Weighted V-disparity approach for obstacles localization in highway environments

Nizar Fakhfakh, D. Gruyer, D. Aubert
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引用次数: 13

Abstract

The employment of embedded passive sensors in order to perceive environment for reducing the accident risk level is a tendency of intelligent vehicles research. From such sensors, one can extract useful informations which can assist the driver to identify hazardous situations. While safety improvement is a substantial requirement for driving assistance, localizing and tracking obstacles in complex road environment became an important task. One promising approach is to use the V-disparity based on the stereovision technique. It is a cumulative space estimated from the disparity image. We propose a sound framework and a complete system based on a real-time stereovision for detection, 3D localization and tracking of dynamic obstacles in highway environment. The main contribution we propose is the improvement of the V-disparity approach by extending the basic approach by merging it with a confidence term. This consists on weighting each pixel in the V-disparity space according to a confidence value which measures the probability of associating a pair of pixels. Furthermore, we propose a tracking system which is based on the belief theory. The tracking task is done on the image space which takes into account uncertainties, handles conflicts, and automatically dealt with targets appearance and disappearce as well as their spatial and temporal propogation. Extensive experiments on simulated and real dataset demonstrate the effectiveness and the robustness of the weighted V-disparity approach.
公路环境中障碍物定位的加权v -视差方法
采用嵌入式无源传感器感知环境,降低事故风险水平是智能汽车研究的一个趋势。从这些传感器中,人们可以提取有用的信息,帮助司机识别危险情况。在提高驾驶辅助安全性的同时,在复杂的道路环境中对障碍物的定位和跟踪成为一项重要的任务。一种很有前途的方法是利用基于立体视觉技术的v -视差。它是由视差图像估计的累积空间。本文提出了一种基于实时立体视觉的公路环境中动态障碍物检测、三维定位和跟踪的完善框架和系统。我们提出的主要贡献是通过将v -视差方法与置信度项合并来扩展基本方法,从而改进了v -视差方法。这包括根据度量关联一对像素的概率的置信度值对v -视差空间中的每个像素进行加权。在此基础上,提出了一种基于信念理论的跟踪系统。该跟踪任务在考虑不确定性、处理冲突、自动处理目标出现和消失及其时空传播的图像空间上完成。在模拟和真实数据集上的大量实验证明了加权v -视差方法的有效性和鲁棒性。
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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