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A method for estimating spikelet number per panicle: Integrating image analysis and a 5-point calibration model

机译:一种估计每穗小穗数的方法:集成图像分析和五点校准模型

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摘要

Spikelet number per panicle (SNPP) is one of the most important yield components used to estimate rice yields. The use of high-throughput quantitative image analysis methods for understanding the diversity of the panicle has increased rapidly. However, it is difficult to simultaneously extract panicle branch and spikelet/grain information from images at the same resolution due to the different scales of these traits. To use a lower resolution and meet the accuracy requirement, we proposed an interdisciplinary method that integrated image analysis and a 5-point calibration model to rapidly estimate SNPP. First, a linear relationship model between the total length of the primary branch (TLPB) and the SNPP was established based on the physiological characteristics of the panicle. Second, the TLPB and area (the primary branch region) traits were rapidly extracted by developing image analysis algorithm. Finally, a 5-point calibration method was adopted to improve the universality of the model. The number of panicle samples that the error of the SNPP estimates was less than 10% was greater than 90% by the proposed method. The estimation accuracy was consistent with the accuracy determined using manual measurements. The proposed method uses available concepts and techniques for automated estimations of rice yield information.
机译:每穗小穗数(SNPP)是用于估算水稻产量的最重要的产量组成部分之一。使用高通量定量图像分析方法来了解穗的多样性已迅速增加。但是,由于这些性状的规模不同,很难同时以相同的分辨率从图像中提取出穗枝和小穗/籽粒信息。为了使用较低的分辨率并满足精度要求,我们提出了一种跨学科的方法,该方法结合了图像分析和五点校准模型来快速估计SNPP。首先,根据穗的生理特性,建立了初级分支总长度(TLPB)和SNPP之间的线性关系模型。其次,通过开发图像分析算法快速提取TLPB和面积(主要分支区域)特征。最后,采用五点校正方法提高了模型的通用性。 SNPP估计的误差小于10%的圆锥花序样本数大于90%。估计精度与使用手动测量确定的精度一致。所提出的方法使用可用的概念和技术来自动估计水稻产量信息。

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