Detection of Breast Cancer Images Based on Transfer and Deep Learning Models

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Abstract

Using a technology known as deep learning, which involves classifying photos based on the data they contain, it is possible to detect images, such as tumors and other signs. Because of the scarcity of pathologists and the growing number of patients with breast cancer, the manual numeration of biopsy echantillons must be mechanized (CS). To rectify the histopathological images of malignant tissue, preliminary study is required, which can be done utilizing BreaKHis' free database of data. An approach based on isolated image fragments is proposed, with the final categorization determined by an interconnected network of neurons (CNN) and a final combination of these pieces. Because of its unique architecture, capacity to recognize speech, identify objects, and analyze signals, as well as the popularity of neural language processing, the CNN is attracting increasing interest from industry and researchers. The employment of transfer learning methods is a problem with tiny collections of medical data. To improve the classification of defamatory and obscene photos, this article recommends integrating the impacts of many resolutions. In order to better depict the entering image's texture, many essential phases in CNN development are also used. Maintain a safe distance from the model's customization. Traditional CNN development may become more complex and expensive as a result. The simulation results achieved by running CNN in MATLAB outperform other artificial intelligence (AI) models recently published that used hand-crafted texture descriptors. With this in mind, we looked at all of CNN's possible combinations and discovered a technique to boost the execution rate by a little amount.

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last seen: 2026-05-19T01:45:01.086888+00:00