Using information from images for plantation monitoring: A review of solutions for smallholders

Information Processing in Agriculture - Tập 7 - Trang 109-119 - 2020
Bayu Taruna Widjaja Putra1, Peeyush Soni2, Bambang Marhaenanto1, Pujiyanto3, Soni Sisbudi Harsono1, Spyros Fountas4
1Laboratory of Precision Agriculture and Geoinformatics, Faculty of Agricultural Technology, Jember University, Jember 68121, East Java, Indonesia
2Department of Agricultural and Food Engineering, Indian Institute of Technology Kharagpur, Kharagpur 721302, India
3Indonesian Coffee and Cocoa Research Institute (ICCRI), Jember, East Java, Indonesia
4Agricultural University of Athens, Iera Odos 75, 11845 Athens, Greece

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