2011
DOI: 10.1117/12.890888
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Unsupervised segmentation based on Von Mises circular distributions for orientation estimation in textured images

Abstract: In this paper, which deals with textured images and more particularly with directional textures, a new parametric technique is proposed to estimate the orientation eld of textures. It consists of segmenting the image into regions with homogeneous orientations, and estimating the orientation inside each of these regions. This allows us to maximize the size of the samples used to estimate the orientation without being corrupted by the presence of boundaries between regions. For that purpose, the local -hence noi… Show more

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Cited by 2 publications
(2 citation statements)
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“…Apart from testing three main novelties as above, we still compare the proposed approach to other new texture segmentation methods, although these researches are not aiming at jacquard fabric images. One of them, as described by Costa et al, 23 is based on von Mises circular distributions. The second method in Lehman 24 is 1D hidden Markov models (1D HMMs).…”
Section: Resultsmentioning
confidence: 99%
“…Apart from testing three main novelties as above, we still compare the proposed approach to other new texture segmentation methods, although these researches are not aiming at jacquard fabric images. One of them, as described by Costa et al, 23 is based on von Mises circular distributions. The second method in Lehman 24 is 1D hidden Markov models (1D HMMs).…”
Section: Resultsmentioning
confidence: 99%
“…This paper addresses the complex problem of textured image segmentation that is a subject of importance in various applications [1,2] (see also [3,4]). In practice, observations are often affected by blur (due to finite resolution of observation systems) and by noise (due to various sources of error).…”
Section: Introduction: Motivation and State Of The Artmentioning
confidence: 99%