Adaptive Background Correction of Crystal Image Datasets: Towards Automated Process Control

Sensing and Imaging - Tập 21 Số 1 - 2020
Luke Kiernan1, Ian Jones1, Lauri Kurki2, Patrick J. Cullen3, Toufic El Arnaout4,5
1Innopharma Technology, Sandyford, Dublin, Ireland
2Timegate Instruments, 90590, Oulu, Finland
3School of Chemical and Biomolecular Engineering, The University of Sydney, Darlington, Australia
4Kappa Crystals Ltd, Dublin, Ireland
5School of Food Science and Environmental Health, TU Dublin - City Campus, Technological University Dublin, Dublin, Ireland

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