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Abstract:
Video sensors and agricultural IoT (internet of things) have been widely used in the informationalized orchards. In order to realize intelligent-unattended early warning for disease-pest, this paper presents convolutional neural network (CNN) early warning for apple skin lesion image, which is real-time acquired by infrared video sensor. More specifically, as to skin lesion image, a suite of processing methods is devised to simulate the disturbance of variable orientation and light condition which occurs in orchards. It designs a method to recognize apple pathologic images based on CNN, and formulates a self-adaptive momentum rule to update CNN parameters. For example, a series of experiments are carried out on the recognition of fruit lesion image of apple trees for early warning. The results demonstrate that compared with the shallow learning algorithms and other involved, well-known deep learning methods, the recognition accuracy of the proposal is up to 96.08%, with a fairly quick convergence, and it also presents satisfying smoothness and stableness after convergence. In addition, statistics on different benchmark datasets prove that it is fairly effective to other image patterns concerned. Copyright © by HIGH TECHNOLOGY LETTERS PRESS.
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High Technology Letters
ISSN: 1006-6748
Year: 2016
Issue: 1
Volume: 22
Page: 67-74
Cited Count:
SCOPUS Cited Count: 16
ESI Highly Cited Papers on the List: 0 Unfold All
WanFang Cited Count:
Chinese Cited Count:
30 Days PV: 5
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