Computational Image Formation: Simulators in the Deep Learning Era
Stanley H. Chan

TL;DR
This paper introduces the concept of computational image formation (CIF), emphasizing the design of simulators that mimic physical degradation processes to enhance image reconstruction in challenging conditions.
Contribution
It conceptualizes CIF, discusses its key attributes, and provides case studies and examples demonstrating its application in various imaging scenarios.
Findings
CIF simulators need to be accurate, fast, well-posed, and differentiable.
Multiple existing simulators are evaluated for imaging through atmospheric turbulence.
CIF can be applied to diverse problems like bad weather imaging and dynamic vision sensors.
Abstract
At the pinnacle of computational imaging is the co-optimization of camera and algorithm. This, however, is not the only form of computational imaging. In problems such as imaging through adverse weather, the bigger challenge is how to accurately simulate the forward degradation process so that we can synthesize data to train reconstruction models and/or integrating the forward model as part of the reconstruction algorithm. This article introduces the concept of computational image formation (CIF). Compared to the standard inverse problems where the goal is to recover the latent image from the observation , CIF shifts the focus to designing an approximate mapping such that while giving a good image reconstruction result. The word "computational" highlights the fact that the image formation is now replaced by a numerical simulator. While matching the mother…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Adaptive optics and wavefront sensing
MethodsFocus
