2020
DOI: 10.1109/access.2020.2997710
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Automatic Skin Cancer Detection in Dermoscopy Images Based on Ensemble Lightweight Deep Learning Network

Abstract: The complex detection background and lesion features make the automatic detection of dermoscopy image lesions face many challenges. The previous solutions mainly focus on using larger and more complex models to improve the accuracy of detection, there is a lack of research on significant intraclass differences and inter-class similarity of lesion features. At the same time, the larger model size also brings challenges to further algorithm application; In this paper, we proposed a lightweight skin cancer recogn… Show more

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Cited by 186 publications
(98 citation statements)
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References 54 publications
(76 reference statements)
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“…To control the imbalanced datasets, they utilized a loss function based on the Jaccard distance and the focal loss. Wei et al [191] proposed a skin lesion recognition system based on fine-grained classification to discriminate features. A different lightweight CNN was utilized for segmentation and classification.…”
Section: Deep Learningmentioning
confidence: 99%
“…To control the imbalanced datasets, they utilized a loss function based on the Jaccard distance and the focal loss. Wei et al [191] proposed a skin lesion recognition system based on fine-grained classification to discriminate features. A different lightweight CNN was utilized for segmentation and classification.…”
Section: Deep Learningmentioning
confidence: 99%
“…Another method to extract features based on deep learning [92], which use Encoder-decoder Fully Convolutional Network (FCN) method, is suitable for small volumes of input data and requires only a few parameters, making the method easy to interpret. Also, up to 73% of the reviewed skin lesion classification methods were based on the deep learning algorithm (KNN), where these models based on transfer learning like GoogleNet and Inception-v3 in [72], DenseNet 201 in [73], AlexNet in [79,80] Inception v3, InceptionResNet-v2, and ResNet 152 in [84], fusion MobileNet and DenseNet in [85], DenseNet in [8]. The best accuracy was obtained among them in [86] GoogelNet 99.29%, in [79] AlexNet 98.61%, and the DenseNet area under curve AUC is 98.16%.…”
Section: Discussionmentioning
confidence: 99%
“…The model achieves a 93.5 percent accuracy that is higher than previous approaches. WEI et al [85] proposed a lightweight skin cancer detection model in image classification using fine-grained classification theory based on MobileNet and DenseNet. In this model, a lesion classification network and a feature discrimination network are made up of feature extraction.…”
Section: Fig 9 Densenet Architecturementioning
confidence: 99%
“…Employing a sophisticated model with a large computation overhead might render challenges to applicability in the real world. Motivated by using a less sophisticated model, researchers in [73]. Put forth a discriminant dermoscopy image lesion recognition model.…”
Section: Deep Learning With Transfer Learning and Image Augmentationmentioning
confidence: 99%