用标记霍夫变换对直线段进行分组

Foresti G., Murino V., Regazzoni C.S., Vernazza G.
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引用次数: 25

摘要

提出了一种对直线边进行分组的算法。该算法使用一组标记的边缘点作为输入数据,这些边缘点由一组坐标标签对表示。输出是一个图,其节点是由关系属性链接的直线段。可以很容易地考虑到共线性、收敛性和并行性。该方法的主要新颖之处在于将霍夫变换的使用扩展到符号域(即标记边缘);结果表明,边缘标记可以用于划分霍夫空间,并隔离来自不同图像区域的贡献。此外,通过使用输出图提供的关系属性,可以应用一种简单的聚焦机制(以加快与3D模型的匹配)。为了验证算法的性能,给出了包含随机生成的直线纹理的合成图像的结果。最后,以一幅复杂的道路图像为例,指出了使用所提出的表征和注意聚焦机制来解决现实问题的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grouping of Rectilinear Segments by the Labeled Hough Transform

In this paper, an algorithm for grouping edges belonging to straight lines is presented. The algorithm uses as input data a labeled set of edge points represented by a list of coordinate-label pairs. The output is a graph whose nodes are rectilinear segments linked by relational properties. Collinearity, convergence, and parallelism can be easily taken into account. The main novelty of the method lies in extending the use of the Hough transform to a symbolic domain (i.e., labeled edges); it is shown that edge labeling can be used to partition the Hough space and to isolate contributions coming from different image areas. Moreover, it is demonstrated that a simple focusing mechanism can be applied (in order to speed up the matching with 3D models) by using relational properties provided by the output graph. In order to confirm the algorithm′s performances, results on synthetic images containing randomly generated textures of straight lines are presented. Finally, a complex road image is considered to point out the advantages of using the proposed representation and the attention-focusing mechanism to solve real-world problems.

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