基于图像的深度学习模型在农业环境中的害虫检测和分类及其挑战综述

P. Venkatasaichandrakanth, M. Iyapparaja
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引用次数: 0

摘要

摘要 农艺害虫会造成农业经济损失,因为它们会减少产量,从而降低收入。害虫控制是降低这些损失的关键,包括识别和消除这种风险。由于害虫识别是进行管理的基础,因此识别是控制的基本组成部分。利用害虫的特征进行目视识别。这些特征因动物而异,是内在的。由于识别难度很大,因此大部分工作都由现场的专家来完成,这样可以集中信息。研究人员已开发出各种技术,利用受感染叶片的图像预测作物病害。虽然利用不同的模型和方法在识别植物病害方面取得了进展,但新的进步和讨论仍然提供了改进的空间。技术可以极大地提高全球作物产量,大量数据集可用来训练模型和方法,从而发现新的改良方法来检测植物病害和解决低产问题。机器学习和深度学习在识别害虫并对其进行分类方面的有效性已被先前的研究证实。本文深入研究并批判性评估了利用深度学习对害虫或昆虫进行分类和检测的多种策略和方法。本文研究了各种方法的优点和缺点,并考虑了通过图像处理进行昆虫检测的潜在问题。最后,本文对使用深度学习对花生等植物进行害虫检测和分类的未来方向进行了分析和展望。
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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Review on Pest Detection and Classification in Agricultural Environments Using Image-Based Deep Learning Models and Its Challenges

Abstract

Agronomic pests cause agriculture to incur financial losses because they diminish production, which lowers revenue. Pest control, essential to lowering these losses, involves identifying and eliminating this risk. Since it enables management to take place, identification is the fundamental component of control. Utilizing the pest’s traits, visual identification is done. These characteristics differ between animals and are intrinsic. Since identification is so difficult, specialists in the field handle most of the work, which concentrates the information. Researchers have developed various techniques for predicting crop diseases using images of infected leaves. While progress has been made in identifying plant diseases using different models and methods, new advancements and discussions still offer room for improvement. Technology can significantly improve global crop production, and large datasets can be used to train models and approaches that uncover new and improved methods for detecting plant diseases and addressing low-yield issues. The effectiveness of machine learning and deep learning for identifying and categorizing pests has been confirmed by prior research. This paper thoroughly examines and critically evaluates the many strategies and methodologies used to classify and detect pests or insects using deep learning. The paper examines the benefits and drawbacks of various methodologies and considers potential problems with insect detection via image processing. The paper concludes by providing an analysis and outlook on the future direction of pest detection and classification using deep learning on plants like peanuts.

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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
25
期刊介绍: The journal covers a wide range of issues in information optics such as optical memory, mechanisms for optical data recording and processing, photosensitive materials, optical, optoelectronic and holographic nanostructures, and many other related topics. Papers on memory systems using holographic and biological structures and concepts of brain operation are also included. The journal pays particular attention to research in the field of neural net systems that may lead to a new generation of computional technologies by endowing them with intelligence.
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