IEEE Access (Jan 2022)

Dermatologist-Level Classification of Skin Cancer Using Cascaded Ensembling of Convolutional Neural Network and Handcrafted Features Based Deep Neural Network

  • Akhilesh Kumar Sharma,
  • Shamik Tiwari,
  • Gaurav Aggarwal,
  • Nitika Goenka,
  • Anil Kumar,
  • Prasun Chakrabarti,
  • Tulika Chakrabarti,
  • Radomir Gono,
  • Zbigniew Leonowicz,
  • Michal Jasinski

DOI
https://doi.org/10.1109/ACCESS.2022.3149824
Journal volume & issue
Vol. 10
pp. 17920 – 17932

Abstract

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Skin cancer is caused due to unusual development of skin cells and deadly type cancer. Early diagnosis is very significant and can avoid some categories of skin cancers, such as melanoma and focal cell carcinoma. The recognition and the classification of skin malignant growth in the beginning time is expensive and challenging. The deep learning architectures such as recurrent networks and convolutional neural networks (ConvNets) are developed in the past, which are proven appropriate for non-handcrafted extraction of complex features. To additional expand the efficiency of the ConvNet models, a cascaded ensembled network that uses an integration of ConvNet and handcrafted features based multi-layer perceptron is proposed in this work. This offered model utilizes the convolutional neural network model to mine non-handcrafted image features and colour moments and texture features as handcrafted features. It is demonstrated that accuracy of ensembled deep learning model is improved to 98.3% from 85.3% of convolutional neural network model.

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