2016
DOI: 10.1007/978-3-319-46466-4_13
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A Benchmark for Automatic Visual Classification of Clinical Skin Disease Images

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Cited by 111 publications
(100 citation statements)
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References 33 publications
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“…Works employing DNNs for melanoma screening either train a network from scratch [6,7,9], or transfer knowledge from ImageNet [4,5,8,10,11] the choice of DNN architecture and implementation frameworkthe most common framework is Caffe [4,8,11], and the most common architectures are ResNet [10], DRN-101 [11], AlexNet [5], and VGG-16 [8]. Schemes for artificially augmenting training data, and for transferring learned knowledge also vary.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Works employing DNNs for melanoma screening either train a network from scratch [6,7,9], or transfer knowledge from ImageNet [4,5,8,10,11] the choice of DNN architecture and implementation frameworkthe most common framework is Caffe [4,8,11], and the most common architectures are ResNet [10], DRN-101 [11], AlexNet [5], and VGG-16 [8]. Schemes for artificially augmenting training data, and for transferring learned knowledge also vary.…”
Section: Introductionmentioning
confidence: 99%
“…Schemes for artificially augmenting training data, and for transferring learned knowledge also vary. Segmenting the lesion before feature extraction is a common choice for melanoma screening [8,11], although DNNs generally allow forgoing it [1,4,5,8,10,14]. In this paper we forgo all preprocessing steps, like lesion segmentation, or artifacts/hair removal.…”
Section: Introductionmentioning
confidence: 99%
“…The performance of deep learning model heavily relies on the properties of dataset, under the current technology level. Yang et al 26 presented medical representations inspired by dermatological criteria for diagnosing clinical skin lesions based on proposed dataset 27 with superior performance, which was collected from Derm101. Many other innovative researches 16,17,28 are also attributed to these publicly available datasets, although not all of them are pathologically supported like our purposed dataset.…”
Section: Discussionmentioning
confidence: 99%
“…The dataset in [8] has 44 classes containing 2,309 images. Another two datasets are proposed in [6]: SD-128, which has 128 classes and 5,619 1 https://isic-archive.com/ images, and SD-198, which has 198 classes and 6,584 images. They achieve the classification accuracy of 52.15% on SD-128 and 50.27% on SD-198.…”
Section: A Skin Disease Datasetsmentioning
confidence: 99%