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Advisor(s)
Abstract(s)
Image segmentation plays a vital role in
providing sustainable medical care in this evolving biomedical
image processing technology. Nowadays, it is considered one of
the most important research directions in the computer vision
field. Since the last decade, deep learning-based medical image
processing has become a research hotspot due to its exceptional
performance. In this paper, we present a review of different
deep learning techniques used to segment fetal 2D images.
First, we explain the basic ideas of each approach and then
thoroughly investigate the methods used for the segmentation
of fetal images. Secondly, the results and accuracy of different
approaches are also discussed. The dataset details used for
assessing the performance of the respective method are also
documented. Based on the review studies, the challenges and
future work are also pointed out at the end. As a result, it is
shown that deep learning techniques are very effective in the
segmentation of fetal 2D images.
Description
Keywords
Image segmentation Fetal images Deep learning techniques CNN
Pedagogical Context
Citation
Rodrigues, Pedro João; Rehman, M. Anees ur; Igrejas, Getúlio (2022). Segmentation of fetal 2D images with deep learning: a review. In 2022 International Conference on Electrical, Computer, Communications and Mechatronics Engineering (ICECCME). p. 1-8. ISBN 978-1-6654-7095-7
Publisher
IEEE
