基于自适应激活函数的胸部x线图像分类改进

Tribikram Dhar, Gourab Adhikari, S. S. Chaudhuri
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引用次数: 0

摘要

机器视觉技术特别是卷积神经网络(cnn)在医学图像分析和分类方面取得了重大突破,因为它们能够以分层方式从输入中学习具有代表性的特征。几年前,由于没有大而高质量的胸部x射线图像(CXR)数据库,执行有效而准确的基于CNN的分类是一个巨大的挑战。在本文中,我们提出了基于最先进的深度CNN架构(如AlexNet, Res Net和VGG16)的实验。这些实验是基于两种类型的研究进行的,一种数据集包含Covid-19、病毒性肺炎和无呼吸系统疾病(正常)受试者的胸部x射线图像(研究二),另一种数据集仅包含Covid-19和健康受试者(研究一),并与所提出的架构和基于标准指标的分类结果在测试数据集上进行了比较。在训练阶段,未经任何图像处理技术的胸部x射线(CXR)原始图像被传递给CNN。此外,我们提出了一种新的CNN架构,该架构结合了自适应激活函数的使用,并以96.89%和96.75%的准确率对上述研究(I和II)进行了分类,并且在参数数量,训练时间和占用的空间量方面优于一些非常深入和更先进的CNN架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Classification of Chest X-ray Images U sing Adaptive Activation Function
Machine vision techniques particularly convolutional neural networks (CNNs) have attained major breakthrough in medical image analysis and classification because of their ability to learn representative features from the input in a hierarchical manner. A couple of years back performing an effective and accurate CNN based classification was a tremendous challenge due to non-availability of large and good quality chest X-ray image (CXR) database. In this paper, we have presented the experiment based on state of the art deep CNN architectures like AlexNet, Res Net and VGG16. These experiments were conducted based on two types of study, one containing dataset with chest Xray images of subjects who contracted Covid-19, viral pneumonia and no respiratory disorder(normal) mentioned as study II and the other dataset containing only Covid-19 and healthy subjects mentioned as study I. A comparison has been drawn with the proposed architecture and classification results based on standard metrics have been carried out on test dataset. The raw chest Xray (CXR) images were passed to the CNN during the training phase without any prior image processing techniques applied on them. Also, we have proposed a new CNN architecture which incorporates the use of an adaptive activation function and it classified the above mentioned studies(I and II) with an accuracy of 96.89 % and 96.75 % and proved to be better than some of the very deep and much more advanced CNN architectures in terms of number of parameters, training time and the amount of space it occupied.
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