Abstract
Melanoma, due to its higher mortality rate, is considered as one of the most pernicious types of skin cancers, mostly affecting the white populations. It has been reported a number of times and is now widely accepted, that early detection of melanoma increases the chances of the subject’s survival. Computer-aided diagnostic systems help the experts in diagnosing the skin lesion at earlier stages using machine learning techniques. In this work, we propose a framework that accurately segments, and later classifies, the lesion using improved image segmentation and fusion methods. The proposed technique takes an image and passes it through two methods simultaneously; one is the weighted visual saliency-based method, and the second is improved HDCT based saliency estimation. The resultant image maps are later fused using the proposed image fusion technique to generate a localized lesion region. The resultant binary image is later mapped back to the RGB image and fed into the Inception-ResNet-V2 pre-trained model–trained by applying transfer learning. The simulation results show improved performance compared to several existing methods.
Highlights
Melanoma, due to its higher mortality rate, is considered as one of the most pernicious type of skin cancers, mostly affecting the white population [1]
It has been reported a number of times, and is widely accepted, that early detection of melanoma–usually by means of biopsy–increases the chances of subject’s survival [3,4,5]
Inspired by the CNN framework, we propose a new deep learning framework for skin lesion segmentation and classification
Summary
Due to its higher mortality rate, is considered as one of the most pernicious type of skin cancers, mostly affecting the white population [1]. In the year 2020, 104,350 new melanoma cases were reported in the US alone, out of which around 11,650 ended up in deaths [2]. It has been reported a number of times, and is widely accepted, that early detection of melanoma–usually by means of biopsy–increases the chances of subject’s survival [3,4,5]. Researchers are more focused on the machine learning based techniques that help doctors in diagnosing the skin cancer with greater accuracy.
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