Title :
Texture features for classification of ultrasonic liver images
Author :
Wu, Chung-Ming ; Chen, Yung-Chang ; Hsieh, Kai-Sheng
Author_Institution :
Dept. of Electr. Eng. Nat. Tsing Hua Univ., Hsinchu, Taiwan
fDate :
6/1/1992 12:00:00 AM
Abstract :
The classification of ultrasonic liver images is studied, making use of the spatial gray-level dependence matrices, the Fourier power spectrum, the gray-level difference statistics, and the Laws texture energy measures. Features of these types are used to classify three sets of ultrasonic liver images-normal liver, hepatoma, and cirrhosis (30 samples each). The Bayes classifier and the Hotelling trace criterion are employed to evaluate the performance of these features. From the viewpoint of speed and accuracy of classification, it is found that these features do not perform well enough. Hence, a new texture feature set (multiresolution fractal features) based on multiple resolution imagery and the fractional Brownian motion model is proposed to detect diffuse liver diseases quickly and accurately. Fractal dimensions estimated at various resolutions of the image are gathered to form the feature vector. Texture information contained in the proposed feature vector is discussed. A real-time implementation of the algorithm produces about 90% correct classification for the three sets of ultrasonic liver images
Keywords :
acoustic imaging; biomedical ultrasonics; liver; Bayes classifier; Fourier power spectrum; Hotelling trace criterion; Laws texture energy measures; algorithm; cirrhosis; diffuse liver diseases detection; feature vector; fractional Brownian motion; gray-level difference statistics; hepatoma; medical diagnostic imaging; multiple resolution imagery; normal liver; spatial gray-level dependence matrices; texture features; ultrasonic liver images classification; Brownian motion; Energy measurement; Energy resolution; Fractals; Image resolution; Liver; Power measurement; Spatial resolution; Statistics; Ultrasonic variables measurement;
Journal_Title :
Medical Imaging, IEEE Transactions on