Self-supervised denoising of raw tomography detector data for improved image reconstruction
By: Israt Jahan Tulin , Sebastian Starke , Dominic Windisch and more
Potential Business Impact:
Makes blurry X-ray pictures sharp and clear.
Ultrafast electron beam X-ray computed tomography produces noisy data due to short measurement times, causing reconstruction artifacts and limiting overall image quality. To counteract these issues, two self-supervised deep learning methods for denoising of raw detector data were investigated and compared against a non-learning based denoising method. We found that the application of the deep-learning-based methods was able to enhance signal-to-noise ratios in the detector data and also led to consistent improvements of the reconstructed images, outperforming the non-learning based method.
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