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Published byΑἴαξ Παπανικολάου Modified over 6 years ago
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Textural Features for Image Classification An introduction
Carlos Andre Braile Przewodowski Filho
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Summary Image classification Textural Features
Gray-Level Co-Occurrence Matrices Statistical Features Discussion
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Image Classification 1 of 11
Source: 1 of 11
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Image Classification Feature Extraction Machine Learning Algorithm
Class/Label 2 of 11
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Textural Features Texture 3 of 11 Source: https://goo.gl/mpvb7f
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Textural Features About the paper
Authors: Robert M. Haralick and K. Shanmugam Title: Textural Features for Image Classification Year: 1973 4 of 11
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Textural Features Steps Input (Quantize) Input Range (GLCM)
Compute Transitions (Descriptor) Features Extraction 5 of 11
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Textural Features Step 1 - Quantization 6 of 11
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Step 2 - Gray-Level Co-Occurrence Matrices (GLCM)
Textural Features Gray-Level Co-Occurrence Matrices Step 2 - Gray-Level Co-Occurrence Matrices (GLCM) Table of transitions between quantized values Provide valuable statistical features 7 of 11
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Directions on centralized pixel
Textural Features Gray-Level Co-Occurrence Matrices How to Compute GLCM Directions on centralized pixel 8 of 11
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Textural Features Gray-Level Co-Occurrence Matrices
Step 2 - Compute GLCM Horizontal GLCM 9 of 11
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Step 3 - Statistical Features (After Normalization)
Textural Features Statistical Features Step 3 - Statistical Features (After Normalization) 10 of 11
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Discussion Provided features will feed a ML algorithm
Not rotation invariant 11 of 11
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