ResNet-50 vs VGG-19 vs training from scratch: A comparative analysis of the segmentation and classification of Pneumonia from chest X-ray images

A. Victor Ikechukwu, S. Murali, R. Deepu, R.C. Shivamurthy
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引用次数: 64

Abstract

In medical imaging, segmentation plays a vital role towards the interpretation of X-ray images where salient features are extracted with the help of image segmentation. Without undergoing surgery, clinicians employ various modalities ranging from X-rays and CT-Scans to ultrasonography, and other imaging techniques to visualise and examine interior human body organ and structures. To ensure appropriate convergence, training a deep convolutional neural network (CNN) from scratch is tough since it requires more computational time, a big amount of labelled training data and a considerable degree of experience. Fine-tuning a CNN that has been pre-trained using, for instance, a huge set of labelled medical datasets, is a viable alternative. In this paper, a comparative study was done using pre-trained models such as VGG-19 and ResNet-50 as against training from scratch. To reduce overfitting, data augmentation and dropout regularization was used. With a recall of 92.03%, our analysis showed that the pre-trained models with proper finetuning was comparable with Iyke-Net, a CNN trained from scratch.

ResNet-50 vs VGG-19 vs Training from Scratch:胸部x线图像肺炎分割分类的比较分析
在医学成像中,分割对x射线图像的解释起着至关重要的作用,在图像分割的帮助下提取显著特征。在不进行手术的情况下,临床医生使用各种方式,从x射线和ct扫描到超声检查,以及其他成像技术来可视化和检查人体内部器官和结构。为了确保适当的收敛性,从头开始训练深度卷积神经网络(CNN)是困难的,因为它需要更多的计算时间,大量的标记训练数据和相当程度的经验。对预先训练好的CNN进行微调是一种可行的选择,例如,使用大量标记的医疗数据集。本文使用VGG-19和ResNet-50等预训练模型与从头开始训练进行了对比研究。为了减少过拟合,使用了数据增强和dropout正则化。我们的分析表明,经过适当微调的预训练模型的召回率为92.03%,与从头训练的CNN ike - net相当。
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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