Self-Supervised Denoiser Framework
Emilien Valat, Andreas Hauptmann, Ozan \"Oktem

TL;DR
The paper introduces SDF, a self-supervised denoising framework for industrial CT that improves image quality from undersampled data without needing ground-truth images, leveraging sinogram data for training.
Contribution
SDF is a novel self-supervised training method that enhances CT image reconstruction from sparse data by training in sinogram space without ground-truth images.
Findings
SDF outperforms existing methods in PSNR for 2D and 3D CT.
SDF effectively pre-trains denoisers with limited high-quality data.
SDF improves image quality when fine-tuned on few examples.
Abstract
Reconstructing images using Computed Tomography (CT) in an industrial context leads to specific challenges that differ from those encountered in other areas, such as clinical CT. Indeed, non-destructive testing with industrial CT will often involve scanning multiple similar objects while maintaining high throughput, requiring short scanning times, which is not a relevant concern in clinical CT. Under-sampling the tomographic data (sinograms) is a natural way to reduce the scanning time at the cost of image quality since the latter depends on the number of measurements. In such a scenario, post-processing techniques are required to compensate for the image artifacts induced by the sinogram sparsity. We introduce the Self-supervised Denoiser Framework (SDF), a self-supervised training method that leverages pre-training on highly sampled sinogram data to enhance the quality of images…
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Taxonomy
TopicsAdvanced Algorithms and Applications
