An adaptive detection approach for autonomous forest path following using stereo vision

P. Fleischmann, J. Kneip, K. Berns
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引用次数: 7

Abstract

In this paper, an image-based segmentation method to improve autonomous robot navigation in the forest is presented. The detection is supported by a filtered image generated from a stereo-based pre-processing which is a byproduct of our obstacles detection system. To cope with the large variability of forest paths, the classifier is dynamically adapted to the current situation and the segmentation relies on different image features to ensure robustness against illumination changes. Furthermore, it is summarized how the detection results are transformed to the 3D space, using a plane which is extracted from the stereo data, to be stored and maintained in a probabilistic grid map.
基于立体视觉的自主森林路径跟踪自适应检测方法
本文提出了一种基于图像分割的森林机器人自主导航方法。该检测由基于立体的预处理生成的滤波图像支持,这是我们的障碍物检测系统的副产品。为了应对森林路径的大可变性,分类器动态适应当前情况,并根据不同的图像特征进行分割,以确保对光照变化的鲁棒性。此外,总结了如何利用从立体数据中提取的平面将检测结果转换到三维空间,并在概率网格图中存储和维护。
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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