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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >UAV/SATELLITE MULTISCALE DATA FUSION FOR CROP MONITORING AND EARLY STRESS DETECTION
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UAV/SATELLITE MULTISCALE DATA FUSION FOR CROP MONITORING AND EARLY STRESS DETECTION

机译:无人机/卫星多尺度数据融合,用于作物监测和早期应力检测

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Early stress detection is critical for proactive field management and terminal yield prediction, and can aid policy making for improved food security in the context of climate change and population growth. Field surveys for crop monitoring are destructive, labor-intensive, time-consuming and not ideal for large-scale spatial and temporal monitoring. Recent technological advances in Unmanned Aerial Vehicle (UAV) and high-resolution satellite imaging with frequent revisit time have proliferated the applications of this emerging new technology in precision agriculture to address food security challenges from regional to global scales. In this paper, we present a concept of UAV and satellite virtual constellation to demonstrate the power of multi-scale imaging for crop monitoring. Low-cost sensors integrated on a UAV were used to collect RGB, multispectral, and thermal images during the growing season in a test site established near Columbia, Missouri, USA. WorldView-3 multispectral data were pan-sharpened, atmospherically corrected to reflectance and combined with UAV data for temporal monitoring of early stress. UAV thermal and multispectral data were calibrated to canopy temperature and reflectance following a rigorous georeferencing and ortho-correction. The results show that early stress can be effectively detected using multi-temporal and multi-scale UAV and satellite observation; the limitations of satellite remote sensing data in field-level crop monitoring can be overcome by using low altitude UAV observations addressing not just mixed pixel issues but also filling the temporal gap in satellite data availability enabling capture of early stress. The concept developed in this paper also provides a framework for accurate and robust estimation of plant traits and grain yield and delivers valuable insight for high spatial precision in high-throughput phenotyping and farm field management.
机译:尽早发现压力对于主动进行田间管理和预测最终产量至关重要,并可在气候变化和人口增长的背景下帮助制定改善粮食安全的政策。作物监测的实地调查是破坏性的,劳动密集型的,费时的,因此不适合进行大规模的时空监测。无人驾驶飞机(UAV)和高分辨率卫星成像的最新技术进步以及经常重访的时间,已使这一新兴新技术在精密农业中的应用激增,以应对区域乃至全球范围内的粮食安全挑战。在本文中,我们提出了无人机和卫星虚拟星座的概念,以演示多尺度成像在作物监测中的作用。在美国密苏里州哥伦比亚附近建立的测试地点,在无人机生长期间,集成在无人机上的低成本传感器用于收集RGB,多光谱和热图像。对WorldView-3多光谱数据进行了全面锐化,在大气中进行了校正,以实现反射率,并与UAV数据相结合,以便对早期压力进行临时监控。在进行严格的地理配准和正交校正之后,将无人机的热能和多光谱数据校准到机盖温度和反射率。结果表明,利用多时空多尺度无人机和卫星观测可以有效地检测早期应力。通过使用低空无人机观测不仅可以解决混合像素问题,而且可以填补卫星数据可用性的时间空白,从而能够捕获早期胁迫,从而可以克服卫星遥感数据在田间作物监测中的局限性。本文开发的概念还为准确,可靠地估计植物性状和谷物产量提供了框架,并为高通量表型和农田管理中的高空间精度提供了宝贵的见解。

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