基于保真分数傅里叶变换和Adaboost的多类脑图像分类

Ying Zhang, Qianqian Hu, Zhen Guo, Jian Xu, Kun Xiong
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引用次数: 1

摘要

随着计算机技术的发展,计算机辅助诊断系统的诊断能力不断提高。它有助于将脑图像自动准确地划分为健康或其他病理类别。本文提出了一种改进的方法,通过引入保持真实的分数傅里叶变换(RPFRFT)和Adaboost,将脑图像分为健康、脑血管疾病、肿瘤疾病、退行性疾病和炎症性疾病五类。实验使用磁共振成像获得的t2加权图像190张。首先,我们利用RPFRFT提取每张磁共振图像的频谱特征。其次,我们应用主成分分析(PCA)将特征维数降至86。第三步,将不同样本的谱特征进行组合,然后输入Adaboost进行分类器训练。10×10-fold交叉验证的准确率为98.6%。实验结果证实了该方法的有效性。
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Multi-Class Brain Images Classification Based on Reality-Preserving Fractional Fourier Transform and Adaboost
With the development of computer technology, the diagnostic capability of the computer-aided diagnosis systems has improved. It has contributed to classify the brain images into health or other pathological categories automatically and accurately. In this paper, we proposed an improved method by introducing reality-preserving fractional Fourier transform (RPFRFT) and Adaboost to classify brain images into five different categories of health, cerebrovascular disease, neoplastic disease, degenerative disease and inflammatory disease. We used 190 T2-weighted images obtained by magnetic resonance imaging in the experiment. First, we employed RPFRFT to extract spectrum features from each magnetic resonance image. Second, we applied principal component analysis (PCA) to reduce feature dimensionality to only 86. Third, those reduced spectral features of different samples were combined and then were fed into Adaboost to train the classifier. The 10×10-fold cross validation obtained an accuracy of 98.6%. The result confirms the effectiveness of our proposed method.
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