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Using deep domain adaptation for image-based plant disease detection
Author(s) -
E. Rezvaya,
Pavel Goncharov,
G. Ososkov
Publication year - 2020
Publication title -
sistemnyj analiz v nauke i obrazovanii
Language(s) - English
Resource type - Journals
ISSN - 2071-9612
DOI - 10.37005/2071-9612-2020-2-59-69
Subject(s) - computer science , artificial intelligence , domain (mathematical analysis) , transfer of learning , adaptation (eye) , metric (unit) , deep learning , machine learning , plant disease , domain adaptation , artificial neural network , pattern recognition (psychology) , mathematics , engineering , biology , mathematical analysis , operations management , microbiology and biotechnology , neuroscience , classifier (uml)
Crop losses due to plant diseases isa serious problem for the farming sector of agricultureand the economy. Therefore, a multi-functional Plant Disease Detection Platform (PDDP) was developed in the LIT JINR. Deep learning techniques are successfully used in PDDP to solve the problem of recognizing plant diseases from photographs of their leaves. However, such methods require a large training dataset. At the same time, there are number of methods used to solve classification problems in cases of a small training dataset, asfor example,domain adaptation(DA)methods.In this paper, a comparative study of three DA methods is performed:Domain-Adversarial Training of Neural Networks (DANN), two-steps transfer learning and Unsupervised Domain Adaptation with Deep Metric Learning (M-ADDA).The advantage of the M-ADDA methodwas shown, which allowed toachieve 92% ofclassification accuracy.

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