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Automatic insect identification system based on SE-ResNeXt

Automatic insect identification system based on SE-ResNeXt The Wudalianchi Scenic Area in Heilongjiang Province is the greatest place in the world to study species adaption and the evolution of biological communities. To solve the problems of heavy workload, poor timeliness, strong professionalism, and low accuracy in insect identification, an automatic insect identification system based on SE-ResNeXt is proposed. Firstly, to be suitable for the study of Wudalianchi insects, the dataset adopts the images of 105 species of eight orders insect in Wudalianchi. Then, through the comparison of three convolution neural networks, SE-ResNeXt has higher accuracy of insect identification than ResNet and Inception-V4, and its recall, precision, F1-score and accuracy all reach over 98%. Finally, based on Django framework, the website and app of system are built to realise the visualisation of identification results and the digital storage of insect data in Wudalianchi. The system has the characteristics of strong interactivity and convenient operation, and it was designed to provide technical assistance for insect protection, insect knowledge popularisation in agriculture and forestry, and a data foundation for the long-term evolution of insect variety in Wudalianchi, China. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png International Journal of Systems, Control and Communications Inderscience Publishers

Automatic insect identification system based on SE-ResNeXt

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Publisher
Inderscience Publishers
Copyright
Copyright © Inderscience Enterprises Ltd
ISSN
1755-9340
eISSN
1755-9359
DOI
10.1504/ijscc.2023.127487
Publisher site
See Article on Publisher Site

Abstract

The Wudalianchi Scenic Area in Heilongjiang Province is the greatest place in the world to study species adaption and the evolution of biological communities. To solve the problems of heavy workload, poor timeliness, strong professionalism, and low accuracy in insect identification, an automatic insect identification system based on SE-ResNeXt is proposed. Firstly, to be suitable for the study of Wudalianchi insects, the dataset adopts the images of 105 species of eight orders insect in Wudalianchi. Then, through the comparison of three convolution neural networks, SE-ResNeXt has higher accuracy of insect identification than ResNet and Inception-V4, and its recall, precision, F1-score and accuracy all reach over 98%. Finally, based on Django framework, the website and app of system are built to realise the visualisation of identification results and the digital storage of insect data in Wudalianchi. The system has the characteristics of strong interactivity and convenient operation, and it was designed to provide technical assistance for insect protection, insect knowledge popularisation in agriculture and forestry, and a data foundation for the long-term evolution of insect variety in Wudalianchi, China.

Journal

International Journal of Systems, Control and CommunicationsInderscience Publishers

Published: Jan 1, 2023

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