State-of-the-art algorithms
DenoisEM offers several state-of-the-art denoising and deconvolution algorithms such as non-local means, BLS-GSM, Tikhonov deconvolution, etc.
DenoisEM offers several state-of-the-art denoising and deconvolution algorithms such as non-local means, BLS-GSM, Tikhonov deconvolution, etc.
Automated parameter estimation and common ImageJ tools allow for fast parameter optimization.
DenoisEM has a GPU accelerated back-end that ensures massive parallel computing.
The GPU accelerated back-end and meta-data storage allow for scalable and reproducible image denoising.
DenoisEM is developed by the TELIN department at Ghent University and the Bio Informatics Core at VIB. The GPU backbone is driven by Quasar, an in-house programming language of the TELIN department.
If you use our plugin for your work, we ask to acknowledge the following reference:
Joris Roels, Frank Vernaillen, Anna Kremer, Amanda Goncalves, Jan Aelterman, Hiep Q. Luong, Bart Goossens, Wilfried Philips, Saskia Lippens, Yvan Saeys, "An interactive ImageJ plugin for semi-automated image denoising in electron microscopy", Nature Communications, 11(1):1–13; doi: https://doi.org/10.1038/s41467-020-14529-0