2016 2nd International Conference on Control, Instrumentation, Energy &Amp; Communication (CIEC) 2016
DOI: 10.1109/ciec.2016.7513746
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Study on the potential of combined GLCM features towards medicinal plant classification

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Cited by 11 publications
(7 citation statements)
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“…By calculating different directions and window sizes of the GLCM, Pacifici et al [ 14 ] extracted multi-scale texture features from very high-resolution panchromatic imagery. Mukherjee et al [ 15 ] preprocessed and combined the texture features by extracting from the GLCM and employed a BP-MLP (backpropagation-multilayer perceptrons) neural network to classify two types of medicinal plants. Li et al [ 16 ] performed a principal component analysis of the image and employed the GLCM to extract texture features from the first two principal components.…”
Section: Introductionmentioning
confidence: 99%
“…By calculating different directions and window sizes of the GLCM, Pacifici et al [ 14 ] extracted multi-scale texture features from very high-resolution panchromatic imagery. Mukherjee et al [ 15 ] preprocessed and combined the texture features by extracting from the GLCM and employed a BP-MLP (backpropagation-multilayer perceptrons) neural network to classify two types of medicinal plants. Li et al [ 16 ] performed a principal component analysis of the image and employed the GLCM to extract texture features from the first two principal components.…”
Section: Introductionmentioning
confidence: 99%
“…the probability that i and j have similar intensity. P is the square array in which the image under examination has the number of rows and columns equals to the number of distinct gray levels of the image (Mukherjee et al 2016) [37]. For a given displacement vector the GLCM matrix consists of eight number of rows and eight number of columns.…”
Section: Gray-level Co-occurrence Matrix (Glcm) Based Feature Extractionmentioning
confidence: 99%
“…By ascertaining various bearings and window sizes of the GLCM, Pacific et al [14] removed multi-scale surface highlights from exceptionally high-goal panchromatic symbolism. Mukherjee et al [15] pre-processed and consolidated the surface highlights by extricating from the GLCM and utilized a BP-MLP (backpropagation-multilayer perceptron's) neural organization to order two sorts of therapeutic plants. Li et al [16] played out a foremost segment examination of the picture and utilized the GLCM to extricate surface highlights from the initial two head segments.…”
Section: Related Workmentioning
confidence: 99%