Research news on Deconvolution

Deconvolution as a research area focuses on developing and analyzing mathematical and computational methods to invert convolution operations, typically to recover latent signals, images, or distributions from observations corrupted by blurring and noise. It encompasses theoretical work on ill-posed inverse problems, regularization strategies, and identifiability, as well as algorithmic advances in areas such as Bayesian inference, sparse and blind deconvolution, and optimization-based reconstruction. This field is central in disciplines including signal and image processing, microscopy, astronomy, and genomics, where it enables resolution enhancement, feature recovery, and quantitative interpretation of measurements that are intrinsically convolved with system response functions.

An interplanetary shortcut can speed up trips to Mars

Whether it's robotic rovers heading to Mars or, one day, a crew of astronauts, a round-trip journey is an incredibly long one. But there may be a way to find a shortcut. A new study published in the journal Acta Astronautica ...

Scientists adapt astronomy method to unblur microscopy images

A team led by researchers at HHMI's Janelia Research Campus has adapted a class of techniques employed in astronomy to unblur images of far-away galaxies for use in the life sciences, providing biologists with a faster and ...