Three dimensional texture computation of Gray Level Co-occurrence Tensor in hyperspectral image cubes

Jhe Syuan Lai, Fuan Tsai

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

1 Scopus citations

Abstract

The traditional gray level co-occurrence matrix (GLCM) is in two-dimensional form. Because hyperspectral imagery in the feature space has the characteristic of volumetric data, it has a great potential for three-dimensional texture analysis. Previous studies have successfully extended traditional 2D GLCM to a 3D form (Gray Level Co-occurrence Matrix for Volumetric Data, GLCMVD) for extracting features in hyperspectral image cubes by considering pixel-pairs in 3D spatial relationship. However, the core of texture computation was still in a 2D texture matrix form. To truly explore volumetric texture characteristics, this study further extended traditional GLCM to a tensor form (Gray Level Co-occurrence Tensor, GLCT) that uses three voxels to extract subtle features from image cubes. For classification applications, the kernel size for texture computation has a significant impact to the results. This study developed an algorithm based on semi-variance and separability analysis to identity appropriate kernel sizes for three-dimensional computation. Experimental results demonstrate that GLCT performs better in classification than GLCMVD for the texture analysis of hyperspectral image cubes. In addition, the developed algorithm can obtain more reasonable kernel sizes for three-dimensional computation of hyperspectral remote sensing datasets.

Original languageEnglish
Title of host publication29th Asian Conference on Remote Sensing 2008, ACRS 2008
Pages1086-1091
Number of pages6
StatePublished - 2008
Event29th Asian Conference on Remote Sensing 2008, ACRS 2008 - Colombo, Sri Lanka
Duration: 10 Nov 200814 Nov 2008

Publication series

Name29th Asian Conference on Remote Sensing 2008, ACRS 2008
Volume2

Conference

Conference29th Asian Conference on Remote Sensing 2008, ACRS 2008
Country/TerritorySri Lanka
CityColombo
Period10/11/0814/11/08

Keywords

  • 3D Texture Computation
  • GLCM
  • Hyperspectral
  • Semi-Variance Analysis
  • Separability Analysis

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