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Performances Evaluation of a Low-Cost Platform for High-Resolution Plant Phenotyping

机译:用于高分辨率植物表型鉴定的低成本平台的性能评估

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摘要

This study aims to test the performances of a low-cost and automatic phenotyping platform, consisting of a Red-Green-Blue (RGB) commercial camera scanning objects on rotating plates and the reconstruction of main plant phenotypic traits via the structure for motion approach (SfM). The precision of this platform was tested in relation to three-dimensional (3D) models generated from images of potted maize, tomato and olive tree, acquired at a different frequency (steps of 4°, 8° and 12°) and quality (4.88, 6.52 and 9.77 µm/pixel). Plant and organs heights, angles and areas were extracted from the 3D models generated for each combination of these factors. Coefficient of determination (R ), relative Root Mean Square Error (rRMSE) and Akaike Information Criterion (AIC) were used as goodness-of-fit indexes to compare the simulated to the observed data. The results indicated that while the best performances in reproducing plant traits were obtained using 90 images at 4.88 µm/pixel (R = 0.81, rRMSE = 9.49% and AIC = 35.78), this corresponded to an unviable processing time (from 2.46 h to 28.25 h for herbaceous plants and olive trees, respectively). Conversely, 30 images at 4.88 µm/pixel resulted in a good compromise between a reliable reconstruction of considered traits (R = 0.72, rRMSE = 11.92% and AIC = 42.59) and processing time (from 0.50 h to 2.05 h for herbaceous plants and olive trees, respectively). In any case, the results pointed out that this input combination may vary based on the trait under analysis, which can be more or less demanding in terms of input images and time according to the complexity of its shape (R = 0.83, rRSME = 10.15% and AIC = 38.78). These findings highlight the reliability of the developed low-cost platform for plant phenotyping, further indicating the best combination of factors to speed up the acquisition and elaboration process, at the same time minimizing the bias between observed and simulated data.
机译:这项研究旨在测试一种低成本,自动的表型平台的性能,该平台由在旋转板上扫描物体的红绿蓝(RGB)商业相机组成,并通过运动方法的结构重建主要植物的表型性状( SfM)。已针对从盆栽玉米,番茄和橄榄树的图像生成的三维(3D)模型进行了测试,并以不同的频率(4°,8°和12°的阶跃)和质量(4.88)获取了该平台的精度,6.52和9.77 µm /像素)。从为这些因素的每种组合生成的3D模型中提取植物和器官的高度,角度和面积。确定系数(R),相对均方根误差(rRMSE)和Akaike信息准则(AIC)被用作拟合优度指标,以将模拟数据与观察数据进行比较。结果表明,虽然使用4.88 µm /像素的90张图像(R = 0.81,rRMSE = 9.49%和AIC = 35.78)获得了最佳的植物性状表现,但这对应的处理时间不可行(从2.46 h到28.25)。 h分别表示草本植物和橄榄树)。相反,以4.88 µm /像素的30张图像可以很好地折衷考虑的性状(R = 0.72,rRMSE = 11.92%和AIC = 42.59)的可靠重建与处理时间(对于草本植物和橄榄从0.50 h至2.05 h)树)。无论如何,结果都指出,此输入组合可能会根据所分析的特征而有所不同,根据其形状的复杂程度,输入图像和时间可能会或多或少地要求(R = 0.83,rRSME = 10.15 %,AIC = 38.78)。这些发现突出了已开发的用于植物表型鉴定的低成本平台的可靠性,进一步表明了加快采集和加工过程的因素的最佳组合,同时将观察到的数据与模拟数据之间的偏差最小化。

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