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

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Summary

Introduction

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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