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Carotid Ultrasound Plaque Classification Using a Combination of Region of Interest, Discrete Wavelet Transform and Neural Networks


Affiliations
1 Mahavidyalayam Arts and Science College for Women, Ulundurpet, Tamil Nadu, India
2 Department of Computer Science and Applications, Tiruvalluvar University College for Arts and Science, Thiruvennainallur, India
     

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Carotid ultrasound plaque classification using a combination of .region of interest, discrete wavelet transform and neural networks are used to classify the symptomatic or asymptomatic ultrasound plaque images. The system involves three steps: 1) the preprocessing step using the ROI technique. 2) The method Feature extraction is done by averaging values and discrete wavelet transform.3) Classification using a Neural Network. In this work Multilayer feed-forward neural network is adapted for training and testing the images. The accuracy of 70% is obtained in proposed work using neural network classifier.

Keywords

Atherosclerosis, Carotid Ultrasound, Classification, Discrete Wavelet Transform (DWT), Region of Interest (ROI) Technique, Neural Network.
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  • Carotid Ultrasound Plaque Classification Using a Combination of Region of Interest, Discrete Wavelet Transform and Neural Networks

Abstract Views: 241  |  PDF Views: 4

Authors

P. Aiswariya
Mahavidyalayam Arts and Science College for Women, Ulundurpet, Tamil Nadu, India
C. Bhuvaneswari
Department of Computer Science and Applications, Tiruvalluvar University College for Arts and Science, Thiruvennainallur, India

Abstract


Carotid ultrasound plaque classification using a combination of .region of interest, discrete wavelet transform and neural networks are used to classify the symptomatic or asymptomatic ultrasound plaque images. The system involves three steps: 1) the preprocessing step using the ROI technique. 2) The method Feature extraction is done by averaging values and discrete wavelet transform.3) Classification using a Neural Network. In this work Multilayer feed-forward neural network is adapted for training and testing the images. The accuracy of 70% is obtained in proposed work using neural network classifier.

Keywords


Atherosclerosis, Carotid Ultrasound, Classification, Discrete Wavelet Transform (DWT), Region of Interest (ROI) Technique, Neural Network.