Brain MRI classification using an ensemble system and LH and HL wavelet sub-bands features

S. Lahmiri, M. Boukadoum
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引用次数: 31

Abstract

A new classification system for brain images obtained by magnetic resonance imaging (MRI) is presented. A three-stage approach is used for its design. It consists of second-level discrete wavelet transform decomposition of the image under study, feature extraction from the LH and HL sub-bands using first order statistics, and subsequent classification with the k-nearest neighbor (k-NN), learning vector quantization (LVQ), and probabilistic neural networks (PNN) algorithms. Then, an ensemble classifier system is developed where the previous machines form the base classifiers and support vector machines (SVM) are employed to aggregate decisions. The proposed approach was tested on a bank of normal and pathological MRIs and the obtained results show a higher performance overall than when using features extracted from the LL sub-band, as usually done, leading to the conclusion that the horizontal and vertical sub-bands of the wavelet transform can effectively and efficiently encode the discriminating features of normal and pathological images. The experimental results also show that using an ensemble classifier improves the correct classification rates.
脑MRI分类采用集合系统和LH和HL小波子带特征
提出了一种新的脑磁共振图像分类系统。它的设计采用了三个阶段的方法。它包括对研究图像进行二级离散小波变换分解,使用一阶统计量从LH和HL子带提取特征,然后使用k-最近邻(k-NN)、学习向量量化(LVQ)和概率神经网络(PNN)算法进行分类。然后,开发了一个集成分类器系统,其中先前的机器构成基本分类器,并使用支持向量机(SVM)对决策进行聚合。在一组正常和病理核磁共振图像上进行了测试,结果表明,小波变换的水平和垂直子带可以有效地编码正常和病理图像的区分特征,总体上优于通常使用LL子带提取特征的方法。实验结果还表明,使用集成分类器可以提高正确的分类率。
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