Double-View Matching Network for Few-Shot Learning to Classify Covid-19 in X-ray images

IF 0.9 Q4 TELECOMMUNICATIONS
G. Szűcs, Marcell Németh
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引用次数: 7

Abstract

The research topic presented in this paper belongs to small training data problem in machine learning (especially in deep learning), it intends to help the work of those working in medicine by analyzing pathological X-ray recordings, using only very few images. This scenario is a particularly hot issue nowadays: how could a new disease for which only limited data are available be diagnosed using features of previous diseases? In this problem, so-called few-shot learning, the difficulty of the classification task is to learn the unique feature characteristics associated with the classes. Although there are solutions, but if the images come from different views, they will not handle these views well. We proposed an improved method, so-called Double-View Matching Network (DVMN based on the deep neural network), which solves the few-shot learning problem as well as the different views of the pathological recordings in the images. The main contribution of this is the convolutional neural network for feature extraction and handling the multi-view in image representation. Our method was tested in the classification of images showing unknown COVID-19 symptoms in an environment designed for learning a few samples, with prior meta-learning on images of other diseases only. The results show that DVMN reaches better accuracy on multi-view dataset than simple Matching Network without multi-view handling.
基于双视图匹配网络的x射线图像中Covid-19的少镜头学习分类
本文提出的研究课题属于机器学习(尤其是深度学习)中的小训练数据问题,它旨在通过分析病理x射线记录,仅使用很少的图像来帮助医学工作者的工作。这种情况是当今一个特别热门的问题:如何利用以前疾病的特征来诊断一种只有有限数据的新疾病?在这个所谓的few-shot学习问题中,分类任务的难点在于学习与类相关的唯一特征特征。虽然有解决方案,但如果图像来自不同的视图,它们将无法很好地处理这些视图。我们提出了一种改进的方法,即基于深度神经网络的双视图匹配网络(Double-View Matching Network, DVMN),解决了图像中少镜头学习问题以及病理记录的不同视图问题。其中的主要贡献是卷积神经网络在图像表示中的特征提取和多视图处理。我们的方法在为学习少数样本而设计的环境中对显示未知COVID-19症状的图像进行了分类测试,仅对其他疾病的图像进行了先前的元学习。结果表明,与不进行多视图处理的简单匹配网络相比,DVMN在多视图数据集上的准确率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Infocommunications Journal
Infocommunications Journal TELECOMMUNICATIONS-
CiteScore
1.90
自引率
27.30%
发文量
0
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