利用无人飞行器图像估算豆类产量

Diane Gomes Campos, Rodrigo Nogueira Martins
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引用次数: 0

摘要

蚕豆是一种具有重要社会经济意义的作物,在巴西全境都有种植。尽管如此,迄今为止进行的研究表明,用于估算产量的方法存在局限性。从这个意义上说,无人飞行器(UAV)等新兴技术既有助于作物监测,也有助于评估作物产量。因此,本研究旨在:(1) 利用无人机图像中的光谱变量估算豆类产量;(2) 确定估算产量的最佳植株阶段。为此,使用了田间试验的数据。在 600 平方米(20 x 30 米)的区域内,采用传统方式种植豆类。在作物生长周期内,使用配备五波段多光谱相机(红、绿、蓝、红边和近红外)的无人机进行了六次飞行。之后,获得了由这些波段和五个植被指数(VI)组成的 10 个光谱变量。在季节结束时,对该区域进行收割,并确定产量(公斤/公顷-1)。然后,对数据进行相关性(r)和回归分析。总体而言,所有开发的模型表现一般,但与文献一致,R² 和 RMSE 值分别为 0.52 至 0.57 和 252.79 至 208.84 kg ha-1。关于估产的最佳植株期,所选模型使用了豆荚形成和灌浆初期(R7 和 R8 期之间)第二次飞行(播种后 52 天)的数据。
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Bean yield estimation using unmanned aerial vehicle imagery
The common bean is a crop of substantial socioeconomic importance that is cultivated throughout the Brazilian territory. Despite that, studies conducted so far have shown limitations in the methodologies used for yield estimation. In this sense, emerging technologies such as unmanned aerial vehicles (UAVs) can help both in crop monitoring and in assessing crop yield. Therefore, this study aimed: (1) to estimate the bean yield using spectral variables derived from UAV imagery and (2) to define the best vegetative stage for yield estimation. For this, data from a field experiment were used. The beans were planted in a conventional system in an area of 600 m² (20 x 30 m). During the crop cycle, six flights were carried out using a UAV equipped with a five-band multispectral camera (Red, Green, Blue, Red Edge, and Near-infrared). After that, 10 spectral variables composed of the bands and five vegetation indices (VIs) were obtained. At the end of the season, the area was harvested, and the yield (kg ha-1) was determined. Then, the data was submitted to correlation (r), and regression analysis. Overall, all developed models showed moderate performance, but in accordance with the literature, with R² and RMSE values ranging from 0.52 to 0.57 and from 252.79 to 208.84 kg ha-1, respectively. Regarding the best vegetative stage for yield estimation, the selected models used data from the second flight (52 days after planting) at the beginning of pod formation and filling (between stages R7 and R8).
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