基于胸片的新型冠状病毒异常检测和定位的小尺度CNN-N模型

Jagadeesh Marusani, B. Sudha, Narayana Darapaneni
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引用次数: 4

摘要

Covid-19在检测和治疗方面一直对世界各地的科学家和卫生组织构成严重挑战。常用的方法是ct扫描和x射线来分析COVID-19的肺部图像。如今,通过手动查看报告来诊断covid-19在大流行中变得困难和具有挑战性。肺炎和肺部感染以及covid-19会导致肺部炎症和积液。Covid-19 x射线与病毒性和细菌性肺炎x射线非常相似。所以很难区分covid-19和肺炎。在本文中,我们提出了一种计算机视觉模型来检测covid - 19感染的存在以及感染在肺部的定位。6337张图像包括肺炎阴性、典型表现、中等表现和非典型表现。虽然已有预训练好的CNN模型在该数据集上表现良好,但本文旨在减小模型的规模,并验证其在其他数据集上的性能。还考虑了不同的图像大小。使用Yolov5等不同权重的目标检测算法,从零开始构建一个小规模的CNN模型,以检测和定位胸片上的covid-19异常。与许多最先进的预训练模型相比,该模型的尺寸和参数显着减少,从而确保有效地发现covid-19异常情况,并显示感染区域,以确保在引起严重感染之前及时治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small-Scale CNN-N model for Covid-19 Anomaly Detection and Localization From Chest X-Rays
Covid-19 has been posing a serious challenge to scientists and health organizations around the world in terms of detection and its treatment. Common methods are CT-Scans and X-rays to analyze the images of lungs for COVID-19. These days diagnosing covid-19 by manually looking at the reports has become difficult and challenging in the pandemic. Pneumonia and pulmonary infections along with covid-19 cause inflammation and fluids in the lungs. Covid-19 X-rays are very similar to viral and bacterial Pneumonia X-rays. So it becomes very difficult to differentiate between covid-19 and Pneumonia. In this paper we propose a computer vision model to detect the presence of covid19 infection along with the localization of the infection in the lungs. 6337 images consisting of Negative for pneumonia, Typical Appearance, Intermediate Appearance and Atypical Appearance is considered. Although there are pre-trained CNN models which perform well on the data, this paper aims at reducing the size of the model and validate its performance on other datasets. Different image sizes are also considered. A small scale CNN model is built from scratch to detect and localize covid-19 abnormalities on chest radiographs using object detection algorithms like Yolov5 with different weights. There is a significant reduction in model size and parameters compared to many state of the art pre-trained models thereby ensuring efficient detection of covid-19 anomalies and show the region of infection to ensure timely treatment before it causes severe infection.
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