漫反射结构光的模糊距离变换骨架化

Sheng Huang, Guoyuan Liang, Kang Li, Can Wang, Xinyu Wu, Yachun Feng
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引用次数: 0

摘要

许多室内导航机器人使用结构光视觉测量系统(SLVMS)进行制图、定位和避障。在这些系统中,光条骨架的提取直接影响到最终测量的精度。SLVMS的一个问题是,当光投射到一些粗糙的表面时,会引起强烈的漫反射。因此,相机捕捉到的光条或多或少含有模糊部分。扩散模式和分布的不确定性对传统的骨化提取方法提出了很大的挑战。本文提出了一种基于模糊距离变换(FDT)的模糊光条骨架化算法,该算法在一定程度上克服了现有方法的缺点,能够更好地表示模糊光条的骨架。首先介绍了骨架化的主要方法和FDT理论。然后,详细阐述了图像预处理方法和扩展的FDT算法。最后,通过算例验证了算法的有效性,并分别与基于距离变换理论、Voronoi图和数字形态侵蚀原理的三种骨架化方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skeletonization using fuzzy distance transform for diffuse reflection structured light
Many indoor navigation robots use structured light vision measurement systems (SLVMS) for mapping, localization, and obstacle avoidances. In these systems, the extraction of light stripe skeleton directly affects the accuracy of the final measurements. One of the problems in SLVMS is that when the light is projected to some rough surface it will cause strong diffuse reflection. Thus the light stripe captured by the camera contains more or less fuzzy parts. The uncertainty of diffusion pattern and distribution seems to be a great challenge for conventional skeletionization extraction methods. In this paper we proposed a skeletonization algorithm based on fuzzy distance transform (FDT)for the tricky fuzzy light stripe, which, to some extent, overcomes the disadvantage of existing methods and leads to better skeleton representation. First we introduce the principal methods for skeletonization and the theory of FDT. Then, the image preprocessing method together with the extended FDT algorithm are elaborated. Finally, some example results are shown to demonstrate the effectiveness of our algorithm, followed by the comparison with three other skeletonization methods which are based on distance transform(DT) theory, Voronoi diagram and the principle of digital morphological erosion respectively.
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