2022
DOI: 10.1007/978-3-031-09282-4_12
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Hierarchical Approach for the Classification of Multi-class Skin Lesions Based on Deep Convolutional Neural Networks

Abstract: Skin lesion is one of the most critical challenges nowadays due to the difficulty of distinguishing a benign lesion from a malignant one. Melanoma represents a malignant melanocytic type of cancer among the most dangerous ones. In contrast, basal cell carcinoma and squamous cell carcinoma represent no malignant melanocytic types of cancer that threaten many human lives. Fortunately, there is some possibility of a cure it if is early detected and well treated. Currently, dermatologists use a hierarchical visual… Show more

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“…The most recent developments since the year 2021 include the combination of deep convnets with bidirectional short‐ and long‐term memory networks 1 ; the combination of mask‐based region of interest cropping, classification based on convnets, and class balancing 17 ; using distributed densely connected convnets 41 ; hierarchical arrangement of convnet‐based classifiers 2 ; comparison of different architectures 11 ; and careful training of a light architecture, usable in a mobile environment as well 21 …”
Section: Related Workmentioning
confidence: 99%
“…The most recent developments since the year 2021 include the combination of deep convnets with bidirectional short‐ and long‐term memory networks 1 ; the combination of mask‐based region of interest cropping, classification based on convnets, and class balancing 17 ; using distributed densely connected convnets 41 ; hierarchical arrangement of convnet‐based classifiers 2 ; comparison of different architectures 11 ; and careful training of a light architecture, usable in a mobile environment as well 21 …”
Section: Related Workmentioning
confidence: 99%