立体图像翘曲改进路面深度估计

Nils Einecke, J. Eggert
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引用次数: 23

摘要

准确的立体深度估计,特别是路面面积的估计,是改进先进驾驶辅助系统(ADAS)的关键技术之一。一个主要问题是,道路立体深度测量的质量往往很差,这主要是由于路面缺乏纹理。特别是对于补丁匹配立体算法,估计的深度看起来不规则和凹凸不平。在本文中,我们证明了违反正面平行假设是导致深度估计不佳的主要原因,而不是路面纹理对比度低的主要原因。由于贴片匹配或块匹配立体声固有地假设一个贴片内的视差恒定,如果相机的方向几乎与地面平行,则违反了这一点,这是ADAS中典型的情况,并导致两个相机之间的外观强烈失真。为了解决这个问题,我们提出了一种补偿这种失真的方法,即根据平面地面的期望视差在其中一个立体图像上应用线性翘曲。这恢复了正面平行假设,并得到了非常好的路面深度估计。我们在KITTI立体基准上的实验证明了该方法的定量竞争力,同时保留了块匹配立体方法的速度和简单性。此外,我们的实验表明,该方法非常鲁棒,在广泛的翘曲参数设置下,路面的结果明显优于没有翘曲的标准补丁匹配立体处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stereo image warping for improved depth estimation of road surfaces
Accurate stereoscopic depth estimation, in particular of the road surface area, is one of several key technologies to improve Advanced Driver Assistance Systems (ADAS). One major problem is that the quality of the stereoscopic depth measurements of the road is often poor - which is mainly attributed to a lack of texture on the road surface. Especially for patch-matching stereo algorithms, the estimated depths look irregular and bumpy. In this paper, we show that the violation of the fronto-parallel assumption is the major reason for a bad depth estimation and not a low-contrast texture on the road surface. Since patch-matching or block-matching stereo inherently assumes a constant disparity within one patch, this is violated if the cameras are oriented almost parallel to the ground, which is typically the case in ADAS, and which leads to a strong distortion of the appearance between the two cameras. In order to tackle this problem, we propose a compensation of this distortion by applying a linear warp on one of the stereo images according to the expected disparity for the planar ground. This recovers the fronto-parallel assumption and results in a very good depth estimations of road surfaces. Our experiments on the KITTI stereo benchmark demonstrate the quantitative competitiveness of the approach, while retaining the speed and simplicity of block-matching stereo approaches. Furthermore, our experiments show that the approach is very robust, achieving results for the road surface that are significantly better than standard patch-matching stereo processing without warping for a wide range of warp parameter settings.
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