Abstract

This paper presents a method for feature extraction using color and texture from microscopic images of esophagus tissues obtained fr om the abnormal regions of human esophagus detected through endoscopy. This method is used for classification of Squamous Cell Carcinoma (SCC) of esophagus, namely, poorly differentiated S CC, moderately differentiated SCC, and well differentiated SCC. Three different color spaces, n amely, HSV, YC bCr, and Lab, are used for color texture analysis to test the classification of SCC of esophagus. The texture features are extracted fr om the luminance channel and the color features are ex tracted from the chrominance channels. The color and textural features are fused to characterize tex ture properties of image. The experimental results show that the classification accuracy of 100% is ob tained using YC bCr color space. Also, the proposed method is robust enough to yield 100% classificatio n rate even with small training/ testing sample in case of poorly differentiated SCC in all the three color spaces. This is a significant result, since t he number of training images is small in most cases an d also the number of testing images of a patient may be small.

Highlights

  • As more and more of today’s digital images are color images, color image segmentation and classification has become an important problem in image processing and analysis

  • In this study our focus is on microscopic images of esophagus tissue obtained from the abnormal regions of human esophagus detected through endoscopy

  • We present a novel method for feature extraction using color and textural information from microscopic images of esophagus tissues obtained from the abnormal regions of human esophagus detected through endoscopy

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Summary

INTRODUCTION

As more and more of today’s digital images are color images, color image segmentation and classification has become an important problem in image processing and analysis. Hazem Refai et al.[6] used similar approach as of Anoraganingrum[5] for cell segmentation, and P.S.Hiremath and Humnabad Iranna Y.[7] have proposed an automated cell nuclei segmentation and classification of squamous cell carcinoma from microscopic images of esophagus tissue using moment based textural features. We present a novel method for feature extraction using color and textural information from microscopic images of esophagus tissues obtained from the abnormal regions of human esophagus detected through endoscopy. This method is used for classification of Squamous Cell Carcinoma (SCC) of esophagus, namely, poorly differentiated SCC, moderately differentiated SCC, and well differentiated SCC. Differentiated tumours are those intermediate between well and poorly differentiated tumours [2]

MATERIALS AND METHOD
Color features
Haralick features
EXPERIMENTAL RESULTS
CONCLUSION
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