Towards lane detection using a generative adversarial network

Tomás Emmanuel Juárez Vallejo, Sebastián Salazar Colores, Juan Manuel Ramos Arreguín
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Abstract

Traffic accidents are one of the main causes of death in Mexico, the collisions are caused mostly due to human error, therefore attempts have been made to reduce these shortcomings with driver assistance systems. This paper presents a study conducted to explore the capabilities of a Generative Adversarial Network in terms of application in lane detection on a highway, it is proposed to use a metric known as Dice index which measures the similarity between images and a pre-processing method based on color spaces, as well as a technique called Superpixels which is based on clustering. Finally, the results are compared with a neural network called LaneNet developed for the TuSimple database. The results obtained from this methodology needs to be optimized with future work, however, it opens the door to possible research with this type of network.
使用生成式对抗网络进行车道检测
在墨西哥,交通事故是造成死亡的主要原因之一,而造成碰撞的主要原因是人为失误,因此,人们试图通过驾驶辅助系统来减少这些缺陷。本文介绍了为探索生成式对抗网络在高速公路车道检测方面的应用能力而开展的一项研究,建议使用一种称为骰子指数的指标来衡量图像之间的相似性,并使用一种基于色彩空间的预处理方法和一种称为超级像素的技术(基于聚类)。最后,将结果与为 TuSimple 数据库开发的名为 LaneNet 的神经网络进行比较。从这种方法中获得的结果还需要在今后的工作中加以优化,不过,它为使用这种网络进行研究打开了一扇大门。
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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