Visual ego motion estimation in urban environments based on U-V disparity

B. Musleh, David Martín, A. D. L. Escalera, J. M. Armingol
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引用次数: 17

Abstract

The movement of the vehicle provides useful information for different applications, such as driver assistant systems or autonomous vehicles. This information can be known by means of a GPS, but there are some areas in urban environments where the signal is not available, as tunnels or streets with high buildings. A new method for 2D visual ego motion estimation in urban environments is presented in this paper. This method is based on a stereo-vision system where the feature road points are tracked frame to frame in order to estimate the movement of the vehicle, avoiding outliers from dynamic obstacles. The road profile is used to obtain the world coordinates of the feature points as a unique function of its left image coordinates. For these reasons it is only necessary to search feature points in the lower third of the left images. Moreover, the Kalman filter is used as a solution for filtering problem. That is, in some cases, it is necessary to filter raw data due to noise acquisition of time series. The results of the visual ego motion are compared with raw data from a GPS.
基于U-V视差的城市视觉自我运动估计
车辆的运动为不同的应用提供了有用的信息,比如驾驶辅助系统或自动驾驶汽车。这些信息可以通过GPS获得,但在城市环境中有一些区域信号不可用,如隧道或高层建筑的街道。提出了一种城市环境下二维视觉自我运动估计的新方法。该方法基于立体视觉系统,通过逐帧跟踪特征道路点来估计车辆的运动,避免动态障碍物的异常值。使用道路轮廓来获得特征点的世界坐标,作为其左侧图像坐标的唯一函数。由于这些原因,只需要搜索左侧图像的下三分之一的特征点。并利用卡尔曼滤波作为滤波问题的解决方案。也就是说,在某些情况下,由于时间序列的噪声采集,需要对原始数据进行滤波。视觉自我运动的结果与GPS的原始数据进行了比较。
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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