A Comprehensive Review of Image Line Segment Detection and Description: Taxonomies, Comparisons, and Challenges.

Xinyu Lin, Yingjie Zhou, Yipeng Liu, Ce Zhu
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Abstract

An image line segment is a fundamental low-level visual feature that delineates straight, slender, and uninterrupted portions of objects and scenarios within images. Detection and description of line segments lay the basis for numerous vision tasks. Although many studies have aimed to detect and describe line segments, a comprehensive review is lacking, obstructing their progress. This study fills the gap by comprehensively reviewing related studies on detecting and describing two-dimensional image line segments to provide researchers with an overall picture and deep understanding. Based on their mechanisms, two taxonomies for line segment detection and description are presented to introduce, analyze, and summarize these studies, facilitating researchers to learn about them quickly and extensively. The key issues, core ideas, advantages and disadvantages of existing methods, and their potential applications for each category are analyzed and summarized, including previously unknown findings. The challenges in existing methods and corresponding insights for potentially solving them are also provided to inspire researchers. In addition, some state-of-the-art line segment detection and description algorithms are evaluated without bias, and the evaluation code will be publicly available. The theoretical analysis, coupled with the experimental results, can guide researchers in selecting the best method for their intended vision applications. Finally, this study provides insights for potentially interesting future research directions to attract more attention from researchers to this field.

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图像线段检测与描述综合评述:分类、比较与挑战
图像线段是一种基本的低级视觉特征,它可以在图像中划分出物体和场景中笔直、细长和不间断的部分。线段的检测和描述为许多视觉任务奠定了基础。尽管许多研究都以检测和描述线段为目标,但缺乏全面的综述,阻碍了研究的进展。本研究填补了这一空白,全面综述了二维图像线段检测与描述的相关研究,为研究人员提供了一个全面的视角和深刻的理解。根据线段检测和描述的机理,提出了两个线段检测和描述的分类标准,对这些研究进行了介绍、分析和总结,便于研究人员快速、广泛地了解这些研究。分析和总结了每个分类的关键问题、核心思想、现有方法的优缺点及其潜在应用,包括以前未知的发现。同时,还提供了现有方法面临的挑战和可能解决这些挑战的相应见解,以启发研究人员。此外,还对一些最先进的线段检测和描述算法进行了不带偏见的评估,并将公开评估代码。理论分析与实验结果相结合,可以指导研究人员为其预期的视觉应用选择最佳方法。最后,本研究为未来可能有趣的研究方向提供了见解,以吸引更多研究人员关注这一领域。
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