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Journal ArticleDOI

Automated Melanoma Recognition in Dermoscopy Images via Very Deep Residual Networks

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TLDR
This study corroborates that very deep CNNs with effective training mechanisms can be employed to solve complicated medical image analysis tasks, even with limited training data.
Abstract
Automated melanoma recognition in dermoscopy images is a very challenging task due to the low contrast of skin lesions, the huge intraclass variation of melanomas, the high degree of visual similarity between melanoma and non-melanoma lesions, and the existence of many artifacts in the image. In order to meet these challenges, we propose a novel method for melanoma recognition by leveraging very deep convolutional neural networks (CNNs). Compared with existing methods employing either low-level hand-crafted features or CNNs with shallower architectures, our substantially deeper networks (more than 50 layers) can acquire richer and more discriminative features for more accurate recognition. To take full advantage of very deep networks, we propose a set of schemes to ensure effective training and learning under limited training data. First, we apply the residual learning to cope with the degradation and overfitting problems when a network goes deeper. This technique can ensure that our networks benefit from the performance gains achieved by increasing network depth. Then, we construct a fully convolutional residual network (FCRN) for accurate skin lesion segmentation, and further enhance its capability by incorporating a multi-scale contextual information integration scheme. Finally, we seamlessly integrate the proposed FCRN (for segmentation) and other very deep residual networks (for classification) to form a two-stage framework. This framework enables the classification network to extract more representative and specific features based on segmented results instead of the whole dermoscopy images, further alleviating the insufficiency of training data. The proposed framework is extensively evaluated on ISBI 2016 Skin Lesion Analysis Towards Melanoma Detection Challenge dataset. Experimental results demonstrate the significant performance gains of the proposed framework, ranking the first in classification and the second in segmentation among 25 teams and 28 teams, respectively. This study corroborates that very deep CNNs with effective training mechanisms can be employed to solve complicated medical image analysis tasks, even with limited training data.

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Proceedings ArticleDOI

Seven-Point Checklist with Convolutional Neural Networks for Melanoma Diagnosis

TL;DR: The initial results obtained from the proposed pattern analysis method incorporated with seven-point checklist exploiting convolutional neural network for melanoma diagnosis show a convincing and promising ability for lesion detection and automated melanomas diagnosis from dermoscopy images.
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Automatic skin lesion segmentation using deep fully convolutional networks

TL;DR: This paper summarizes the method and validation results for the ISIC Challenge 2018 - Skin Lesion Analysis Towards Melanoma Detection - Task 1: Lesion Segmentation.
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TL;DR: In this article, a novel methodology has been proposed by incorporating Neural Architecture Search and Model Quantization technique, where deep convolutional neural network is utilized to build a skin cancer classifier, which can be deployed on low compute devices.
Journal ArticleDOI

Graph weighting scheme for skin lesion segmentation in macroscopic images

TL;DR: In this paper, a graph-based skin lesion segmentation algorithm is proposed to suppress skin regions and highlight effectively the complete lesion, which yields accurate segmentation and enhances applicability on complicated images with different artifacts.
References
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Proceedings Article

Very Deep Convolutional Networks for Large-Scale Image Recognition

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