A fundamental phase in the technique of pneumonia diagnosis is the evaluation and categorization of lung disorders
utilizing X-raypictures, especially during a crucial era such as the COVID19 pandemic, which is a kind of pneumonia. As a
result of the growing number of cases, an automated approach with high classification accuracy is required to classify lung
disorders. Due to its quickness and effectiveness when it comes to visual recognition tasks, CNN based segmentation has
acquired a lot of traction in recent years. We present an implementation of CNN-based classifiertechniques utilize a domain
adaptation approach to identify pneumonia and analyze the outcomes to choose the best model for the job depending on specific
parameters in this paper.