LUCYD
LUCYD - A Feature-Driven Richardson-Lucy Deconvolution Network
6
mentions
Description
The process of acquiring microscopic images in life sciences often results in image degradation and corruption, characterised by the presence of noise and blur, which poses significant challenges in accurately analysing and interpreting the obtained data. We propse LUCYD, a novel method for the restoration of volumetric microscopy images that combines the Richardson-Lucy deconvolution formula and the fusion of deep features obtained by a fully convolutional network. By integrating the image formation process into a feature-driven restoration model, the proposed approach aims to enhance the quality of the restored images whilst reducing computational costs and maintaining a high degree of interpretability.

Architecture of the LUCYD network © Tomáš Chobola
Find LUCYD on Helmholtz Imaging Connect
Authors: Tomáš Chobola, Gesine Müller, Veit Dausmann, Anton Theileis, Jan Taucher, Jan Huisken, Tingying Peng
License
- MIT
Participating organisations
Reference papers
Mentions
- 1.Author(s): Gabriel Bon, Daniel Sapède, Cédric Matthews, Fabrice DaianPublished in 202510.1515/mim-2024-0024
- 2.Author(s): Lumin Chen, Zhiying Wu, Tianye Lei, Xuexue Bai, Ming Feng, Yuxi Wang, Gaofeng Meng, Zhen Lei, Hongbin LiuPublished in 202510.1007/978-3-032-05114-1_24
- 3.Author(s): Vaidyam Veerendra Rohit Bukka, Moran Xu, Matthew Andrew, Andriy AndreyevPublished in 202510.1515/mim-2024-0017
- 4.Author(s): Navid RabieePublished in 202510.1002/adem.202402559
- 5.Author(s): Mary Charles Sheeba, Christopher Seldev ChristopherPublished in 202410.1016/j.asej.2024.103188
- 6.Author(s): Tomáš Chobola, Gesine Müller, Veit Dausmann, Anton Theileis, Jan Taucher, Jan Huisken, Tingying PengPublished in 202310.1109/iccvw60793.2023.00419