Fukano Yuya, Guo Wei, Aoki Naohiro, Ootsuka Shinjiro, Noshita Koji, Uchida Kei, Kato Yoichiro, Sasaki Kazuhiro, Kamikawa Shotaka, Kubota Hirofumi
Graduate School of Agricultural and Life Sciences, Institute for Sustainable Agro-Ecosystem Services, The University of Tokyo, Tokyo, Japan.
Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.
Front Plant Sci. 2021 May 31;12:637694. doi: 10.3389/fpls.2021.637694. eCollection 2021.
Recent advances in unmanned aerial vehicle (UAV) remote sensing and image analysis provide large amounts of plant canopy data, but there is no method to integrate the large imagery datasets with the much smaller manually collected datasets. A simple geographic information system (GIS)-based analysis for a UAV-supported field study (GAUSS) analytical framework was developed to integrate these datasets. It has three steps: developing a model for predicting sample values from UAV imagery, field gridding and trait value prediction, and statistical testing of predicted values. A field cultivation experiment was conducted to examine the effectiveness of the GAUSS framework, using a soybean-wheat crop rotation as the model system Fourteen soybean cultivars and subsequently a single wheat cultivar were grown in the same field. The crop rotation benefits of the soybeans for wheat yield were examined using GAUSS. Combining manually sampled data ( = 143) and pixel-based UAV imagery indices produced a large amount of high-spatial-resolution predicted wheat yields ( = 8,756). Significant differences were detected among soybean cultivars in their effects on wheat yield, and soybean plant traits were associated with the increases. This is the first reported study that links traits of legume plants with rotational benefits to the subsequent crop. Although some limitations and challenges remain, the GAUSS approach can be applied to many types of field-based plant experimentation, and has potential for extensive use in future studies.
无人机(UAV)遥感和图像分析的最新进展提供了大量植物冠层数据,但尚无方法将大型图像数据集与小得多的人工采集数据集进行整合。为此开发了一种基于简单地理信息系统(GIS)的无人机支持田间研究分析框架(GAUSS),用于整合这些数据集。它有三个步骤:建立一个从无人机图像预测样本值的模型、田间网格化和性状值预测,以及对预测值进行统计检验。以大豆-小麦轮作为模型系统,进行了田间种植实验,以检验GAUSS框架的有效性。在同一块田地里种植了14个大豆品种,随后种植了一个小麦品种。使用GAUSS研究了大豆对小麦产量的轮作效益。结合人工采样数据(n = 143)和基于像素的无人机图像指数,得出了大量高空间分辨率的预测小麦产量(n = 8756)。检测到不同大豆品种对小麦产量的影响存在显著差异,且大豆植株性状与产量增加有关。这是首次报道将豆科植物性状与对后续作物的轮作效益联系起来的研究。尽管仍存在一些局限性和挑战,但GAUSS方法可应用于多种田间植物实验类型,并在未来研究中有广泛应用的潜力。