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High-Throughput Estimation of Yield for Individual Rice Plant Using Multi-angle RGB Imaging

机译:多角度RGB成像的各个稻工厂产量高通量估计

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Modern breeding technologies are capable of producing hundreds of new varieties daily, so fast, simple and effective methods for screening valuable candidate plant materials are urgently needed. Final yield is a significant agricultural trait in rice breeding. In the screening and evaluation of the rice varieties, measuring and evaluating rice yield is essential. Conventional means of measuring rice yield mainly depend on manual determination, which is tedious, labor-intensive, subjective and error-prone, especially when large-scale plants were to be investigated. This paper presented an in vivo, automatic and high-throughput method to estimate the yield of individual pot-grown rice plant using multi-angle RGB imaging and image analysis. In this work, we demonstrated a new idea of estimating rice yield from projected panicle area, projected area of leaf and stem and fractal dimension. 5-fold cross validation showed that the predictive error was 7.45%. The constructed model achieved promising results on rice plants grown both in-door and out-door. The presented work has the potential of accelerating yield estimation and would be a promising impetus for plant phenomics.
机译:现代化的养殖技术能够每天生产数百种新品种,因此迫切需要筛选有价值的候选植物材料的快速,简单,有效的方法。最终产量是水稻育种的重要农业特征。在水稻品种的筛选和评估中,测量和评估水稻产量至关重要。常规测量水稻产量的手段主要取决于手工测定,这是乏味,劳动密集型,主观和易于出错的,特别是当要调查大规模植物时。本文介绍了使用多角度RGB成像和图像分析来估算单个盆栽稻工厂的产量的体内,自动和高通量的方法。在这项工作中,我们展示了从投影穗面积估算水稻产量,叶片和茎和分形尺寸的估算水稻产量的新思路。 5倍交叉验证表明预测误差为7.45%。建造的模型在门外生长的水稻植物上取得了有希望的结果。所提出的工作具有加速产量估计的潜力,并且是植物表情的有希望的动力。

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