Urmăriți
Anne-Katrin Mahlein
Anne-Katrin Mahlein
Institute of Sugar Beet Research, Göttingen
Adresă de e-mail confirmată pe ifz-goettingen.de - Pagina de pornire
Titlu
Citat de
Citat de
Anul
Plant disease detection by imaging sensors–parallels and specific demands for precision agriculture and plant phenotyping
AK Mahlein
Plant disease 100 (2), 241-251, 2016
10922016
Early detection and classification of plant diseases with support vector machines based on hyperspectral reflectance
T Rumpf, AK Mahlein, U Steiner, EC Oerke, HW Dehne, L Plümer
Computers and electronics in agriculture 74 (1), 91-99, 2010
10152010
Recent advances in sensing plant diseases for precision crop protection
AK Mahlein, EC Oerke, U Steiner, HW Dehne
European Journal of Plant Pathology 133, 197-209, 2012
6252012
Development of spectral indices for detecting and identifying plant diseases
AK Mahlein, T Rumpf, P Welke, HW Dehne, L Plümer, U Steiner, ...
Remote Sensing of Environment 128, 21-30, 2013
6132013
Hyperspectral imaging for small-scale analysis of symptoms caused by different sugar beet diseases
AK Mahlein, U Steiner, C Hillnhütter, HW Dehne, EC Oerke
Plant methods 8, 1-13, 2012
3712012
A review of advanced machine learning methods for the detection of biotic stress in precision crop protection
J Behmann, AK Mahlein, T Rumpf, C Römer, L Plümer
Precision agriculture 16, 239-260, 2015
3672015
Low-cost 3D systems: suitable tools for plant phenotyping
S Paulus, J Behmann, AK Mahlein, L Plümer, H Kuhlmann
Sensors 14 (2), 3001-3018, 2014
2962014
Benefits of hyperspectral imaging for plant disease detection and plant protection: a technical perspective
S Thomas, MT Kuska, D Bohnenkamp, A Brugger, E Alisaac, ...
Journal of Plant Diseases and Protection 125, 5-20, 2018
2772018
Hyperspectral sensors and imaging technologies in phytopathology: state of the art
AK Mahlein, MT Kuska, J Behmann, G Polder, A Walter
Annual review of phytopathology 56, 535-558, 2018
2722018
Spectral signatures of sugar beet leaves for the detection and differentiation of diseases
AK Mahlein, U Steiner, HW Dehne, EC Oerke
Precision agriculture 11, 413-431, 2010
2722010
Surface feature based classification of plant organs from 3D laserscanned point clouds for plant phenotyping
S Paulus, J Dupuis, AK Mahlein, H Kuhlmann
BMC bioinformatics 14, 1-12, 2013
2272013
Making deep neural networks right for the right scientific reasons by interacting with their explanations
P Schramowski, W Stammer, S Teso, A Brugger, F Herbert, X Shao, ...
Nature Machine Intelligence 2 (8), 476-486, 2020
1992020
Hyperspectral phenotyping on the microscopic scale: towards automated characterization of plant-pathogen interactions
M Kuska, M Wahabzada, M Leucker, HW Dehne, K Kersting, EC Oerke, ...
Plant methods 11, 1-15, 2015
1872015
Specim IQ: evaluation of a new, miniaturized handheld hyperspectral camera and its application for plant phenotyping and disease detection
J Behmann, K Acebron, D Emin, S Bennertz, S Matsubara, S Thomas, ...
Sensors 18 (2), 441, 2018
1842018
From visual estimates to fully automated sensor-based measurements of plant disease severity: status and challenges for improving accuracy
CH Bock, JGA Barbedo, EM Del Ponte, D Bohnenkamp, AK Mahlein
Phytopathology Research 2, 1-30, 2020
1662020
Remote sensing to detect plant stress induced by Heterodera schachtii and Rhizoctonia solani in sugar beet fields
C Hillnhütter, AK Mahlein, RA Sikora, EC Oerke
Field Crops Research 122 (1), 70-77, 2011
1562011
Plant phenotyping using probabilistic topic models: uncovering the hyperspectral language of plants
M Wahabzada, AK Mahlein, C Bauckhage, U Steiner, EC Oerke, ...
Scientific reports 6 (1), 22482, 2016
1482016
Fusion of sensor data for the detection and differentiation of plant diseases in cucumber
CA Berdugo, R Zito, S Paulus, AK Mahlein
Plant pathology 63 (6), 1344-1356, 2014
1332014
Metro maps of plant disease dynamics—automated mining of differences using hyperspectral images
M Wahabzada, AK Mahlein, C Bauckhage, U Steiner, EC Oerke, ...
Plos one 10 (1), e0116902, 2015
1322015
Comparison and Combination of Thermal, Fluorescence, and Hyperspectral Imaging for Monitoring Fusarium Head Blight of Wheat on Spikelet Scale
AK Mahlein, E Alisaac, A Al Masri, J Behmann, HW Dehne, EC Oerke
Sensors 19 (10), 2281, 2019
1072019
Sistemul nu poate realiza operația în acest moment. Încercați din nou mai târziu.
Articole 1–20