Which Hough Transform?

Leavers V.F.
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引用次数: 381

Abstract

The Hough transform is recognized as being a powerful tool in shape analysis which gives good results even in the presence of noise and occlusion. Major shortcomings of the technique are excessive storage requirements and computational complexity. Solutions to these problems form the bulk of contributions to the literature concerning the Hough transform. An excellent comprehensive review of available methods up to and partially including 1988 is given by Illingworth and Kittler (Comput. Vision Graphics Image Process. 44, 1988, 87-116). In the years following this survey much new literature has been published. The present work offers an update on state of the art Hough techniques. This includes comparative studies of existing techniques, new perspectives on the theory, very many novel algorithms, parallel implementations, and additions to the task-specific hardware. Care is taken to distinguish between research that aims to further basic understanding of the technique without necessarily being computationally realistic and research that may be applicable in an industrial context. A new trend in Hough transform work, that of the probabilistic Houghs, is identified and reviewed in some detail. Attempts to link the low level perceptive processing offered by the Hough transform to high level knowledge driven processing are also included, together with the many recent successful applications appearing in the literature.

哪种霍夫变换?
霍夫变换在形状分析中是一种强有力的工具,即使在存在噪声和遮挡的情况下也能得到很好的结果。该技术的主要缺点是存储要求过高和计算复杂性。这些问题的解决方案构成了有关霍夫变换的文献的大部分贡献。Illingworth和Kittler (Comput)对1988年之前和部分包括1988年在内的可用方法进行了极好的全面回顾。视觉图形图像处理。44,1988,87-116)。在这次调查之后的几年里,发表了许多新的文献。目前的工作提供了最新的艺术霍夫技术的状态。这包括对现有技术的比较研究、对理论的新观点、非常多的新算法、并行实现以及对特定任务硬件的添加。要注意区分旨在进一步了解该技术而不一定在计算上切合实际的研究和可能适用于工业环境的研究。本文指出了霍夫变换的一个新趋势,即概率霍夫变换,并对其进行了详细的评述。还包括将霍夫变换提供的低水平感知加工与高水平知识驱动加工联系起来的尝试,以及最近在文献中出现的许多成功应用。
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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