Abstract

Abstract: Skin cancer is a prevalent and potentially life-threatening disease that continues to pose a significant public health concern. Starting stage detection Plays a crucial part in enhancing treatment efficacy. Furthermore, the advancement of deep learning has enabled the creation of automated frameworks for detecting maligant cancer. This proposed system utilizes a varied dataset encompassing various types of skin cancer, such as malignant melanomas and benign nevi, to educate a learning model. Utilizing CNN, pertinent features are automatically extracted from skin cancer images, facilitating precise classification. Assessment of the suggested system showcases encouraging outcomes concerning sensitivity, specificity, and overall precision. Comparative assessments against conventional techniques underscore the superior efficacy and effectiveness of the devised model in identifying potential skin cancer instances. Moreover, the system's interpretive capacity is heightened through the integration integration of attention mechanisms offering insights into the areas of focus within the skin cancer images

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