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Unmanned aerial system and satellite-based high resolution imagery for high-throughput phenotyping in dry bean

机译:无人机系统与卫星基于卫星的高吞吐量表型在干豆中的高分辨率图像

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摘要

Dry bean breeding programs are crucial to improve the productivity and resistance to biotic and abiotic stress. Phenotyping is a key process in breeding that refers to crop trait evaluation. In recent years, high-throughput plant phenotyping methods are being developed to increase the accuracy and efficiency for crop trait evaluations. In this study, aerial imagery at different resolutions were evaluated to phenotype crop performance and phenological traits using genotypes from two breeding panels, Durango Diversity Panel (DDP) and Andean Diversity Panel (ADP). The unmanned aerial system (UAS) based multispectral and thermal data were collected for two seasons at multiple time points (about 50, 60 and 75 days after planting/DAP in 2015; about 60 and 75 DAP in 2017). Four image-based features were extracted from multispectral images. Among different features, normalized difference vegetation index (NDVI) data were found to be consistently highly correlated with performance traits (above ground biomass, seed yield), especially during imaging at about 60-75 DAP (early pod development). Overall, correlations were higher using NDVI in ADP than DDP with biomass (r = -0.67 to -0.91 in ADP; r = -0.55 to -0.72 in DDP) and seed yield (r = 0.51 to 0.73 in ADP; r = 0.42 to 0.58 in DDP) at about 60 and 75 DAP. For thermal data, a temperature data normalization (utilizing common breeding plots in multiple thermal images) was implemented and the MEAN plot temperatures generally correlated significantly with biomass (r = 0.28-0.88). Finally, lower resolution satellite images (0.05-5 m/pixel) using UAS data was simulated and image resolution beyond 50 cm was found to reduce the relationship between image features (NDVI) and performance variables (biomass, seed yield). Four different high resolution satellite images: Pleiades-1A (0.5 m), SPOT 6 (1.5 m), Planet Scope (3.0 m), and Rapid Eye (5.0 m) were acquired to validate the findings from the UAS data. The results indicated sub-meter resolution satellite multispectral imagery showed promising application in field phenotyping, especially when the genotypic responses to stress is prominent. The correlation between NDVI extracted from Pleiades-1A images with seed yield (r = 0.52) and biomass (r = -0.55) were stronger in ADP; where the strength in relationship reduced with decreasing satellite image resolution. In future, we anticipate higher spatial and temporal resolution data achieved with low-orbiting satellites will increase applications for high-throughput crop phenotyping,
机译:干豆育种计划对于提高生产力和对生物和非生物胁迫的抗性至关重要。表型是育种的关键过程,指的是作物特征评估。近年来,正在开发出高通量植物表型方法以提高裁剪特征评估的准确性和效率。在这项研究中,使用来自两种育种板,Durango多样性面板(DDP)和Andean多样性面板(ADP)的基因型评估不同分辨率的空中图像。基于无人的空中系统(UAS)的多光谱和热数据在多个时间点(2015年种植/ DAP后约50,60和75天大约50,60和75天; 2017年约有60%和75个Dap)。从多光谱图像中提取了四种基于图像的特征。在不同的特征中,发现归一化差异植被指数(NDVI)数据与性能特征(以上生物质,种​​子产量)始终如一,特别是在约60-75个DAP(早期荚开发)期间的成像期间。总体而言,在ADP中的相关性比DDP在与生物量(r = -0.67至-0.91中ADP; r = -0.55至-0.72 ind ddp中的-0.72),种子产量(r = 0.51至0.73,r = 0.42在DDP中为0.58),在约60和75个DAP。对于热数据,实施温度数据归一化(利用多个热图像中的常用繁殖图),并且平均曲线温度通常与生物质(R = 0.28-0.88)显着相关。最后,模拟了使用UA数据的较低分辨率卫星图像(0.05-5米/像素),并发现超过50cm的图像分辨率以减少图像特征(NDVI)和性能变量(生物质,种​​子产量)之间的关系。四种不同的高分辨率卫星图像:Pleiades-1A(0.5米),点6(1.5米),行星范围(3.0米)和快速的眼睛(5.0米),以验证UAS数据的发现。结果表明亚米分辨率卫星多光谱图像显示出对现场表型的有希望的应用,特别是当基因型对应力的反应突出时。从Pleiades-1A图像中提取的NDVI与种子产量(R = 0.52)和生物质(R = -0.55)的相关性在ADP中较强;在关系中的强度降低,随着卫星图像分辨率的降低而降低。未来,我们预计使用低轨道卫星实现的更高的空间和时间分辨率数据将增加高通量作物表型的应用,

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