Abstract

Texture recognition is used in various pattern recognition applications and texture classification that possess a characteristic appearance. This research paper aims to provide an improved scheme to provide enhanced classification decisions and to decrease processing time significantly. This research studied the discriminating characteristics of textures by extracting them from various texture images using discrete Haar transform (DHT) and discrete Fourier transform DFT. Two sets of features are proposed; the first set was extracted using the traditional DFT, while the second used DHT. The features from the Fourier domain are calculated using the radial distribution of spectra, while for those extracted from Haar Wavelet the statistical distribution of various relative moments was adopted. Four types of Euclidean distance metrics were used for classification decisionpurposes. The considered method was applied on 475 classes of textures belonged to 32 sets from Salzburg Texture Image Database, each set holding 16 images per class, so the a total of 7600 images were tested. Each image was separated into seven bands of color component (i.e., red, green, blue, and gray….). Concepts of average and standard deviation were calculated to determine the inter/intra scatter analysis for each feature to find out the best discriminating features that can be used.The final result of DHT was 99.98 for the testing sets and 99.71 for the training sets, while the final result of DFT was 98.63 for the testing sets and 93.74 for the training sets.

Highlights

  • Texture is the expression used to describe the surface of a given object or region, and it is one of the main features used in image processing and pattern recognition; it refers to the shape, structure and arrangement of the parts of things within the image

  • The used sets are loaded from Salzburg Texture Image Database (STex); it is a large collection of color texture images that have been captured around Salzburg, Austria

  • Table- 9 represents the final result of discrete Fourier transform (DFT) while Tables- 10-16 represent the results of Discreet Haar wavelets (DHW)

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Summary

Introduction

Texture is the expression used to describe the surface of a given object or region, and it is one of the main features used in image processing and pattern recognition; it refers to the shape, structure and arrangement of the parts of things within the image. Researchers studied variant types of features for texture classification and pattern recognition. They used the block division and multiresolution ideas in this approach Their results suggested that the wavelet transform and uniform local binary patterns (ULBPs) were valuable methods to reveal the texture features of ear images. [7] Proposed a system and demonstrated a promising and faster retrieval method to extract the texture and colour features by applying wavelet transformation and colour histogram. The combination of these features is robust to the scaling and translation of objects in an image.

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