基于灰度摄像机的智能车辆跟踪图像处理与控制

Jian Zhang, Yufan Liu, Ao Li, Jinshan Zeng, Hongtu Xie
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摘要

为了实现智能车辆对各种复杂道路的快速、稳定的识别和自动跟踪,本文以全国大学生智能汽车大赛为背景,提出了基于CMOS灰度摄像头的图像处理和级联PID转向与速度控制算法。首先,由灰度摄像机获取轨道的灰度图像;然后,采用Otsu方法对图像进行二值化,提取黑边界导线信息;为了提高比赛速度,对图像中的各种赛道元素进行识别和分类,计算智能车实际中心线位置与理想中心线位置之间的偏差。第三,采用离散增量级联PID控制算法计算偏差对应的脉宽调制(PWM)信号。并通过驱动电路将PWM信号作用于转向电机,驱动智能车辆始终沿中间道路行驶,从而达到自动跟踪引导的目的。实验证明,本设计的智能车辆能够快速、稳定地识别复杂道路,准确地完成自动跟踪,获得较高的速度性能。
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Image Processing and Control of Tracking Intelligent Vehicle Based on Grayscale Camera
In order to realize the rapid and stable recognition and automatic tracking of various complex roads by the intelligent vehicles, this paper proposes image processing and cascade Proportion Integration Differentiation (PID) steering and speed control algorithms based on CMOS grayscale cameras in the context of the national college student intelligent vehicle competition. First, the grayscale image of the track is acquired by the grayscale camera. Then, the Otsu method is used to binarize the image, and the information of black boundary guide line is extracted. In order to improve the speed of the race, various track elements in the image are identified and classified, and the deviation between the actual centerline position and the ideal centerline position of the intelligent vehicle is calculated. Third, the discrete incremental cascade PID control algorithm is used to calculate the pulse width modulation (PWM) signal corresponding to the deviation. And the PWM signal is acted on the steering motor through the driving circuit, driving the intelligent vehicle to always drive along the middle road, so as to achieve the purpose of automatic tracking guidance. Experiments prove that the intelligent vehicle of this design can identify complex roads quickly and in a stable way, accurately complete automatic tracking, and obtain higher speed performance.
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