Insects identification with convolutional neural network technique in the sweet corn field

Naufal, A.P. and Kanjanaphachoat, C. and Wijaya, A. and Setiawan, N.A. and Masithoh, R.E. (2021) Insects identification with convolutional neural network technique in the sweet corn field. In: The 2nd International Conference on Sustainable Agriculture for Rural Development, 20 October 2020, Purwokerto.

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Abstract

A method to identify the type of insects with accurate and precise results is of importance. Nowadays, an automatic object identification system with increased accuracy, improved speed, and less cost have been developed. Convolutional Neural Network (CNN) implementation for image identification or classification can be done by collecting large-scale datasets containing hundreds to millions of images to study the many parameters involved in the network. This research was conducted to develop and apply the CNN model to identify eight species of insects in the sweet corn field in Thailand. Those insects were Calomycterus sp., Rhopalosiphum maidis, Frankliniella williamsi, Spodoptera frugiperda, Spodoptera litura, Ostrinia furnacalis, Mythimna separata, and Helicoverpa armigera. The CNN model in this research was built with four convolutional layers, which consist of Conv2D, batch normalization, max pooling, dropout sublayer, and a fully-connected layer. in total, 5568 images were trained with 10 trials and different train attempts for each trial, were then tested with 40 images. The result shows that the CNN model has succeeded in identifying images of sweet corn insects with 80 up to 95 prediction accuracy for images with no background. © Published under licence by IOP Publishing Ltd.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Cited by: 1; All Open Access, Gold Open Access
Uncontrolled Keywords: Agriculture; Classification (of information); Convolution; Large dataset; Regional planning; Automatic object identification; Helicoverpa armigera; Image identification; Insects identifications; Large-scale datasets; Prediction accuracy; Spodoptera frugiperda; Spodoptera litura; Convolutional neural networks
Subjects: S Agriculture > S Agriculture (General)
Divisions: Faculty of Agricultural Technology > Agricultural and Biosystems Engineering
Depositing User: Sri JUNANDI
Date Deposited: 30 Sep 2024 06:47
Last Modified: 30 Sep 2024 06:47
URI: https://ir.lib.ugm.ac.id/id/eprint/4243

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