Abstract

BackgroundColour image segmentation is fundamental and critical for quantitative histological image analysis. The complexity of the microstructure and the approach to make histological images results in variable staining and illumination variations. And ultra-high resolution of histological images makes it is hard for image segmentation methods to achieve high-quality segmentation results and low computation cost at the same time.MethodsMean Shift clustering approach is employed for histological image segmentation. Colour histological image is transformed from RGB to CIE L*a*b* colour space, and then a* and b* components are extracted as features. To speed up Mean Shift algorithm, the probability density distribution is estimated in feature space in advance and then the Mean Shift scheme is used to separate the feature space into different regions by finding the density peaks quickly. And an integral scheme is employed to reduce the computation cost of mean shift vector significantly. Finally image pixels are classified into clusters according to which region their features fall into in feature space.ResultsNumerical experiments are carried on liver fibrosis histological images. Experimental results demonstrate that Mean Shift clustering achieves more accurate results than k-means but is computational expensive, and the speed of the improved Mean Shift method is comparable to that of k-means while the accuracy of segmentation results is the same as that achieved using standard Mean Shift method.ConclusionsAn effective and reliable histological image segmentation approach is proposed in this paper. It employs improved Mean Shift clustering, which is speed up by using probability density distribution estimation and the integral scheme.

Highlights

  • Colour image segmentation is fundamental and critical for quantitative histological image analysis

  • We have developed a histological image segmentation approach by employing improved Mean Shift clustering

  • Colour histological image is transformed into CIE L*a*b* colour space, and a* and b* components are extracted as features for clustering

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Summary

Introduction

Colour image segmentation is fundamental and critical for quantitative histological image analysis. With the increasing demands of quantitative analysis, digital image processing techniques attract more and more attention in histopathology [1,2]. To identify different tissues or cellular components, histological sections are segmented according to colour, shape or texture features after acquired with high-resolution digital camera, and classified by commonly employing supervised methods [3,4,5,6]. The size of acquired histological image is usually very large for better investigation of microstructures It makes most of existing image segmentation algorithms, such as Mean Shift, very time-consuming and hard to be used in practice. Mean Shift may achieve better segmentation results than model-based clustering schemes when it is used as a histological image segmentation method

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