time was 59ms, and the mean error of speed estimation relative to the measurement of GPS was 0.121 m/s. The developed method can achieve satisfying performance, such as accuracy and output frequency.
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