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CNN-SVM for Microvascular Morphological Type Recognition with Data Augmentation

机译:CNN-SVM用于数据增强的微血管形态识别

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摘要

This paper focuses on the problem of feature extraction and the classification of microvascular morphological types to aid esophageal cancer detection. We present a patch-based system with a hybrid SVM model with data augmentation for intraepithelial papillary capillary loop recognition. A greedy patch-generating algorithm and a specialized CNN named NBI-Net are designed to extract hierarchical features from patches. We investigate a series of data augmentation techniques to progressively improve the prediction invariance of image scaling and rotation. For classifier boosting, SVM is used as an alternative to softmax to enhance generalization ability. The effectiveness of CNN feature representation ability is discussed for a set of widely used CNN models, including AlexNet, VGG-16, and GoogLeNet. Experiments are conducted on the NBI-ME dataset. The recognition rate is up to 92.74% on the patch level with data augmentation and classifier boosting. The results show that the combined CNN-SVM model beats models of traditional features with SVM as well as the original CNN with softmax. The synthesis results indicate that our system is able to assist clinical diagnosis to a certain extent.
机译:本文关注于特征提取和微血管形态类型分类的问题,以帮助食道癌的检测。我们提出了一个基于补丁的系统,该系统具有用于数据上皮内乳头状毛细血管环识别的混合SVM模型。贪婪补丁生成算法和名为NBI-Net的专用CNN旨在从补丁中提取层次特征。我们研究了一系列数据增强技术,以逐步改善图像缩放和旋转的预测不变性。对于分类器增强,SVM用作softmax的替代方法以增强泛化能力。针对包括AlexNet,VGG-16和GoogLeNet在内的一组广泛使用的CNN模型,讨论了CNN特征表示功能的有效性。实验是在NBI-ME数据集上进行的。通过数据增强和分类器增强,补丁级别的识别率高达92.74%。结果表明,结合后的CNN-SVM模型优于具有SVM的传统特征模型以及具有softmax的原始CNN。综合结果表明,我们的系统能够在一定程度上辅助临床诊断。

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