Title :
A Liver Segmentation Algorithm Based on Wavelets and Machine Learning
Author :
Luo, Suhuai ; Jin, Jesse S. ; Chalup, Stephan K. ; Qian, Guoyu
Author_Institution :
Univ. of Newcastle, Newcastle, NSW, Australia
Abstract :
This paper introduces an automatic liver parenchyma segmentation algorithm that can delineate liver in abdominal CT images. The proposed approach consists of three main steps. Firstly, a texture analysis is applied onto input abdominal CT images to extract pixel level features. Here, two main categories of features, namely wavelet coefficients and Haralick texture descriptors are investigated. Secondly, support vector machines (SVM) are implemented to classify the data into pixel-wised liver or non-liver. Finally, specially combined morphological operations are designed as a post processor to remove noise and to delineate the liver. Our unique contributions to liver segmentation are twofold: one is that it has been proved through experiments that wavelet features present better classification than Haralick texture descriptors when SVMs are used; the other is that the combination of morphological operations with a pixel-wised SVM classifier can delineate volumetric liver accurately. The algorithm can be used in an advanced computer-aided liver disease diagnosis and surgical planning systems. Examples of applying the algorithm on real CT data are presented with performance validation based on the automatically segmented results and that of manually segmented ones.
Keywords :
feature extraction; image segmentation; medical image processing; support vector machines; wavelet transforms; Haralick texture descriptors; abdominal CT images; automatic liver parenchyma segmentation algorithm; computer-aided liver disease diagnosis; machine learning; pixel level feature extraction; pixel-wised SVM classifier; support vector machines; surgical planning systems; wavelet coefficients; Abdomen; Computed tomography; Image analysis; Image segmentation; Liver; Machine learning; Machine learning algorithms; Morphological operations; Support vector machine classification; Support vector machines; machine learning; morphology; segmentation; texture analysis; wavelet;
Conference_Titel :
Computational Intelligence and Natural Computing, 2009. CINC '09. International Conference on
Conference_Location :
Wuhan
Print_ISBN :
978-0-7695-3645-3
DOI :
10.1109/CINC.2009.225