人工智能在害虫识别中的应用综述

IF 12.4 Q1 AGRICULTURE, MULTIDISCIPLINARY
Sourav Chakrabarty , Chandan Kumar Deb , Sudeep Marwaha , Md. Ashraful Haque , Deeba Kamil , Raju Bheemanahalli , Pathour Rajendra Shashank
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引用次数: 0

摘要

害虫对农业和生态系统的危害日益增加,需要快速和准确的诊断。依靠人类观察和分类学知识的传统技术往往是劳动密集型和耗时的。将人工智能(AI)纳入检测已成为包括昆虫学在内的农业领域的有效方法。基于人工智能的检测方法使用机器学习、深度学习算法和计算机视觉技术来自动化和改进昆虫的识别。深度学习算法,如卷积神经网络(cnn),主要用于人工智能驱动的害虫识别,通过基于图像的分类方法,根据昆虫的视觉特征对昆虫进行分类。这些方法通过分析大型昆虫图像数据库,识别与不同物种相关的不同模式和特征,彻底改变了昆虫鉴定。人工智能驱动的系统可以通过利用其他数据模式来改进害虫识别。然而,还有一些障碍需要克服,例如高质量标记数据集的稀缺性以及可扩展性和可负担性问题。尽管存在这些挑战,人工智能驱动的害虫识别和害虫管理仍有巨大的潜力。研究人员、从业者和政策制定者之间的合作是充分利用人工智能进行有害生物防治的必要条件。人工智能技术正在改变昆虫学领域,实现对害虫的高精度识别,从而实现更高效、更环保的害虫管理策略。这可以提高食品安全,减少连续喷洒杀虫剂的需要,确保食品供应链的纯度和安全性。本文综述了人工智能害虫识别的意义、方法、挑战和前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of artificial intelligence in insect pest identification - A review

Application of artificial intelligence in insect pest identification - A review
The increasing danger of insect pests to agriculture and ecosystems calls for quick, and precise diagnosis. Conventional techniques that depend on human observation and taxonomic knowledge are frequently labour-intensive and time-consuming. Incorporating artificial intelligence (AI) into detection has emerged as an effective approach in agriculture, including entomology. AI-based detection methods use machine learning, deep learning algorithms, and computer vision techniques to automate and improve the identification of insects. Deep learning algorithms, such as convolutional neural networks (CNNs), are primarily used for AI-powered insect pest identification by categorizing insects based on their visual features through image-based classification methodology. These methods have revolutionized insect identification by analyzing large databases of insect images and identifying distinct patterns and features linked to different species. AI-powered systems can improve insect pest identification by utilizing other data modalities. However, there are obstacles to overcome, such as the scarcity of high-quality labelled datasets and scalability and affordability issues. Despite these challenges, there is significant potential for AI-powered insect pest identification and pest management. Cooperation among researchers, practitioners, and policymakers is necessary to utilize AI in pest management fully. AI technology is transforming the field of entomology by enabling high-precision identification of insect pests, leading to more efficient and eco-friendly pest management strategies. This can enhance food safety and reduce the need for continuous insecticide spraying, ensuring the purity and safety of the food supply chains. This review updates AI-powered insect pest identification, covering its significance, methods, challenges, and prospects.
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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