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Computer vision is one of the field of artificial intelligence this is a better way to detect and prevent the lung cancer. This study focuses on the stages involved in detecting lung tumor regions, namely pre-processing, segmentation, and classification models. An adaptive median filter is used in pre-processing to identify the noise. The work\u2019s originality seeks to create a simple yet effective model for the rapid identification and U-net architecture based segmentation of lung nodules. 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