Texture Analysis of Brodatz Images Using Statistical Methods | ||
Engineering and Technology Journal | ||
Article 1, Volume 29, Issue 4, March 2011, Pages 716-724 PDF (0 K) | ||
Authors | ||
Alyaa Hussain Ali; Alaa Noori Mazher | ||
Abstract | ||
Textures are one of the important features in computer vision for many applications. Most of attention has been focused on the texture features. An important approach to region description is to quantify its texture content. Although no formal definition of texture exists, intuitively this descriptor provides measures of properties such as smoothing and regularity. The principal approaches used in image processing to describe the texture of an image region are statistical, structural, and spectral. In this paper the features were constructed using different statistical methods. These are auto-correlation, edge frequency, primitive-length and law’s method; all these methods were used for texture analysis of Brodatz images. The result showed that the law’s autocorrelation method yields the best result. | ||
Keywords | ||
Image analysis; texture; feature extraction; statistical textural analysis; image Brodatz | ||
Statistics Article View: 191 PDF Download: 22 |