Volume 14 , Issue 2 , PP: 91-102, 2025 | Cite this article as | XML | Html | PDF | Full Length Article
Gurijala Anita 1 * , Sunil Singarapu 2
Doi: https://doi.org/10.54216/JISIoT.140208
Lung disease is considerable deprivation from health standpoint. These include chronic obstructive pulmonary illnesses, asthma, lung fibrosis, lung parenchyma illnesses, and tuberculosis among others. It is highly critical in the early phase of lung illnesses when they are the most treatable. Many of these were made for the purpose of applying machine learning and image processing. Many types of DL methods including CNN, VNN, VGG networks, capsule networks are used during lung illness prediction process. Following the release of the book on Pandemic Covid-19, many projects have been carried out at international level intending to study the feasibility of such work for prediction of future events. Pneumonia is a lung infection that starts earlier in the disease course and is closely associated with the virus (pneumonia condition), which was responsible for considerable chest infection in some covid-positive individuals. While doctors are no strangers to lung diseases and their complicated nature, many will find it difficult in some of them to make distinctions between common pneumonia and the Covid-19. X-ray imaging of the chest provides the highest degree of accuracy in suffem lung diseases. In this work, a novel approach for the calculation of lung illnesses such as pneumonia and COVID-19 is proposed. The data source for this method is Chest X-ray pictures taken from patients. The system includes characteristics such as the extraction of features, the prediction of illnesses, and the precise and adaptive evaluation of ROI, the collecting of datasets, and the enhancement of image quality. In future, this research can be extended with IOT devices for the recognition of COVID-19 and pneumonia.
DL , Classification , Hybrid Clustering , CNN , Lung Illnesses , Pneumonia , Internet of Things
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