Published 31-07-2024
Keywords
- Deep Learning,
- Image Reconstruction,
- Medical Imaging,
- Diagnostic Accuracy,
- Noise Reduction
- Artifact Suppression,
- Deep Learning Models,
- Experimental Results ...More
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Abstract
This research paper explores the application of deep learning techniques in the field of medical imaging for image reconstruction. The primary goal is to improve the quality of medical images, thereby enhancing diagnostic accuracy. Traditional image reconstruction methods often struggle with noise reduction and artifact suppression, leading to suboptimal images. Deep learning offers a promising solution by learning complex patterns directly from data. This paper presents an overview of deep learning-based image reconstruction methods, discusses their advantages over traditional approaches, and highlights their potential impact on medical imaging. Experimental results demonstrate the effectiveness of deep learning models in improving image quality and diagnostic accuracy across various medical imaging modalities.
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References
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