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Texture classification using fuzzy uncertainty texture spectrum
Neurocomputing, 1998Abstract A new method using fuzzy uncertainty, which measures the uncertainty of the uniform surface in an image, is proposed for texture analysis. A grey-scale image can be transformed into a fuzzy image by the uncertainty definition. The distribution of the membership in a measured fuzzy image, denoted by the fuzzy uncertainty texture spectrum ...
Yih-Gong Lee +2 more
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Texture classification using color local texture features
2013 International Conference on Signal Processing , Image Processing & Pattern Recognition, 2013This Paper proposes a new approach to extract the features of a color texture image for the purpose of texture classification. Four feature sets are involved. Dominant Neighbourhood Structure (DNS) is the new feature set that has been used for color texture image classification.
S. Arivazhagan, R. Benitta
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Combined Geometric-Texture Image Classification
2005In this paper, we propose a framework to carry out supervised classification of images containing both textured and non textured areas. Our approach is based on active contours. Using a decomposition algorithm inspired by the recent work of Y. Meyer, we can get two channels from the original image to classify: one containing the geometrical information,
Aujol, Jean-François, Chan, Tony
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Modified Textural Soil Classification
2020In this world, different types of soils are present. These soils are consisting of different types of soil particles. The engineering properties of soil are defined on the basis of particles size and consistency limits. Soil was classified into different divisions and subdivisions by different organizations.
Jitendra Khatti +3 more
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Hyperspectral soil texture classification
IEEE Workshop on Advances in Techniques for Analysis of Remotely Sensed Data, 2003, 2004A soil texture classification system is developed and exploited in the hyperspectral domain. The hyperspectral signatures of three different pure soil textures, i.e., sand, silt and clay, combined with a linear mixture model, are used to generate signals representing different types of soil textures.
null Xudong Zhang +2 more
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Measuring texture classification algorithms
Pattern Recognition Letters, 1997Summary: The texture analysis literature lacks a widely accepted method for comparing algorithms. This paper proposes a framework for comparing texture classification algorithms. The framework consists of several suites of texture classification problems, a standard functionality for algorithms, and a method for computing a score for each algorithm. We
Smith G., Burns I.
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Bayesian Texture Classification
2003Pictures of natural scenes usually are composed of several types of textures. Texture classification is the art of identifying them and marking them by labels. Texture classification has many important applications, for example in quality control or remote sensing.
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Texture Image Classification Using Effective Texture Descriptors
Journal of Texture StudiesABSTRACT Image texture refers to the visual patterns, variations, or configurations of pixel intensities within an image. Classifying textures is a fundamental goal in computer vision, applicable in areas ranging from medical picture analysis to distant sensing.
K. Gopalakrishnan +3 more
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Review of Texture Descriptors for Texture Classification
2017Texture classification is a process of distinguishing or classifying different textures into separate classes. Finding an efficient texture descriptor is a vital step for performing accurate texture classification. The research area of texture classification is widely investigated in several computer vision and pattern recognition problems.
Philomina Simon, V. Uma
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Texture feature coding method for texture classification
Optical Engineering, 2003We present a new texture analysis method, namely a texture feature coding method (TFCM), for classification of the Brodatz's natural textures. The TFCM is a coding scheme that transforms an image into a feature image, in which each pixel is encoded by TFCM into a texture feature number (TFN) that represents a certain type of local texture.
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