Lungs Disease Classification using VGG-16 architecture with PCA

Vaishali Gupta, Ruchi Patel
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引用次数: 1

Abstract

People all over the world are afflicted by lung disease, which is a prevalent illness. The earliest possible diagnosis of lung illness is necessary. Due to this, a number of deep learning models for processing image data evolved over time. Advances in deep learning have helped identify lung disorders and detect them in diagnostic images. Various types of modern deep learning techniques, including vanilla neural networks, convolutional neural networks (CNN), visual geometry group (VGG) dependent neural networks, and capsule networks, can be used to classify lung cancer. The basic CNN performs poorly when trying to handle rotated, curved, or other unusual image orientations. As a result, the proposed work explored using principal components analysis (PCA) and the VGG16 deep learning architecture. In order to extract significant features from an image dataset, PCA is generally used. The Chest X-ray of National Institutes of Health (NIH) is taken as dataset which contains 112,120 images of X-ray of 30,805 different patients. In the current work, accuracy is used to evaluate performance, and VGG 16’s accuracy is 79.1%. The PCA approach has raised it by up to 96%. Additionally, the proposed architecture is contrasted with current work.
用VGG-16结构与PCA进行肺部疾病分类
全世界的人都受到肺病的折磨,这是一种普遍的疾病。尽早诊断肺部疾病是必要的。因此,许多用于处理图像数据的深度学习模型随着时间的推移而发展。深度学习的进步有助于识别肺部疾病,并在诊断图像中检测到它们。各种类型的现代深度学习技术,包括香草神经网络,卷积神经网络(CNN),视觉几何群(VGG)依赖神经网络和胶囊网络,可用于肺癌分类。当试图处理旋转、弯曲或其他不寻常的图像方向时,基本的CNN表现不佳。因此,提出的工作探索使用主成分分析(PCA)和VGG16深度学习架构。为了从图像数据集中提取重要的特征,通常使用PCA。以美国国立卫生研究院(NIH)的胸部x射线为数据集,包含30,805名不同患者的112,120张x射线图像。在目前的工作中,以准确率为评价指标,VGG 16的准确率为79.1%。PCA方法将其提高了96%。此外,还将提出的体系结构与当前的工作进行了对比。
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