2019
DOI: 10.35940/ijitee.b6616.129219
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Medical Image Compression using Neural Network with HGAPSO Optimization

Ravikiran H.K.*,
Dr. Jayanth J

Abstract: Lossy medical image compression has become increasingly attractive due to a drastic increase in the number of images used for diagnosis and treatment. The work focused on developing a feed-forward neural network for compression of medical images with optimization of weights using hybrid genetic and particle swarm (HGAPSO) optimization technique. The neural network can achieve a better compressed & decompressed image only with the proper training and optimized weights. Training algorithms such as back-propa… Show more

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Cited by 4 publications
(3 citation statements)
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References 14 publications
(19 reference statements)
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“…Studies [10], [35] and [36] used neural network algorithms, which are characterised by speed of delivery and accuracy of results. At the same time, there are many disadvantages associated with their use, such as the network's need for training to reach the best results, as well as the fact that the number of mock models for each type of medical image must be increased to obtain good accuracy in compression and the adoption of good initial values to exceed the additional time in the calculation and length of implementation.…”
Section: Discussionmentioning
confidence: 99%
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“…Studies [10], [35] and [36] used neural network algorithms, which are characterised by speed of delivery and accuracy of results. At the same time, there are many disadvantages associated with their use, such as the network's need for training to reach the best results, as well as the fact that the number of mock models for each type of medical image must be increased to obtain good accuracy in compression and the adoption of good initial values to exceed the additional time in the calculation and length of implementation.…”
Section: Discussionmentioning
confidence: 99%
“…Eventually, the two regions are merged at low bit rates in order to achieve a reasonable visual quality of the processed medical image. Ravikiran and Jayanth [10] focused on developing a feed-forward neural network for medical image compression using the hybrid genetic and particle swarm optimization (HGAPSO) technique to optimise weights. HGAPSO is used in this technique to overcome the back-propagation algorithm (BPA) disadvantage.…”
Section: Neural Network (Nn) Techniquesmentioning
confidence: 99%
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