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Randomized or probabilistic Hough transform:eunified performance evaluation

机译:随机或概率霍夫变换:统一的性能评估

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摘要

Rapid computation of the Hough transform is necessary in very many computer vision applications. One of the major approaches for fast Hough transform computation is based on the use of a small random sample of the data set rather than the full set. Two different algorithms within this family are the randomized Hough transform (RHT) and the probabilistic Hough transform (PHT). There have been contradictory views on the relative merits and drawbacks of the RHT and the PHT. In this paper, a unified theoretical framework for analyzing the RHT and the PHT is established. The performance of the two algorithms is characterized both theoretically and experimentally. Clear guidelines for selecting the algorithm that is most suitable for a given application are provided. We show that, when considering the basic algorithms, the RHT is better suited for the analysis of high quality low noise edge images, while for the analysis of noisy low quality images the PHT should be selected.
机译:在许多计算机视觉应用中,必须快速计算霍夫变换。快速霍夫变换计算的主要方法之一是基于对数据集的随机小样本而非完整样本的使用。该家族中的两种不同算法是随机霍夫变换(RHT)和概率霍夫变换(PHT)。关于RHT和PHT的相对优缺点存在矛盾的看法。本文建立了一个统一的理论框架,用于分析RHT和PHT。两种算法的性能在理论上和实验上都有特点。提供了用于选择最适合给定应用程序的算法的明确指南。我们表明,在考虑基本算法时,RHT更适合于高质量低噪声边缘图像的分析,而对于嘈杂的低质量边缘图像则应选择PHT。

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