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A Hybrid CNN and RBF-Based SVM Approach for Breast Cancer Classification in Mammograms

机译:基于CNN和RBF的混合SVM方法在乳房X线照片中进行乳腺癌分类

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One of the most powerful ideas in deep learning is the transfer learning technique. Transfer learning can be utilized to take a knowledge from what a deep neural network has learned from a particular task and apply that knowledge to a different task. Transfer learning is very useful when the size of the training samples of interest is small to train a neural network from scratch. This research focuses on the concept of transfer learning where the Convolutional Neural Network (CNN) power can be utilized as a features extractor to help with classifying benign from malignant breast cancer images. In addition, Support Vector Machine (SVM) classifier based on Radial Basis Function (RBF) was adapted for its flexibility in fitting the data dimension space adequately by tuning the kernel width. The hybridization between CNN and RBF-Based SVM showed robust results for both the dataset and the application task of this research. The contribution of this paper can be summarized in three major parts. First, a CNN was implemented from scratch on a large number of available spine images to classify images of two different spine views (sagittal and axial) in order to transfer the learning process to the CNN of breast images. Second, retrain the spine CNN on the images of breast cancer to classify between benign and malignant cases by fine-tuning. Finally, the features were extracted from the retrained CNN and fed to RBF-Based SVM to classify benign from malignant breast mammogram images.
机译:深度学习中最有力的想法之一就是迁移学习技术。可以利用转移学习从深度神经网络从特定任务中学到的知识中获取知识,并将该知识应用于其他任务。当感兴趣的训练样本的大小较小以从头开始训练神经网络时,转移学习非常有用。这项研究的重点是转移学习的概念,其中卷积神经网络(CNN)的功能可以用作特征提取器,以帮助对恶性乳腺癌图像中的良性进行分类。另外,基于径向基函数(RBF)的支持向量机(SVM)分类器经过调整,可以灵活地通过调整内核宽度来适当地拟合数据维空间。 CNN和基于RBF的支持向量机之间的混合显示出强大的结果,无论是数据集还是本研究的应用任务。本文的贡献可以概括为三个主要部分。首先,在大量可用的脊柱图像上从零开始实施CNN,以对两个不同的脊柱视图(矢状和轴向)图像进行分类,以便将学习过程转移到乳房图像的CNN。其次,对乳腺癌图像上的脊柱CNN进行重新训练,以通过微调对良性和恶性病例进行分类。最后,从重新训练的CNN中提取特征,并将其输入到基于RBF的SVM中,以对恶性乳房X线照片进行良性分类。

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