Abstract

Local Binary Patterns (LBPs) have been highly used in texture classification for their robustness, their ease of implementation and their low computational cost. Initially designed to deal with gray level images, several methods based on them in the literature have been proposed for images having more than one spectral band. To achieve it, whether assumption using color information or combining spectral band two by two was done. Those methods use micro structures as texture features. In this paper, our goal was to design texture features which are relevant to color and multicomponent texture analysis without any assumption. Based on methods designed for gray scale images, we find the combination of micro and macro structures efficient for multispectral texture analysis. The experimentations were carried out on color images from Outex databases and multicomponent images from red blood cells captured using a multispectral microscope equipped with 13 LEDs ranging from 375 nm to 940 nm. In all achieved experimentations, our proposal presents the best classification scores compared to common multicomponent LBP methods. 99.81%, 100.00%, 99.07% and 97.67% are maximum scores obtained with our strategy respectively applied to images subject to rotation, blur, illumination variation and the multicomponent ones.

Highlights

  • Texture is an important image investigation approach efficient for content analysis and feature extraction

  • Equation (17) combines texture features of equation (16) and the ones obtained by computing Local Binary Patterns (LBPs) operator of each pair of spectral bands

  • We address new method based on Local Binary Patterns’ principle for color and multicomponent texture analysis purpose

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Summary

Introduction

Texture is an important image investigation approach efficient for content analysis and feature extraction. It describes the spatial arrangement between image pixels. Its analysis in content-based images analysis is used in many research domains including medical image analysis [1], content-based image retrieval [2], remote sensing imagery [3], object recognition [4], object classification [5]. Images content analysis based on texture is a complex task to achieve. Each category is suitable for a type of images depending on their nature, how they have been acquired or the goal the user wants to achieve. We are interested in texture classification which is an application of texture analysis aiming to label images basing on their properties

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