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首页> 外文期刊>Journal of Sensors >Unmanned Aircraft System- (UAS-) Based High-Throughput Phenotyping (HTP) for Tomato Yield Estimation
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Unmanned Aircraft System- (UAS-) Based High-Throughput Phenotyping (HTP) for Tomato Yield Estimation

机译:基于无人机系统 - (UAS-)的番茄产量估计的高吞吐量表型(HTP)

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摘要

Yield prediction and variety selection are critical components for assessing production and performance in breeding programs and precision agriculture. Since plants integrate their genetics, surrounding environments, and management conditions, crop phenotypes have been measured over cropping seasons to represent the traits of varieties. These days, UAS (unmanned aircraft system) provides a new opportunity to collect high-quality images and generate reliable phenotypic data efficiently. Here, we propose high-throughput phenotyping (HTP) from multitemporal UAS images for tomato yield estimation. UAS-based RGB and multispectral images were collected weekly and biweekly, respectively. The shape of the features of tomatoes such as canopy cover, canopy, volume, and vegetation indices derived from UAS imagery was estimated throughout the entire season. To extract time-series features from UAS-based phenotypic data, crop growth and growth rate curves were fitted using mathematical curves and first derivative equations. Time-series features such as the maximum growth rate, day at a specific event, and duration were extracted from the fitted curves of different phenotypes. The linear regression model produced high values even with different variable selection methods: all variables (0.79), forward selection (0.7), and backward selection (0.77). With factor analysis, we figured out two significant factors, growth speed and timing, related to high-yield varieties. Then, five time-series phenotypes were selected for yield prediction models explaining 65 percent of the variance in the actual harvest. The phenotypic features derived from RGB images played more important roles in prediction yield. This research also demonstrates that it is possible to select lower-performing tomato varieties successfully. The results from this work may be useful in breeding programs and research farms for selecting high-yielding and disease-/pest-resistant varieties.
机译:产量预测和各种选择是用于评估育种计划和精密农业的生产和性能的关键组成部分。由于植物整合其遗传学,周围环境和管理条件,因此在裁剪季节上测量了作物表型以代表品种的特征。如今,UAS(无人机系统)提供了新的机会,可以收集高质量图像并有效地产生可靠的表型数据。在这里,我们提出了来自多型UA图像的高通量表型(HTP)以进行番茄产量估计。基于UAS的RGB和多光谱图像分别每周收集。整个季节估计了番茄覆盖,冠层,体积和植被指数等西红柿的特征的形状。为了从基于UAS的表型数据中提取时间序列特征,使用数学曲线和第一衍生方程装配作物生长和生长速率曲线。从不同表型的拟合曲线提取特定事件的最大增长率,日常生活和持续时间的时间序列特征。即使具有不同的变量选择方法,线性回归模型也产生了高值:所有变量(0.79),正向选择(0.7)和后向选择(0.77)。随着因素分析,我们弄清了与高产品种相关的两个重要因素,生长速度和时序。然后,选择五个时间序列表型以进行产量预测模型,解释实际收获方差的65%。来自RGB图像的表型特征在预测产量中起更重要的作用。该研究还表明,可以成功地选择较低性交的番茄品种。这项工作的结果可用于育种计划和研究农场,用于选择高产和抗病/抗病品种。

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