An Improved Convolutional Neural Network for the Image Enhancement

Muhammad Fiaz,Mahmoud Ahmad Al-Khasawneh, Ghulam Irtaza

2023 International Conference on Business Analytics for Technology and Security (ICBATS)(2023)

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摘要
Four-dimensional cone-beam computed tomography, or 4D CBCT, is a technique used in image-guided radiation treatment to generate a series of phase-resolved reconstructions of the patient's anatomy. This is done to improve radiation therapy's capacity to target the tumour with more precision. However, both noise and streaking aberrations significantly reduce the quality of 4D CBCT pictures. This technique is known as "very sparse-view CT," and it gets its name from the fact that it only requires a limited number of under-sampled projections to reconstruct each phase of a phase-resolved picture. The strategy's name derives from the fact that it employs a limited number of predictions to achieve its objectives. Customers can select between two specialized Convolution Neural Network (CNN) models: N-Net and the proposed model. These models were developed to boost our confidence in the quality of the 4D CBCT images we provide. To execute this assignment, it was critical to have access to a large dataset. This is now achievable because of research that resulted in an advancement in 4D CBCT that made it practicable. Each phase-resolved picture produced by the N-Net network, which is presently under development, is expected to outperform the image produced before it in the production chain. This earlier picture was rebuilt using U-Net using the complete projection data. This was done to demonstrate the effectiveness of the N-Net technique. This is done to ensure that the reconstructed picture has the maximum possible level of accuracy. The proposed model network is based on the N-Net foundation and takes into consideration the temporal correlations visible in phase-resolved pictures. After assessing the validity of the suggested CNNs using XCAT simulation data, further testing was performed utilizing real patient 4D CBCT datasets to corroborate the findings. We went through all of this difficulty in order to assist CNN. Each of these networks exceeds the most powerful CNN models currently available as well as the two most complex iterative strategies in terms of their ability to minimize streaking artefacts and noise while also obtaining distinguishing features. The proposed approach's ability to tackle difficult tasks requiring a diverse mix of patient datasets and imaging technologies demonstrates its broad applicability. This was one of the first things we learned about the problem.
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关键词
Four-Dimensional Cone-Beam Computed Tomography,Convolution Neural Network,Deep Learning,Image Enhancement
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