Integration of handcrafted and deep neural features for Melanoma classification
Date
2021-09Publisher
Brac UniversityAuthor
Rahman, Mohammad SaminoorHossain, Md. Jubayer
Islam, Siful
Kabir, Md. Nafiul
Sujon, Md. Kamrul Hasan
Metadata
Show full item recordAbstract
Deep neural networks (DNNs) are widely utilized to automate medical image in-
terpretation in many forms of cancer diagnosis and to support medical specialists
with fast data processing. Although man-made characteristics have been used to
diagnose since the 1990s, DNN is fairly new in this eld and has shown extremely
promising results. The fundamental goal of this study is to detect melanoma cancer
in its early stages by obtaining a remarkable outcome with greater accuracy. Our
purpose is to address the problem of an increase in skin cancer patients throughout
the world, as well as an exponential increase in the danger of mortality from not
commencing the diagnosis at an early stage, as a result of late detection. We propose
that the research works on handcrafted features and merges the result with deep
learning approaches with the initial help with a huge dataset of raw images. The
DNN model used in this research has multiple layers with various e ective lter-
ing processes called batch normalization and dropout also with added layers named
atten and dense. In this process, images are classi ed to predict melanoma cancer
at an early stage with Mean Shift, SIFT, and Gabor separately then the output
was ensembled with later added Raw images results to give better accuracy. With
an early integration model for separate featured databases and with a late and full
integration model for ensemble with various results from the early integrated model
we got our results. As a result, this neural network has provided an accuracy of 90%
in early models and in late and full integration 86% and 84% respectfully, which is
higher than other conventional approaches.