Since the onset of the COVID-19 pandemic in 2020, millions of people have succumbed to this deadly virus. Many attempts have been made to devise an automated method of testing that could detect the virus. Various researchers around the globe have proposed deep learning based methodologies to detect the COVID-19 using Chest X-Rays. However, questions have been raised on the presence of bias in the publicly available Chest X-Ray datasets which have been used by the majority of the researchers. In this paper, we propose a 2 staged methodology to address this topical issue. Two experiments have been conducted as a part of stage 1 of the methodology to exhibit the presence of bias in the datasets. Subsequently, an image segmentation, super-resolution and CNN based pipeline along with different image augmentation techniques have been proposed in stage 2 of the methodology to reduce the effect of bias. InceptionResNetV2 trained on Chest X-Ray images that were augmented with Histogram Equalization followed by Gamma Correction when passed through the pipeline proposed in stage 2, yielded a top accuracy of 90.47% for 3-class (Normal, Pneumonia, and COVID-19) classification task.
翻译:自2020年COVID-19大流行以来,已有数百万人死于这一致命病毒,许多人试图设计一种能够检测该病毒的自动检测方法,全球各研究人员提出了使用Chest X光仪探测COVID-19的深层学习方法,但提出了在公众可得到的Chest X-射线数据集中存在偏见的问题,大多数研究人员都使用了这些数据集。本文提出了解决这一热点问题的2级方法。作为在数据集中显示偏见的方法第一阶段的一部分,进行了两次实验。随后,在方法第二阶段,提出了利用不同图像增强技术探测COVID-19的图像分解、超级分辨率和CNNCN输油管,以减少偏差的影响。对Chest X-射线图像的认知性ResNet2进行了培训,这些图像随着直方图的均衡而得到增强。本文中,我们提出了解决这一热点问题的第2阶段建议,我们提出了一种分级方法。在通过第2阶段提议的管道时,对3级(诺尔、肺炎、COVID任务)和COVID任务进行了90.47的高度精确度为90.47%。