UGV导航的可遍历性分类:补丁和超像素表示的比较

Dongshin Kim, Sangmin Oh, James M. Rehg
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引用次数: 86

摘要

在复杂的室外地形中,机器人导航得益于精确的可穿越性分类。基于外观的可穿越性估计可以提供远程传感能力,补充了传统的立体或激光雷达测距。在可遍历性分类的标准方法中,每个图像帧被分解成补丁或像素以供进一步分析。然而,在像素级的分类容易产生噪声,并且使识别同质区域的任务变得复杂。固定大小的patch可以聚集像素信息,从而获得更好的噪声特性,但它们可能跨越多个不同的图像区域,这可能会降低分类性能,并且使薄障碍物难以检测。我们解决了使用超像素作为可遍历性估计的视觉原语。超像素是通过对图像的过度分割得到的,它们在尊重自然地形边界的情况下聚集了视觉上均匀的像素。我们的研究表明,超像素在分类精度上优于斑块,在复杂地形环境下可以更有效地导航。我们的实验结果包括研究补丁和超像素大小对分类精度的影响。我们证明了超像素可以在真实的机器人上以足够的帧速率在线计算,以支持远程感知和规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traversability classification for UGV navigation: a comparison of patch and superpixel representations
Robot navigation in complex outdoor terrain can benefit from accurate traversability classification. Appearance- based traversability estimation can provide a long-range sensing capability which complements the traditional use of stereo or LIDAR ranging. In the standard approach to traversability classification, each image frame is decomposed into patches or pixels for further analysis. However, classification at the pixel level is prone to noise and complicates the task of identifying homogeneous regions for navigation. Fixed-sized patches aggregate pixel information, resulting in better noise properties, but they can span multiple distinct image regions, which can degrade the classification performance and make thin obstacles difficult to detect. We address the use of superpixels as the visual primitives for traversability estimation. Superpixels are obtained from an over-segmentation of the image and they aggregate visually homogeneous pixels while respecting natural terrain boundaries. We show that superpixels are superior to patches in classification accuracy and result in more effective navigation in complex terrain environments. Our experimental results include a study of the effect of patch and superpixel size on classification accuracy. We demonstrate that superpixels can be computed on-line on a real robot at a sufficient frame rate to support long-range sensing and planning.
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