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Main Authors: Yu, Su-Xi, He, Jing-Yuan, Wang, Yi, Cai, Yu-Jiao, Yang, Jun, Lin, Bo, Yang, Wei-Bin, Ruan, Jian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.05300
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author Yu, Su-Xi
He, Jing-Yuan
Wang, Yi
Cai, Yu-Jiao
Yang, Jun
Lin, Bo
Yang, Wei-Bin
Ruan, Jian
author_facet Yu, Su-Xi
He, Jing-Yuan
Wang, Yi
Cai, Yu-Jiao
Yang, Jun
Lin, Bo
Yang, Wei-Bin
Ruan, Jian
contents Graves' disease is a common condition that is diagnosed clinically by determining the smoothness of the thyroid texture and its morphology in ultrasound images. Currently, the most widely used approach for the automated diagnosis of Graves' disease utilizes Convolutional Neural Networks (CNNs) for both feature extraction and classification. However, these methods demonstrate limited efficacy in capturing texture features. Given the high capacity of wavelets in describing texture features, this research integrates learnable wavelet modules utilizing the Lifting Scheme into CNNs and incorporates a parallel wavelet branch into the ResNet18 model to enhance texture feature extraction. Our model can analyze texture features in spatial and frequency domains simultaneously, leading to optimized classification accuracy. We conducted experiments on collected ultrasound datasets and publicly available natural image texture datasets, our proposed network achieved 97.27% accuracy and 95.60% recall on ultrasound datasets, 60.765% accuracy on natural image texture datasets, surpassing the accuracy of ResNet and conrming the effectiveness of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2404_05300
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Texture Classification Network Integrating Adaptive Wavelet Transform
Yu, Su-Xi
He, Jing-Yuan
Wang, Yi
Cai, Yu-Jiao
Yang, Jun
Lin, Bo
Yang, Wei-Bin
Ruan, Jian
Computer Vision and Pattern Recognition
Graves' disease is a common condition that is diagnosed clinically by determining the smoothness of the thyroid texture and its morphology in ultrasound images. Currently, the most widely used approach for the automated diagnosis of Graves' disease utilizes Convolutional Neural Networks (CNNs) for both feature extraction and classification. However, these methods demonstrate limited efficacy in capturing texture features. Given the high capacity of wavelets in describing texture features, this research integrates learnable wavelet modules utilizing the Lifting Scheme into CNNs and incorporates a parallel wavelet branch into the ResNet18 model to enhance texture feature extraction. Our model can analyze texture features in spatial and frequency domains simultaneously, leading to optimized classification accuracy. We conducted experiments on collected ultrasound datasets and publicly available natural image texture datasets, our proposed network achieved 97.27% accuracy and 95.60% recall on ultrasound datasets, 60.765% accuracy on natural image texture datasets, surpassing the accuracy of ResNet and conrming the effectiveness of our approach.
title Texture Classification Network Integrating Adaptive Wavelet Transform
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.05300