Short communication: Insect detection using a machine learning model

IF 0.7 Q4 BIOLOGY Nusantara Bioscience Pub Date : 2021-02-20 DOI:10.13057/NUSBIOSCI/N130110
S. Homchan, Yash Gupta
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引用次数: 2

Abstract

Abstract. Homchan S, Gupta YM. 2020. Short communication: Insect detection using a machine learning model. Nusantara Bioscience 13: 69-73. The key step in characterizing any organisms and their gender highly relies on correct identification of specimens. Here we aim to classify insect and their sex by supervised machine learning (ML) model. In the present preliminary study, we used a newly developed graphical user interface (GUI) based platform to create a machine learning model for classifying two economically important cricket species. This study aims to develop ML model for Acheta domesticus and Gryllus bimaculatus species classification and sexing. An experimental investigation was conducted to use Google teachable machine GTM for preliminary cricket species detection and sexing using pre-processed 2646 still images. An alternative method for image processing is used to extract still images from high-resolution video for optimum accuracy. Out of the 2646 images, 2247 were used for training ML model and 399 were used for testing the trained model. The prediction accuracy of trained model had 100 % accuracy to identify both species and their sex. The developed trained model can be integrated into the mobile application for cricket species classification and sexing. The present study may guide professionals in the field of life science to develop ML models based on image classification, and serve as an example for researchers and taxonomists to employ machine learning for species classification and sexing in the preliminary analysis. Apart from our main goals, the paper also intends to provide the possibility of ML models in biological studies and to conduct the preliminary assessment of biodiversity.
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短通信:使用机器学习模型进行昆虫检测
摘要Homchan S,Gupta YM。2020.短通信:使用机器学习模型进行昆虫检测。Nusantara Bioscience 13:69-73。表征任何生物体及其性别的关键步骤在很大程度上取决于标本的正确识别。本文旨在通过机器学习模型对昆虫及其性别进行分类。在目前的初步研究中,我们使用了一个新开发的基于图形用户界面(GUI)的平台来创建一个机器学习模型,用于对两个经济上重要的蟋蟀物种进行分类。本研究旨在建立家鸡和双斑灰蝶物种分类和性别鉴定的ML模型。进行了一项实验调查,使用谷歌可教机器GTM,使用预处理的2646张静止图像对蟋蟀物种进行初步检测和性别鉴定。图像处理的替代方法用于从高分辨率视频中提取静止图像以获得最佳精度。在2646张图像中,2247张用于训练ML模型,399张用于测试训练后的模型。训练模型的预测准确率在识别物种及其性别方面具有100%的准确率。开发的训练模型可以集成到蟋蟀物种分类和性别鉴定的移动应用程序中。本研究可以指导生命科学领域的专业人员开发基于图像分类的ML模型,并为研究人员和分类学家在初步分析中使用机器学习进行物种分类和性别划分提供范例。除了我们的主要目标外,本文还打算在生物学研究中提供ML模型的可能性,并对生物多样性进行初步评估。
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自引率
25.00%
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审稿时长
6 weeks
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