An Efficient Insect Pest Classification Using Multiple Convolutional Neural Network Based Models
Hieu T. Ung, Huy Q. Ung, Binh T. Nguyen

TL;DR
This paper proposes a multi-model CNN approach for insect pest classification, achieving higher accuracy than existing methods on public datasets, thus enabling faster and more reliable pest identification.
Contribution
It introduces a combination of attention, feature pyramid, and fine-grained CNN models for improved pest classification accuracy.
Findings
Achieved 74.13% accuracy on IP102 dataset.
Achieved 99.78% accuracy on D0 dataset.
Outperformed state-of-the-art methods in insect pest classification.
Abstract
Accurate insect pest recognition is significant to protect the crop or take the early treatment on the infected yield, and it helps reduce the loss for the agriculture economy. Design an automatic pest recognition system is necessary because manual recognition is slow, time-consuming, and expensive. The Image-based pest classifier using the traditional computer vision method is not efficient due to the complexity. Insect pest classification is a difficult task because of various kinds, scales, shapes, complex backgrounds in the field, and high appearance similarity among insect species. With the rapid development of deep learning technology, the CNN-based method is the best way to develop a fast and accurate insect pest classifier. We present different convolutional neural network-based models in this work, including attention, feature pyramid, and fine-grained models. We evaluate our…
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Taxonomy
TopicsSmart Agriculture and AI · Date Palm Research Studies · Mosquito-borne diseases and control
