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INRA
24, chemin de Borde Rouge –Auzeville – CS52627
31326 Castanet Tolosan CEDEX - France

Dernière mise à jour : Mai 2018

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Fractionation of AgroResources and Environment lab

CHAPILLON Laurent

PhD Student

Adress: UMR FARE, 2, Esplanade Roland-Garros, BP 224, 51686 Reims cedex 2

Phone: +33 (0)3 26 77

Email: laurent.chapillon@univ-reims.fr

Carrière

2020-2023: PhD student at FARE

2020: Internship at INRAE Orléans : Rrecognition of cell types from hyperspectral images : comparison of statistical models

Education

2018-2020 : Master degree in Image and Signal processing, Bourgogne University at Dijon, France

2017-2018 : Bachelor in Electronics, Bourgogne University at Dijon, France

Skills

Computer science, Image processing, Machine/deep learning

Research interests

Lignocellulosic biomass is recalcitrant to enzymatic deconstruction. To better understand this recalcitrance, I will use a computational approach and I will develop a mathematical model using confocal images of poplar tissues during its enzymatic deconstruction. Predictions of the model will be tested on different biomass species.