Title:
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CAPSULE NEURAL NETWORKS IN CLASSIFICATION
OF SKIN LESIONS |
Author(s):
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Evgin Goceri |
ISBN:
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978-989-8704-32-0 |
Editors:
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Yingcai Xiao, Ajith Abraham and Guo Chao Peng |
Year:
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2021 |
Edition:
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Single |
Keywords:
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Capsule Network, CapsNet, Skin Disease, Lesion Classification, Deep Neural Networks, Pattern Recognition |
Type:
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Full |
First Page:
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29 |
Last Page:
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36 |
Language:
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English |
Cover:
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Full Contents:
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click to dowload
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Paper Abstract:
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Classification of skin lesions is a difficult issue even for highly experienced dermatologists and pathologists because of
several reasons such as low contrast between lesions and surrounding skin tissue, high noise, fuddled lesion boundaries,
visual similarities of skin lesions. On the other hand, early and accurate classification of lesions is crucial for timely and
accurate treatment of skin diseases. Therefore, automated methods have been developed to perform objective,
quantitative and re-producible results. Recent methods in pattern recognition and image classification is based on deep
networks, particularly convolutional neural networks. However, pooling layers providing down-sampling in these
networks lead to data loss and cause low performance in generalization. Also, convolutional neural networks cannot
transfer spatial information and instantiation parameters (e.g., pose of low-level features to each other, deformation and
texture information). To overcome these problems with dynamic routing, capsule neural networks have been proposed.
Capsules can transfer pose parameters and part-whole relationship using likelihood and spatial information between
low-level features. In this work, capsule networks applied for skin lesion classification have been explored and their
performances have been evaluated. It has been observed that although capsule networks can overcome deficiencies of
convolutional neural networks, there are only four techniques based on capsule networks in the literature to achieve
automated classifications of skin lesions. Motivated by the lack of articles on this topic, a comprehensive assessment of
the capsule networks proposed for skin lesion classification is presented in this paper. Also, strengths and weakness of
those four techniques have been presented to help the researchers interested in this area. |
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