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首页> 外文期刊>IEEE transactions on industrial informatics >Aerial Visual Perception in Smart Farming: Field Study of Wheat Yellow Rust Monitoring
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Aerial Visual Perception in Smart Farming: Field Study of Wheat Yellow Rust Monitoring

机译:智能耕作中的空中视觉感知:小麦黄色防锈监测的田间研究

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摘要

Agriculture is facing severe challenges from crop stresses, threatening its sustainable development and food security. This article exploits aerial visual perception for yellow rust disease monitoring, which seamlessly integrates state-of-the-art techniques and algorithms, including unmanned aerial vehicle sensing, multispectral imaging, vegetation segmentation, and deep learning U-Net. A field experiment is designed by infecting winter wheat with yellow rust inoculum, on top of which multispectral aerial images are captured by DJI Matrice 100 equipped with RedEdge camera. After image calibration and stitching, multispectral orthomosaic is labeled for system evaluation by inspecting high-resolution RGB images taken by Parrot Anafi Drone. The merits of the developed framework drawing spectral-spatial information concurrently are demonstrated by showing improved performance over purely spectral-based classifier by the classical random forest algorithm. Moreover, various network input band combinations are tested, including three RGB bands and five selected spectral vegetation indices, by sequential forward selection strategy of wrapper algorithm.
机译:农业面临着作物压力的严峻挑战,威胁其可持续发展和粮食安全。本文利用空中视觉感知对黄色锈病监测,无缝地集成了最先进的技术和算法,包括无人驾驶飞行器感应,多光谱成像,植被细分以及深度学习U-Net。通过感染黄色锈米物的冬小麦,设计了一种田间实验,在其顶部,多光谱空中图像被配备有解密相机的DJI矩阵100。在图像校准和缝合之后,通过检查鹦鹉Anafi无人机拍摄的高分辨率RGB图像来标记多光谱正反骨骼。通过经典随机林算法显示基于纯粹的基于频谱的分类器的改进的性能,证明了发达框架绘制频谱空间信息的优点。此外,通过包装算法的顺序前进选择策略,测试了各种网络输入频带组合,包括三个RGB频带和五种选择的光谱植被指标。

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