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Deep Learning in Medical Applications: Lesion Segmentation in Skin Cancer Images Using Modified and Improved Encoder-Decoder Architecture

conference contribution
posted on 2024-03-13, 03:25 authored by R Kaur, H GholamHosseini, R Sinha
The rise of deep learning techniques, such as a convolutional neural network (CNN) in solving medical image problems, offered fascinating results that motivated researchers to design automatic diagnostic systems. Image segmentation is one of the crucial and challenging steps in the design of a computer-aided diagnosis system owing to the presence of low contrast between skin lesion and background, noise artifacts, color variations, and irregular lesion boundaries. In this paper, we propose a modified and improved encoder-decoder architecture with a smaller network depth and a smaller number of kernels to enhance the segmentation process. The network performs segmentation for skin cancer images to obtain information about the infected area. The proposed model utilizes the power of the VGG19 network’s weight layers for calculating rich features. The deconvolutional layers were designed to regain spatial information of the image. In addition to this, optimized training parameters were adopted to further improve the network’s performance. The designed network was evaluated for two publicly available benchmarked datasets ISIC, and PH2 consists of dermoscopic skin cancer images. The experimental observations proved that the proposed network achieved the higher average values of segmentation accuracy 95.67%, IoU 96.70%, and BF-score of 89.20% on ISIC 2017 and accuracy 98.50%, IoU 93.25%, and BF-score 84.08% on PH2 datasets as compared to other state-of-the-art algorithms on the same datasets.

History

Volume

1386 CCIS

Pagination

39-52

Location

Auckland, New Zealand

Start date

2021-01-28

End date

2021-01-29

ISSN

1865-0929

eISSN

1865-0937

ISBN-13

9783030720728

Language

eng

Title of proceedings

Communications in Computer and Information Science

Event

Geometry and Vision. First International Symposium (2021 : Auckland, New Zealand)

Publisher

Springer International Publishing

Place of publication

Berlin, Germany

Series

Communications in Computer and Information Science

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