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- Title
Development of durian leaf disease detection on Android device.
- Authors
Sabarre, A. L.; Navidad, A. S.; Torbela, D. S.; Adtoon, J. J.
- Abstract
Durian is exceedingly abundant in the Philippines, providing incomes for smallholder farmers. But amidst these things, durian is still vulnerable to different plant diseases that can cause significant economic loss in the agricultural industry. The conventional way of dealing plant disease detection is through naked-eye observation done by experts. To control such diseases using the old method is extensively laborious, time-consuming and costly especially in dealing with large fields. Hence, the proponent's objective of this study is to create a standalone mobile app for durian leaf disease detection using the transfer learning approach. In this approach, the chosen network MobileNets, is pre-trained with a large scale of general datasets namely ImageNet to effective function as a generic template for visual processing. The pre-trained network transfers all the learned parameters and set as a feature extractor for the target task to be executed. Four health conditions are addressed in this study, 10 per classification with a total of 40 samples tested to evaluate the accuracy of the system. The result showed 90% in overall accuracy for detecting algalspot, cercospora, leaf discoloration and healthy leaf.
- Subjects
PHILIPPINES; ANDROID (Operating system); LEAF development; DURIAN; PLANT diseases; MOBILE apps; AGRICULTURAL industries
- Publication
International Journal of Electrical & Computer Engineering (2088-8708), 2021, Vol 11, Issue 6, p4962
- ISSN
2088-8708
- Publication type
Article
- DOI
10.11591/ijece.v11i6.pp4962-4971