基于图像识别的智能农业害虫自动诊断系统的开发

Chau-Chung Song, Wei-Zhong Chen, Hung-Yu Chen, Yukai Chen
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摘要

目前,智能农业在世界各国迅速发展。近年来,在一些发达国家,农业相关技术的研发和创新技术的应用都得到了政策的积极支持。本文对农业病虫害诊断系统的研究进行了探讨和评价。采用图像识别、人工智能算法和网络监控系统,实现并构建了害虫自动诊断系统平台。利用图像识别对病虫害进行识别和科学管理,可以实现农业智能预防和精准监测的首要目标,而农田数据分析则可以为农民提供基于数据的信息,使农民能够即时了解农田的状况,如天气状况、喷洒时间、病虫害数量、病虫害分布等。此外,通过图像识别和AI算法的诊断分析,确定变量农药喷洒的分级和数量,以改善和加强病虫害的控制,达到减少农药使用和环境污染的目的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Pest Automatic Diagnosis System for Intelligent Agriculture Using Image Recognition
Nowadays, the intelligent agriculture is rapidly developing in most of the countries. In some advanced countries, both the research and development of agricultural-related technology and the application of innovative technology have actively been supported with the policies in the recent years. In this paper, the study on agricultural pest and disease diagnosis system is discussed and evaluated. The pest automatic diagnosis system platform is implemented and constructed with image recognition, artificial intelligence algorithm, and network monitoring system. By using image recognition on pest identification and scientific management can achieve the primary goal of intelligent prevention and precision monitoring in agriculture, whereas data analysis of farmland is fulfilled to provide farmers with data-based information, so that farmers can immediately understand the status of the farmland, such as weather conditions, spraying time, pest quantity, pest distribution, etc. Additionally, through the diagnosis and analysis of image recognition and AI algorithm, the grading and amount of variable pesticide spraying is determined to improve and enhance the control of pest and disease and to achieve the goal of reducing pesticide usage and environmental pollution
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