A DEEP LEARNING APPROACH LUNG SEGMENTATION AND PNEUMONIA DETECTION FROM X-RAYS

Y. Rao, P. Lavanya, V. Reddy, Vaibhav Kumar
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Abstract

Lung segmentation is a process of detection and identification of lung cancer and pneumonia with the help of image processing techniques. Deep learning algorithms can be incorporated to build the computer-aided diagnosis (CAD) system for detecting or recognizing broad objects like acute respiratory distress syndrome (ARDS), Tuberculosis, Pneumonia, Lung cancer, Covid, and several other respiratory diseases. This paper presents pneumonia detection from lung segmentation using deep learning methods on chest radiography. Chest X-ray is the most useful technique among other existing techniques, due to its lesser cost. The main drawback of a chest x-ray is that it cannot detect all problems in the chest. Thus, implementing convolutional neural networks (CNN) to perform lung segmentation and to obtain correct results. The “lost” regions of the lungs are reconstructed by an automatic segmentation method from raw images of chest X-ray.
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基于x射线的肺分割和肺炎检测的深度学习方法
肺分割是利用图像处理技术对肺癌和肺炎进行检测和识别的过程。深度学习算法可用于构建计算机辅助诊断(CAD)系统,用于检测或识别诸如急性呼吸窘迫综合征(ARDS)、结核病、肺炎、肺癌、Covid和其他几种呼吸系统疾病等广泛对象。本文介绍了利用胸片上的深度学习方法从肺分割中检测肺炎。由于成本较低,胸部x光是现有技术中最有用的技术。胸部x光检查的主要缺点是它不能检测出胸部的所有问题。因此,实现卷积神经网络(CNN)进行肺分割,并获得正确的结果。通过自动分割方法从胸部x射线的原始图像中重建“丢失”的肺部区域。
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