Abstract
The patient’s lifetime is significantly increased by an early detection of
Skin Cancer (SC). Nevertheless, none of the existing works
concentrated on analyzing the pitting/crusting ratio. Therefore, this
paper proposes an effective Dermoscopy, Deep Incremental
Convolutional Elastic-tanh Pooling Neural- Cosinu-sigmoidal Linear
Unit Network (DICEPN-CLUN)-based pitting/crusting ratio
estimation and multiclass SC classification employing dermoscopy
images. Primarily, the International Skin Imaging Collaboration-2019
(ISIC-2019) dataset is gathered and then pre-processed. Afterward, the
hair removal process is done, followed by lesion segmentation.
Likewise, from the segmented lesions, the 3D heat map is constructed.
Similarly, from the dataset, the Metadata is extracted, followed by data
pre-processing. Then, the features are extracted. In the meantime, the
pitting/crusting region identification and pitting/crusting ratio
estimation are carried out. An effective Fuzzy Rational Quadratic
Weibull Inference System (FRQWIS) is established to identify the PCR.
Lastly, the eight categories of SC are efficiently classified by the
proposed DICEPN-CLUN. Hence, the proposed work obtained better
outcomes with 99.9046% accuracy.
Authors
N. Jasmine, S. Preetha
Sri Ramkrishna College of Arts and Science for Women, India
Keywords
Skin Cancer (SC), Pitting/Crusting Ratio (PCR), Melanoma, Dermoscopy, Deep Incremental Convolutional Elastic-tanh Pooling Neural- Cosinu-sigmoidal Linear Unit Network (DICEPN-CLUN), Exponential Rotated Happycat Function-UNet (ERHF-UNet), and Lesion Segmentation (LS)