If you are looking for the technical documentation or the PDF itself, you can find the detailed presentation from the on DeepRAR: A CNN-Based Approach for CT and CBCT Ring Artifact Reduction .
: The research indicates that a 2.5D architecture yields the best results. This method utilizes information from adjacent image slices to better identify and remove artifacts compared to standard 2D approaches. Dee.rar
: The network utilizes patch-based training , which helps reduce the risk of overfitting to specific anatomical structures and improves the model's ability to generalize to different datasets. If you are looking for the technical documentation
: It is designed to remove ring and partial ring artifacts that often occur in CT scans due to detector imbalances. : The network utilizes patch-based training , which
: Studies show it effectively improves image quality in both simulated and measured micro-CT data, often removing the need for manual parameter optimization or complex resampling.
The specific "paper regarding Dee.rar" most likely refers to the research titled , which discusses techniques for improving image quality through deep learning. Key Aspects of DeepRAR