DocumentCode :
2161599
Title :
An efficient wavelet based approach for texture classification with feature analysis
Author :
Shaikhji Zaid, M. ; Jagadish Jadhav, R. ; Deore, P.J.
Author_Institution :
Dept. of Electron. & Telecommun., R.C. Patel Inst. of Technol., Shirpur, India
fYear :
2013
fDate :
22-23 Feb. 2013
Firstpage :
1149
Lastpage :
1153
Abstract :
Textures play important roles in many image processing applications, since images of real objects often do not exhibit regions of uniform and smooth intensities, but variations of intensities with certain repeated structures or patterns, referred to as visual texture. The textural patterns or structures mainly result from the physical surface properties, such as roughness or oriented structured of a tactile quality. It is widely recognized that a visual texture, which can easily perceive, is very difficult to define. The difficulty results mainly from the fact that different people can define textures in applications dependent ways or with different perceptual motivations, and they are not generally agreed upon single definition of texture [1]. The development in multi-resolution analysis such as Gabor and wavelet transform help to overcome this difficulty [2]. In this paper it describes that, texture classification using Wavelet Statistical Features (WSF), Wavelet Co-occurrence Features (WCF) and to combine both the features namely Wavelet Statistical Features and Wavelet Co-occurrence Features of wavelet transformed images with different feature databases can results better [2]. And further the Features are analyzed introducing Noise (Gaussian, Poisson, Salt n Paper and Speckle) in the image to be classified. The result suggests that the efficiency of Wavelet Statistical Feature is higher in classification even in noise as compared to other Features efficiency. Wavelet based decomposing is used to classify the image with code prepared in MATLAB.
Keywords :
Gaussian noise; feature extraction; image classification; image resolution; image texture; mathematics computing; statistical analysis; wavelet transforms; Gaussian noise; MATLAB; Poisson noise; WCF; WSF; feature analysis; image classification; image processing applications; intensity variation; multiresolution analysis; perceptual motivations; physical surface properties; salt-pepper noise; speckle noise; textural patterns; textural structures; texture classification; visual texture; wavelet based approach; wavelet based decompostion; wavelet co-occurrence features; wavelet statistical features; Databases; Discrete wavelet transforms; Feature extraction; Noise; Speckle; Support vector machine classification; Gaussian noise; Poisson noise; Salt n Paper noise; Speckle noise; Texture Classification; Wavelet; Wavelet Co-occurrence Features (WCF); Wavelet Statistical Features (WSF);
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Advance Computing Conference (IACC), 2013 IEEE 3rd International
Conference_Location :
Ghaziabad
Print_ISBN :
978-1-4673-4527-9
Type :
conf
DOI :
10.1109/IAdCC.2013.6514389
Filename :
6514389
Link To Document :
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