Abstract

Melanoma skin cancer is one of the most dangerous forms of skin cancer because it grows fast and causes most of the skin cancer deaths. Hence, early detection is a very important task to treat melanoma. In this article, we propose a skin lesion segmentation method for dermoscopic images based on the U-Net architecture with VGG-16 encoder and the semantic segmentation. Base on the segmented skin lesion, diagnostic imaging systems can evaluate skin lesion features to classify them. The proposed method requires fewer resources for training, and it is suitable for computing systems without powerful GPUs, but the training accuracy is still high enough (above 95 %). In the experiments, we train the model on the ISIC dataset – a common dermoscopic image dataset. To assess the performance of the proposed skin lesion segmentation method, we evaluate the Sorensen-Dice and the Jaccard scores and compare to other deep learning-based skin lesion segmentation methods. Experimental results showed that skin lesion segmentation quality of the proposed method are better than ones of the compared methods.

Highlights

  • Melanoma skin cancer is one of the most dangerous forms of skin cancer

  • We propose a method to segment skin lesion with a convolutional neural networks (CNNs) architecture based on VGG-16 encoder [18, 19] for U-Net and semantic segmentation method

  • We proposed a CNN architecture for skin lesion segmentation for dermoscopic images based on convolutional neural networks and a skin lesion segmentation method based on that proposed CNN architecture and semantic segmentation

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Summary

Introduction

Melanoma skin cancer is one of the most dangerous forms of skin cancer. It grows fast and causes most of the skin cancer deaths. For cancer in general and skin cancer in particular, early detection is a very important task, because doctors can help to stop the metastatic – one of the most popular causes of cancer death. One important method for diagnosing melanoma is the ABCD rule [1, 2]. To improve the diagnostic quality by ABCD rule, it is necessary to segment skin lesions from dermoscopic images. Based on the segmented region, features of skin lesions will be extracted to evaluate the lesion

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