基于视觉的最近邻分类器非结构化道路检测

Altaf Alam, Z. Jaffery
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引用次数: 0

摘要

驾驶员如果了解周围环境中的道路和非道路区域,就可以很顺利地在道路上驾驶车辆。准确的道路检测是基于视觉的自动驾驶汽车发展的一个重要而困难的课题。因此,本研究工作提出了一种能够有效分离道路区域和非道路区域的算法。最近邻算法利用颜色信息进行训练,以区分道路和周围环境。所创建的分类器将道路区域图像分为道路区域、近背景区域和远背景区域三大类。分类器训练过程利用来自该颜色空间的颜色信息,更接近人类的颜色感知。系统性能是根据准确率、召回率和所需的训练时间来评估的。取得的结果表明系统的整体性能是值得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nearest Neighbor Classifier for Vision Based Unstructured Road Detection
Driver can drive a vehicle on road very smoothly, if he knows about the road and non road region in surrounding environments. Accurate road detection is an important and difficult task for the development of vision based autonomous land vehicle. Therefore this research work proposed an algorithm which can separate road and non road region effectively. Nearest neighbor algorithm has trained with chromatic information to differentiate the road and surrounding environments. Created classifier divide the image of road region into three classes such as road region, near background region and far background region. Classifier training process utilized chromatic information from that color space which has more resemblance with human color perception. System performance is evaluated on the basis of precision, recall and required training time. Achieved results signify that overall performance of the system is worthy.
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