2007
DOI: 10.1093/ietisy/e90-d.4.787
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Color Texture Segmentation Using Color Transform and Feature Distributions

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Cited by 6 publications
(5 citation statements)
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“…In our algorithm, the user does not need to provide precisely segmented regions, instead, the boundary checking algorithm are used to support segmented regions. For region-based image retrieval, we adopt the unsupervised texture segmentation method [30,33]. In [30], Ojala et al use the nonparametric log-likelihood-ratio test and the G statistic to compare the similarity of feature distributions.…”
Section: Image Segmentation and Region Representation 41 Image Segmmentioning
confidence: 99%
See 1 more Smart Citation
“…In our algorithm, the user does not need to provide precisely segmented regions, instead, the boundary checking algorithm are used to support segmented regions. For region-based image retrieval, we adopt the unsupervised texture segmentation method [30,33]. In [30], Ojala et al use the nonparametric log-likelihood-ratio test and the G statistic to compare the similarity of feature distributions.…”
Section: Image Segmentation and Region Representation 41 Image Segmmentioning
confidence: 99%
“…Based on this method, a boundary checking algorithm [34] has been proposed to improve the segmentation accuracy and computational cost. For more details about our segmentation algorithm, we refer the reader to [33]. In this Chapter, the weighted distribution of global information CIH (color index histogram) and local information LBP (local binary pattern) are applied to measure the similarity of two adjacent regions.…”
Section: Image Segmentation and Region Representation 41 Image Segmmentioning
confidence: 99%
“…The process of color segmentation consists of color representation, color feature extraction, similarity measurement and classification. In color representation, the RGB (Red, Green and Blue) model, which expresses color as a mixture of red, green and blue three color components, is often used to depict the color information of an image (Bascle et al, 2007;Weng et al, 2007). By using a transformation, the secondary colors, which are CMY (Cyan, Magenta and Yellow) or RG-GB-BR, can be obtained and used as an alternative color model (Wang et al, 2007).…”
Section: Introductionmentioning
confidence: 99%
“…Ilea and Whelan (2008) developed an unsupervised image segmentation method (referred to as CTex) that is based on the adaptive inclusion of colour and texture in the process of data partition. A burn colour image segmentation and classification system based on colour and texture feature information was proposed by Acha et al (2005) and Weng et al (2007) used weighted distributions of colour index histogram and LBP to measure the similarity of adjacent texture regions during the segmentation process. A multichannel segmentation algorithm is proposed which uses both grey‐level intensity and texture‐based features for region extraction.…”
Section: Introductionmentioning
confidence: 99%