Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Barbedo, Jayme
2019.
A Review on the Use of Unmanned Aerial Vehicles and Imaging Sensors for Monitoring and Assessing Plant Stresses.
Drones,
Vol. 3,
Issue. 2,
p.
40.
Siebring, Jasper
Valente, João
Domingues Franceschini, Marston Heracles
Kamp, Jan
and
Kooistra, Lammert
2019.
Object-Based Image Analysis Applied to Low Altitude Aerial Imagery for Potato Plant Trait Retrieval and Pathogen Detection.
Sensors,
Vol. 19,
Issue. 24,
p.
5477.
Cassedy, Arabelle
Mullins, Ewen
and
O'Kennedy, Richard
2019.
Rapid Antibody-based Technologies in Food Analysis.
p.
282.
Holman, Fenner H.
Riche, Andrew B.
Castle, March
Wooster, Martin J.
and
Hawkesford, Malcolm J.
2019.
Radiometric Calibration of ‘Commercial off the Shelf’ Cameras for UAV-Based High-Resolution Temporal Crop Phenotyping of Reflectance and NDVI.
Remote Sensing,
Vol. 11,
Issue. 14,
p.
1657.
Handayani, Tri
Gilani, Syed Abdullah
and
Watanabe, Kazuo N.
2019.
Climatic changes and potatoes: How can we cope with the abiotic stresses?.
Breeding Science,
Vol. 69,
Issue. 4,
p.
545.
Li, Yu
Qian, Meiyu
Liu, Pengfeng
Cai, Qian
Li, Xiaoying
Guo, Junwen
Yan, Huan
Yu, Fengyuan
Yuan, Kun
Yu, Juan
Qin, Luman
Liu, Hongxin
Wu, Wan
Xiao, Peiyun
and
Zhou, Ziwei
2019.
The recognition of rice images by UAV based on capsule network.
Cluster Computing,
Vol. 22,
Issue. S4,
p.
9515.
Syeda, Iqra Hassan
Alam, Mansoor Muhammad
Illahi, Usman
and
Su'ud, Mazliham Muhammad
2021.
Advance control strategies using image processing, UAV and AI in agriculture: a review.
World Journal of Engineering,
Vol. 18,
Issue. 4,
p.
579.
Borra-Serrano, I.
Leus, L.
Wang, Shusheng
Van Huylenbroeck, J.
Lootens, P.
and
Van Laere, K.
2021.
A view from above: the use of drones and image-based phenotyping in breeding and production of woody ornamentals.
Acta Horticulturae,
p.
1.
Feng, Lei
Chen, Shuangshuang
Zhang, Chu
Zhang, Yanchao
and
He, Yong
2021.
A comprehensive review on recent applications of unmanned aerial vehicle remote sensing with various sensors for high-throughput plant phenotyping.
Computers and Electronics in Agriculture,
Vol. 182,
Issue. ,
p.
106033.
Rodríguez, Jorge
Lizarazo, Iván
Prieto, Flavio
and
Angulo-Morales, Victor
2021.
Assessment of potato late blight from UAV-based multispectral imagery.
Computers and Electronics in Agriculture,
Vol. 184,
Issue. ,
p.
106061.
Neupane, Krishna
and
Baysal-Gurel, Fulya
2021.
Automatic Identification and Monitoring of Plant Diseases Using Unmanned Aerial Vehicles: A Review.
Remote Sensing,
Vol. 13,
Issue. 19,
p.
3841.
Olson, Daniel
and
Anderson, James
2021.
Review on unmanned aerial vehicles, remote sensors, imagery processing, and their applications in agriculture.
Agronomy Journal,
Vol. 113,
Issue. 2,
p.
971.
Sun, Chen
Zhou, Jing
Ma, Yuchi
Xu, Yijia
Pan, Bin
and
Zhang, Zhou
2022.
A review of remote sensing for potato traits characterization in precision agriculture.
Frontiers in Plant Science,
Vol. 13,
Issue. ,
Chen, Zhulin
Wang, Xuefeng
and
Sun, Shanshan
2022.
Estimating the total nitrogen content of Aquilaria sinensis leaves based on a hybrid feature selection algorithm and image data from a modified digital camera.
Biosystems Engineering,
Vol. 213,
Issue. ,
p.
89.
León-Rueda, William A.
León, Camilo
Caro, Sandra Gómez-
and
Ramírez-Gil, Joaquín Guillermo
2022.
Identification of diseases and physiological disorders in potato via multispectral drone imagery using machine learning tools.
Tropical Plant Pathology,
Vol. 47,
Issue. 1,
p.
152.
Chakrabarti, S. K.
Sharma, Sanjeev
and
Shah, Mohd Abas
2022.
Sustainable Management of Potato Pests and Diseases.
p.
1.
Fraser, Benjamin T.
Bunyon, Christine L.
Reny, Sarah
Lopez, Isabelle Sophia
and
Congalton, Russell G.
2022.
Analysis of Unmanned Aerial System (UAS) Sensor Data for Natural Resource Applications: A Review.
Geographies,
Vol. 2,
Issue. 2,
p.
303.
Abdullah, Hasan M.
Mohana, Nusrat T.
Khan, Bhoktear M.
Ahmed, Syed M.
Hossain, Maruf
Islam, KH Shakibul
Redoy, Mahadi H.
Ferdush, Jannatul
Bhuiyan, M.A.H.B.
Hossain, Motaher M.
and
Ahamed, Tofayel
2023.
Present and future scopes and challenges of plant pest and disease (P&D) monitoring: Remote sensing, image processing, and artificial intelligence perspectives.
Remote Sensing Applications: Society and Environment,
Vol. 32,
Issue. ,
p.
100996.
Singh, Pratyasha
Pani, Aparupa
Mujumdar, Arun S.
and
Shirkole, Shivanand S.
2023.
New strategies on the application of artificial intelligence in the field of phytoremediation.
International Journal of Phytoremediation,
Vol. 25,
Issue. 4,
p.
505.
Franceschini, Marston H.D.
Brede, Benjamin
Kamp, Jan
Bartholomeus, Harm
and
Kooistra, Lammert
2024.
Detection of a vascular wilt disease in potato (‘Blackleg’) based on UAV hyperspectral imagery: Can structural features from LiDAR or SfM improve plant-wise classification accuracy?.
Computers and Electronics in Agriculture,
Vol. 227,
Issue. ,
p.
109527.