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Performance Evaluation of Different Techniques for Texture Classification

Authors

Ashwini Dange, Mugdha Khade, Payal Kulkarni and Pooja Maknikar, VIT, India

Abstract

Texture is the term used to characterize the surface of a given object or phenomenon and is an important feature used in image processing and pattern recognition. Our aim is to compare various Texture analyzing methods and compare the results based on time complexity and accuracy of classification. The project describes texture classification using Wavelet Transform and Co occurrence Matrix. Comparison of features of a sample texture with database of different textures is performed. In wavelet transform we use the Haar, Symlets and Daubechies wavelets. We find that, thee ‘Haar’ wavelet proves to be the most efficient method in terms of performance assessment parameters mentioned above. Comparison of Haar wavelet and Co-occurrence matrix method of classification also goes in the favor of Haar. Though the time requirement is high in the later method, it gives excellent results for classification accuracy except if the image is rotated.

Keywords

Texture, wavelets, co-occurrence matrix, comparison.

Full Text  Volume 2, Number 4