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Image-to-Image Regression with Distribution-Free Uncertainty Quantification and Applications in Imaging

About

Image-to-image regression is an important learning task, used frequently in biological imaging. Current algorithms, however, do not generally offer statistical guarantees that protect against a model's mistakes and hallucinations. To address this, we develop uncertainty quantification techniques with rigorous statistical guarantees for image-to-image regression problems. In particular, we show how to derive uncertainty intervals around each pixel that are guaranteed to contain the true value with a user-specified confidence probability. Our methods work in conjunction with any base machine learning model, such as a neural network, and endow it with formal mathematical guarantees -- regardless of the true unknown data distribution or choice of model. Furthermore, they are simple to implement and computationally inexpensive. We evaluate our procedure on three image-to-image regression tasks: quantitative phase microscopy, accelerated magnetic resonance imaging, and super-resolution transmission electron microscopy of a Drosophila melanogaster brain.

Anastasios N Angelopoulos, Amit P Kohli, Stephen Bates, Michael I Jordan, Jitendra Malik, Thayer Alshaabi, Srigokul Upadhyayula, Yaniv Romano• 2022

Related benchmarks

TaskDatasetResultRank
Uncertainty EstimationReal-Noise
Uncertainty Interval Length0.03
36
Image ReconstructionMRI
Uncertainty Interval Length0.092
30
Uncertainty EstimationPoisson noise dataset
Uncertainty Interval Length0.039
30
Uncertainty EstimationGaussian noise dataset
Uncertainty Interval Length0.055
30
Image ReconstructionQPI
Uncertainty Interval Length0.058
30
Uncertainty-bound predictionPoisson--
8
Image ReconstructionGAUSSIAN
MSE6.00e-4
6
Image ReconstructionMRI
MSE0.001
6
Image ReconstructionPoisson
MSE3.00e-4
6
Image ReconstructionReal-Noise
MSE4.00e-4
6
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