Analysis of Edge Detection for Road Lanes through Hardware Implementation

Md. Hasibul Hasan, Debashish Kr Das
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Abstract

Recent years have witnessed the rapid advancements and commercial success of autonomous vehicles due to the developments in Image Processing, Machine Learning and AI. This has attracted researchers from both academia and industry to conduct various research on driverless or self-driving cars. One of the significant aspects of self-driving vehicles is the detection of lanes through Edge Detection to correct the vehicle from inadvertent road departure. As real-time Edge detection is a fundamental step of Complex Image processing that handles lane detection and autonomous driving, it is crucial for engineers to select optimum edge detection technique. This paper, presents a practical approach to compare various edge detection algorithms to figure out the most ideal method for lane detection, considering processing time and efficiency. Though, multiple research works are available regarding edge detection method, all of these comparisons are either software simulation based or was not focused primarily on the task of lane detection. Thus, creating an absence of hardware-based practical implementation and comparison of the edge detection methods. In this work, we have discussed the working of four most commonly used edge detection technologies: Sobel, Roberts, Laplacian and Canny, followed by the results from implementing them on a scaled autonomous electric car using Raspberry Pi, Arduino and Raspberry Pi Camera Module, under similar test conditions. Furthermore, a detailed literature review is also presented in this article.
基于硬件实现的道路车道边缘检测分析
近年来,由于图像处理、机器学习和人工智能的发展,自动驾驶汽车的快速发展和商业成功。这吸引了学术界和工业界的研究人员对无人驾驶或自动驾驶汽车进行各种研究。自动驾驶汽车的一个重要方面是通过边缘检测来检测车道,以纠正车辆无意偏离道路的情况。实时边缘检测是道路检测和自动驾驶等复杂图像处理的基础步骤,因此选择最优的边缘检测技术至关重要。本文提出了一种实用的方法来比较各种边缘检测算法,以找出最理想的车道检测方法,同时考虑处理时间和效率。虽然有许多关于边缘检测方法的研究工作,但所有这些比较要么是基于软件仿真的,要么不是主要关注车道检测的任务。因此,创建了一个缺乏基于硬件的实际实现和比较的边缘检测方法。在这项工作中,我们讨论了四种最常用的边缘检测技术的工作:Sobel, Roberts, Laplacian和Canny,然后是在类似的测试条件下使用树莓派,Arduino和树莓派相机模块在缩放的自动电动汽车上实现它们的结果。此外,本文还进行了详细的文献综述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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