基于密集立体的抗噪路面及自由空间估计

J. Suhr, H. Jung
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引用次数: 15

摘要

提出了一种基于密集立体的抗噪声路面和自由空间估计方法。提出的路面估计方法采用yz平面累积的方法,选取拟构成路面的三维点,然后基于RANSAC框架,通过分段线性函数的序贯估计找到路面。这使得我们的方法对障碍物上的三维点和无纹理道路区域的立体匹配误差不敏感。提出的自由空间估计方法是基于在自由空间边界处道路和障碍物的差值相等这一事实。该方法计算道路和障碍物表面之间的视差一致性,并利用动态规划找到具有最佳视差一致性和深度平滑性的自由空间。该方法与以往基于占用网格的方法不同,它的估计过程不依赖视差积累,因此对障碍物表面和空中物体的立体匹配误差具有鲁棒性。实验结果表明,该方法能够在各种恶劣情况下对路面和自由空间进行估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise-resilient road surface and free space estimation using dense stereo
This paper proposes a noise-resilient road surface and free space estimation method using dense stereo. The proposed road surface estimation method selects 3D points expected to compose a road surface using YZ-plane accumulation, and then finds the road surface by sequentially estimating a piece-wise linear function based on a RANSAC framework. This makes our method insensitive to 3D points on obstacles and stereo matching errors on textureless road regions. The proposed free space estimation method is based on the fact that disparities from roads and obstacles should be equal at the free space boundary. This method calculates disparity consistency between road and obstacle surfaces, and finds free space that gives the best disparity consistency and depth smoothness using dynamic programming. This approach achieves robustness against stereo matching errors on obstacle surfaces and objects located in the air since its estimation process is independent of disparity accumulation unlike previous occupancy grid-based method. The experimental results show that the proposed method is able to estimate road surfaces and free spaces in various severe situations.
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