A New Approach for Texture Classification Based on Average Fuzzy Left Right Texture Unit Approach

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Author(s)

Y Venkateswarlu 1,* B Sujatha 2,* JVR Murthy 3,*

1. Dept. of CSE&IT Chaitanya Instituteof Engg. &Tech.,Rajahmundry, India

2. Dept. of CSE, GIET Rajahmundry, A.P, INDIA

3. Dept of CSE, JNTU Kakinada

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2012.12.08

Received: 20 Jul. 2012 / Revised: 24 Aug. 2012 / Accepted: 9 Oct. 2012 / Published: 8 Nov. 2012

Index Terms

Texture image, Texton pattern, Classification

Abstract

Texture refers to the variation of gray level tones in a local neighbourhood. The “local” texture information for a given pixel and its neighbourhood is characterized by the corresponding texture unit. Based on the concept of texture unit, this paper describes a new statistical approach to texture analysis, based on average of the both fuzzy left and right texture unit matrix. In this method the “local” texture information for a given pixel and its neighbourhood is characterized by the corresponding fuzzy texture unit. The proposed Average Fuzzy Left and Right Texture Unit (AFLRTU) matrices overcome the disadvantage of FTU by reducing the texture unit from 2020 to 79. The proposed scheme also overcomes the disadvantage of the left and right texture unit matrix (LRTM) by considering the texture unit numbers from all the 4 different LRTM’s instead of the minimum one as in the case of LRTM. The co-occurrence features extracted from the AFLRTU matrix provide complete texture information about an image, which is useful for texture classification. Classification performance is compared with the various fuzzy based texture classification methods. The results demonstrate that superior performance is achieved by the proposed method.

Cite This Paper

Y Venkateswarlu,B Sujatha,J V R Murthy,"A New Approach for Texture Classification Based on Average Fuzzy Left Right Texture Unit Approach", IJIGSP, vol.4, no.12, pp.57-64, 2012. DOI: 10.5815/ijigsp.2012.12.08

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