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UncertaINR: Uncertainty Quantification of End-to-End Implicit Neural Representations for Computed Tomography

arXiv (Cornell University)(2022)

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Abstract
Implicit neural representations (INRs) have achieved impressive results for scene reconstruction and computer graphics, where their performance has primarily been assessed on reconstruction accuracy. However, in medical imaging, where the reconstruction problem is underdetermined and model predictions inform high-stakes diagnoses, uncertainty quantification of INR inference is critical. To that end, we study UncertaINR: a Bayesian reformulation of INR-based image reconstruction, for computed tomography (CT). We test several Bayesian deep learning implementations of UncertaINR and find that they achieve well-calibrated uncertainty, while retaining accuracy competitive with other classical, INR-based, and CNN-based reconstruction techniques. In contrast to the best-performing prior approaches, UncertaINR does not require a large training dataset, but only a handful of validation images.
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Key words
uncertainty quantification,end-to-end
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