Rapid species discrimination of similar insects using hyperspectral imaging and lightweight edge artificial intelligence

Author:

Wang Xuquan123ORCID,Ma Zhiyuan123,Xing Yujie123,Peng Tianfan123,Dun Xiong123,He Zhuqing4,Zhang Jian4ORCID,Cheng Xinbin123

Affiliation:

1. MOE Key Laboratory of Advanced Micro-Structured Materials , Shanghai 200092, People’s Republic of China

2. Institute of Precision Optical Engineering, School of Physics Science and Engineering, Tongji University , Shanghai 200092, People’s Republic of China

3. Frontiers Science Center of Digital Optics , Shanghai 200092, People’s Republic of China

4. East China Normal University , Shanghai 200241, People’s Republic of China

Abstract

Species discrimination of insects is an important aspect of ecology and biodiversity research. The traditional methods based on human visual experience and biochemical analysis cannot strike a balance between accuracy and timeliness. Morphological identification using computer vision and machine learning is expected to solve this problem, but image features have poor accuracy for very similar species and usually require complicated networks that are unfriendly to portable edge devices. In this work, we propose a fast and accurate species discrimination method of similar insects using hyperspectral features and lightweight machine learning algorithm. Feature regions selection, feature spectra selection and model quantification are used for the optimization of discriminating network. The experimental results of six similar butterfly species in the genus of Graphium show that, compared with morphological recognition with machine vision, our work achieves a higher accuracy of 92.36 ± 3.04% and a shorter inference time of 0.6 ms, with the tiny-size convolutional neural network deployed on a neural network chip. This study provides a rapid and high-accuracy species discrimination method for insects with high appearance similarity and paves the way for field discriminations using intelligent micro-spectrometer based on on-chip microstructure and artificial intelligence chip.

Funder

National Natural Science Foundation of China

Publisher

The Royal Society

Reference39 articles.

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3. Butterfly detection and classification techniques: a review;Yasmin R;Intell. Syst. Appl.,2023

4. Identification of butterfly species with a single neural network system

5. Towards resolving the identities of the Graphium butterflies (Lepidoptera: Papilionidae) of Peninsular Malaysia

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