A Comparative Performance Evaluation of Various Classification Models for Detection and Classification of Flying Insects

IF 0.6 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY
Nithin Kumar, Nagarathna L. Vijay Kumar, Francesco Flammini
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引用次数: 0

Abstract

Agriculture has long been a part of Indian culture. It is known as the Indian economy’s backbone. Agriculture contributes to 17 % of the Indian GDP, but still, farmers confront several problems in growing their crops, one among them is insect pests. “Computational Entomology” is a branch of data mining that assists farmers in overcoming the challenges of damaging insect pests by utilizing appropriate sensors and methodologies for pest classification and application of the pesticides at the right time. The authors used various machine learning and deep learning algorithms to classify insects and examine the influence of classification performance on multiple classes of insects often found in Indian agricultural fields with varying numbers of data and classification models. The study found that proposed CNN based classification model performs better than other classification models in insect categorization, with a classification accuracy of 94,6 % . The research work done till now in the field of computational entomology deals with the insects grown in laboratory colonies or well-developed insects grown in the same geographic region and condition, but we have evaluated the performance of different classification models using random images available over the internet to select the well-suited classification model to classify flying insects . Applications with precise insect classification using machine learning and deep learning algorithms would have significant implications for entomological research. It is necessary to develop an automated insect classification techniques to provide a foundation for future research in the field of computational entomology
飞虫检测与分类的几种分类模型性能比较评价
农业长期以来一直是印度文化的一部分。它被称为印度经济的支柱。农业贡献了印度国内生产总值的17%,但农民在种植作物时仍然面临着一些问题,其中之一就是害虫。“计算昆虫学”是数据挖掘的一个分支,通过使用适当的传感器和方法对害虫进行分类并在适当的时候施用杀虫剂,帮助农民克服破坏性害虫的挑战。作者使用各种机器学习和深度学习算法对昆虫进行分类,并使用不同数量的数据和分类模型检查分类性能对印度农业领域中常见的多种昆虫的影响。研究发现,本文提出的基于CNN的分类模型在昆虫分类方面的表现优于其他分类模型,分类准确率为94.6%。目前在计算昆虫学领域所做的研究工作都是针对在实验室中生长的昆虫和在相同地理区域和条件下生长的发育良好的昆虫,但我们利用互联网上的随机图像来评估不同分类模型的性能,以选择最适合的分类模型来对飞行昆虫进行分类。利用机器学习和深度学习算法对昆虫进行精确分类的应用将对昆虫学研究产生重大影响。有必要开发一种昆虫自动分类技术,为未来计算昆虫学领域的研究奠定基础
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Interdisciplinary Description of Complex Systems
Interdisciplinary Description of Complex Systems SOCIAL SCIENCES, INTERDISCIPLINARY-
自引率
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发文量
28
审稿时长
3 weeks
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