Semi-Supervised Gan for medical image segmentation
Full Text |
Pdf
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Author |
Pallavi Adke, Shweta Patil, Darshana Bhavsar and Aishwarya Mane
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e-ISSN |
1819-6608 |
On Pages
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2532-2539
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Volume No. |
18
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Issue No. |
22
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Issue Date |
January 30, 2024
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DOI |
https://doi.org/10.59018/1123305
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Keywords |
echocardiography, image segmentation, semi-supervised GAN, left ventricle, convolutional neural network.
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Abstract
Echocardiography is a popular ultrasound imaging method used for the diagnosis of heart conditions. With the
advent of numerous image processing algorithms, echocardiographic image segmentation has become more significant.
This is a crucial stage since it offers a framework for evaluating numerous cardiac parameters, including LV volume and
heart wall, valve motion, ejection fraction, thickness, etc. All these factors are crucial for determining a heart's health. The
task of manual segmentation requires skilled operators and takes a lot of time. By requiring the discriminator network to
output class labels, we extend Generative Adversarial Networks to the semi-supervised type. This paper examines image
segmentation techniques for echocardiography to find the borders of the left ventricle. In this paper, we introduce a new
convolution neural network model for the auto-segmentation of the left ventricle in echo images. The division of a picture
into regions is known as image segmentation. Segments, that computer vision can use to automatically understand. This
method makes it easier to simultaneously evaluate and diagnose echo pictures. The segmentation of echocardiographic
images can be utilized to measure cardiac characteristics like heart wall thickness.
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