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Pest Detection for Precision Agriculture Based on IoT Machine Learning

机译:基于物联网机器学习的精准农业病虫害检测

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Apple orchards are widely expanding in many countries of the world, and one of the major threats of these fruit crops is the attack of dangerous parasites such as the Codling Moth. IoT devices capable of executing machine learning applications in-situ offer nowadays the possibility of featuring immediate data analysis and anomaly detection in the orchard. In this paper, we present an embedded electronic system that automatically detects the Codling Moths from pictures taken by a camera on top of the insects-trap. Image pre-processing, cropping, and classification are done on a low-power platform that can be easily powered by a solar panel energy harvester.
机译:苹果园在世界许多国家/地区都在广泛扩张,这些水果作物的主要威胁之一是诸如dangerous蛾等危险寄生虫的袭击。如今,能够在现场执行机器学习应用程序的IoT设备提供了在果园中进行即时数据分析和异常检测的功能。在本文中,我们介绍了一种嵌入式电子系统,该系统可以自动从昆虫捕捉器顶部的相机拍摄的照片中检测出Co蛾。图像预处理,裁剪和分类是在低功率平台上完成的,该平台可以轻松地由太阳能电池板能量收集器供电。

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