基于Canny边缘检测器和掩码位算子的实时直线检测

Manan Doshi, Harsh Shah, Neha Katre
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引用次数: 0

摘要

自动驾驶汽车的研究已经进行了近十年,但仍不可能在世界各地使用这些汽车,其中一个主要原因是车道线检测不清晰。然而,车道检测的方法一直在不断改进,尤其是在实时检测中。对于车道检测,已经设计了各种计算机视觉技术和深度学习模型,但为了实际使用,需要找到实时有效的解决方案。我们的技术是基于实时有效的检测直道使用精明的边缘检测器,然后找到感兴趣的区域和霍夫变换。该方法将视频作为输入,并以具有斜率和标记的车道线的图像形式输出。对于有笔直车道的长高速公路,该算法可以被证明是非常有效的检测,它可以很容易地使用提供视频馈送的摄像头传感器实时应用。而且不需要对算法进行训练。因此,该系统在没有任何事先数据训练的情况下适用于大多数场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ROI based real time straight lane line detection using Canny Edge Detector and masked bitwise operator
Research for autonomous cars has now been close to a decade and still it is not possible to employ these cars everywhere around the world, for one major reason being clear lane line detection. However, there is constant discovery to improve the method of lane detection, especially in real-time. For lane detection, various computer-vision techniques and deep learning models have been devised, but for practical use it is necessary to find an efficient solution in real-time. Our technique is based on the real-time efficient detection of straight lanes using a canny edge detector followed by finding a region of interest and Hough transformation. This method takes video as an input and gives outputs in the form of images with slopes and marked lines of lanes. For long highways with straight lanes, this algorithm can prove to be extremely efficient for detection, which can be easily employed in real-time using camera sensors that provide a video feed. Furthermore, there is no requirement for training the algorithm. Hence, this system works on most of the scenarios without any prior data training.
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