一种新的基于立体视觉和两阶段动态规划的障碍物检测方法

Hajar Mohammadi Dehnavi, Sakineh Shirazi Tehrani, P. Moallem
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引用次数: 3

摘要

基于立体视觉的障碍物检测是一种利用立体匹配和视差图来检测和计算障碍物深度的算法。提出了一种基于两阶段动态规划的高纹理环境中障碍物检测方法。该算法包括预处理、障碍物检测、利用两阶段动态规划(TSDP)技术分析视差图和深度计算等几个步骤。这种方法在高度纹理化的环境中工作得很好,非常适合实际应用。立体图像的视差图不是简单地选择每个像素的局部最大相关系数值的位置,而是通过获取全局三维最大曲面在三维相关系数体中找到。采用两阶段动态规划(TSDP)技术获得三维最大曲面。自适应阈值也被应用于更好的噪声和纹理去除。实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel obstacle detection method using stereo vision and two-stage dynamic programming
Stereo vision based obstacle detection is an algorithm that aims to detect and compute obstacle depth using stereo matching and disparity map. This paper presents a novel method to detect obstacles in highly textured environments using two-stage dynamic programming. The algorithm consists of several steps including pre-processing, obstacle detection, analysis of disparity map using two-stage dynamic programming (TSDP) technique and depth computation. This method works well in highly textured environments and ideal for real applications. The disparity map for the stereo images is found in the 3D correlation coefficient volume by obtaining the global 3D maximum-surface rather than simply choosing the position that gives the local maximum correlation coefficient value for each pixel. The 3D maximum-surface is obtained using two-stage dynamic programming (TSDP) technique. An adaptive thresholding is also applied for better noise and texture removal. Experimental results show the effectiveness of the proposed method.
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