Litcius/Paper detail

Multi-resolution convolutional neural networks for inverse problems

Feng Wang, Alberto Eljarrat, Johannes Müller, Trond R. Henninen, Rolf Erni, Christoph T. Koch

2020Scientific Reports53 citationsDOIOpen Access PDF

Abstract

Inverse problems in image processing, phase imaging, and computer vision often share the same structure of mapping input image(s) to output image(s) but are usually solved by different application-specific algorithms. Deep convolutional neural networks have shown great potential for highly variable tasks across many image-based domains, but sometimes can be challenging to train due to their internal non-linearity. We propose a novel, fast-converging neural network architecture capable of solving generic image(s)-to-image(s) inverse problems relevant to a diverse set of domains. We show this approach is useful in recovering wavefronts from direct intensity measurements, imaging objects from diffusely reflected images, and denoising scanning transmission electron microscopy images, just by using different training datasets. These successful applications demonstrate the proposed network to be an ideal candidate solving general inverse problems falling into the category of image(s)-to-image(s) translation.

Topics & Concepts

Computer scienceConvolutional neural networkInverse problemImage (mathematics)Artificial intelligenceConvergence (economics)InverseArtificial neural networkInversion (geology)AlgorithmPattern recognition (psychology)MathematicsGeometryPaleontologyEconomic growthStructural basinBiologyEconomicsMathematical analysisAdvanced X-ray Imaging TechniquesDigital Holography and MicroscopySeismic Imaging and Inversion Techniques