Оценка методов скелетизации двумерных бинарных изображений

Shadi Abudalfa
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Abstract

In the realm of modern image processing, the emphasis often lies on engineering-based approaches rather than scientific solutions to address diverse practical problems. One prevalent task within this domain involves the skeletonization of binary images. Skeletonization is a powerful process for extracting the skeleton of objects located in digital binary images. This process is widely employed for automating many tasks in numerous fields such as pattern recognition, robot vision, animation, and image analysis. The existing skeletonization techniques are mainly based on three approaches: boundary erosion, distance coding, and Voronoi diagram for identifying an approximate skeleton. In this work, we present an empirical evaluation of a set of well-known techniques and report our findings. We specifically deal with computing skeletons in 2d binary images by selecting different approaches and evaluating their effectiveness. Visual evaluation is the primary method used to showcase the performance of selected skeletonization algorithms. Due to the absence of a definitive definition for the "true" skeleton of a digital object, accurately assessing the effectiveness of skeletonization algorithms poses a significant research challenge. Although researchers have attempted quantitative assessments, these measures are typically customized for specific domains and may not be suitable for our current work. The experimental results shown in this work illustrate the performance of the three main approaches in applying skeletonization with respect to different perspectives.
二维二进制图像骨架化方法评估
在现代图像处理领域,重点往往在于基于工程的方法,而不是科学的解决方案,以解决各种实际问题。这个领域中一个普遍的任务涉及二值图像的骨架化。骨架化是一种强大的提取数字二值图像中物体骨架的方法。该过程被广泛应用于模式识别、机器人视觉、动画和图像分析等许多领域的自动化任务。现有的骨架化技术主要基于边界侵蚀、距离编码和Voronoi图三种方法来识别近似骨架。在这项工作中,我们提出了一套众所周知的技术的实证评估,并报告了我们的发现。我们通过选择不同的方法并评估其有效性来具体处理二维二值图像中的计算骨架。视觉评价是用来展示所选骨架化算法性能的主要方法。由于缺乏对数字对象的“真实”骨架的明确定义,准确评估骨架化算法的有效性构成了一个重大的研究挑战。尽管研究人员已经尝试了定量评估,但这些措施通常是针对特定领域定制的,可能不适合我们当前的工作。在这项工作中显示的实验结果说明了三种主要方法的性能在应用骨化相对于不同的观点。
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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