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Generative Adversarial Networks for Self-Supervised Transfer Learning in Medical Image Classification

Lecture Notes in Electrical Engineering, ISSN: 1876-1119, Vol: 1274 LNEE, Page: 118-124
2025
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Conference Paper Description

Self-supervised transfer mastering for clinical picture analysis is a method that uses deep getting-to-know procedures to research large units of medical imaging facts without using guide labels. By way of using switch getting to know, the version can come across diffused patterns from the facts that are not easily located with the aid of the medical doctors or researchers. This method can diffuse clinical imaging packages consisting of type, segmentation, and item detection. The self-supervised transfer studying technique involves educating an artificial intelligence (AI) model on a set of scientific picas with available labels. Further, the model can detect small capabilities and patterns that may be ignored through manual labeling, leading to more excellent correct outcomes.

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