Harum manis mango weevil infestation classification using backpropagation neural network
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Date
2008-12-01Author
Yasmin, M. Yacob
M. Shaiful, A.R.A
Zulkifli, Husin
Rohani, S Mohamed Farook
Abdul Hallis, Abdul Aziz
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Postharvest non-destructive detection methods in fruit quality have been widely studied eversince. This include studies of maturity, bruises and detection of pests or weevil existence in fruits such as apple, banana, zucchini including mango. Regarding fruit grading, the non-destructive methods which can be used are image processing and dielectric properties. Either technique has its own benefits and drawbacks. As for image processing technique, the cost is high since suitable device to acquire the images are by using MRI or X-Ray. Whereas for dielectric method, permittivity is difficult to record because the reading is very small and are prone to environment and temperature influence. This paper analyze about classification of Harum Manis Mango infestation using dielectric sensor which was trained and tested using Back-propagation Neural Network. In addition, reviews regarding Neural Network design is also discussed.
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http://ieeexplore.ieee.org/xpls/abs_all.jsp?=&arnumber=4786780http://dspace.unimap.edu.my/123456789/7372
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