The Progressive Probabilistic Hough Transform
This thesis presents the Progressive Probabilistic Hough Transform (PPHT). Unlike the Probabilistic HT [46] where the Standard HT is performed on a pre-selected fraction of input points, the PPHT minimises the amount of computation needed to detect lines by exploiting the difference in the fraction...
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ndltd-bl.uk-oai-ethos.bl.uk-3262022018-04-04T03:26:54ZThe Progressive Probabilistic Hough TransformGalambos, Charles2000This thesis presents the Progressive Probabilistic Hough Transform (PPHT). Unlike the Probabilistic HT [46] where the Standard HT is performed on a pre-selected fraction of input points, the PPHT minimises the amount of computation needed to detect lines by exploiting the difference in the fraction of votes needed to reliably detect lines with different numbers of supporting points. The fraction of points used for voting need not be specified ad hoc or using a priori knowledge, as in the probabilistic HT; it is a function of the inherent complexity of data. The algorithm is ideally suited for real-time applications with a fixed amount of available processing time, since voting and line detection is interleaved. The most salient features are likely to be detected first. While retaining its robustness, experiments show PPHT has, in many circumstances, advantages over the Standard HT.621.3994Pattern recognition & image processingUniversity of Surreyhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.326202http://epubs.surrey.ac.uk/842944/Electronic Thesis or Dissertation |
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621.3994 Pattern recognition & image processing |
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621.3994 Pattern recognition & image processing Galambos, Charles The Progressive Probabilistic Hough Transform |
description |
This thesis presents the Progressive Probabilistic Hough Transform (PPHT). Unlike the Probabilistic HT [46] where the Standard HT is performed on a pre-selected fraction of input points, the PPHT minimises the amount of computation needed to detect lines by exploiting the difference in the fraction of votes needed to reliably detect lines with different numbers of supporting points. The fraction of points used for voting need not be specified ad hoc or using a priori knowledge, as in the probabilistic HT; it is a function of the inherent complexity of data. The algorithm is ideally suited for real-time applications with a fixed amount of available processing time, since voting and line detection is interleaved. The most salient features are likely to be detected first. While retaining its robustness, experiments show PPHT has, in many circumstances, advantages over the Standard HT. |
author |
Galambos, Charles |
author_facet |
Galambos, Charles |
author_sort |
Galambos, Charles |
title |
The Progressive Probabilistic Hough Transform |
title_short |
The Progressive Probabilistic Hough Transform |
title_full |
The Progressive Probabilistic Hough Transform |
title_fullStr |
The Progressive Probabilistic Hough Transform |
title_full_unstemmed |
The Progressive Probabilistic Hough Transform |
title_sort |
progressive probabilistic hough transform |
publisher |
University of Surrey |
publishDate |
2000 |
url |
http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.326202 |
work_keys_str_mv |
AT galamboscharles theprogressiveprobabilistichoughtransform AT galamboscharles progressiveprobabilistichoughtransform |
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1718619184543301632 |