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EasyPCC:适用于野外条件下高通量测量植物冠层覆盖率比的基准数据集和工具。

EasyPCC: Benchmark Datasets and Tools for High-Throughput Measurement of the Plant Canopy Coverage Ratio under Field Conditions.

机构信息

International Field Phenomics Laboratory, Institute for Sustainable Agro-ecosystem Services, Graduate School of Agricultural and Life Sciences, The University of Tokyo, 1-1-1, Midori-cho, Nishitokyo, Tokyo 188-0002, Japan.

CSIRO Agriculture & Food, Queensland Biosciences Precinct, 306 Carmody Rd., St. Lucia, QLD 4067, Australia.

出版信息

Sensors (Basel). 2017 Apr 7;17(4):798. doi: 10.3390/s17040798.

DOI:10.3390/s17040798
PMID:28387746
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5422159/
Abstract

Understanding interactions of genotype, environment, and management under field conditions is vital for selecting new cultivars and farming systems. Image analysis is considered a robust technique in high-throughput phenotyping with non-destructive sampling. However, analysis of digital field-derived images remains challenging because of the variety of light intensities, growth environments, and developmental stages. The plant canopy coverage (PCC) ratio is an important index of crop growth and development. Here, we present a tool, EasyPCC, for effective and accurate evaluation of the ground coverage ratio from a large number of images under variable field conditions. The core algorithm of EasyPCC is based on a pixel-based segmentation method using a decision-tree-based segmentation model (DTSM). EasyPCC was developed under the MATLAB and R languages; thus, it could be implemented in high-performance computing to handle large numbers of images following just a single model training process. This study used an experimental set of images from a paddy field to demonstrate EasyPCC, and to show the accuracy improvement possible by adjusting key points (e.g., outlier deletion and model retraining). The accuracy (² = 0.99) of the calculated coverage ratio was validated against a corresponding benchmark dataset. The EasyPCC source code is released under GPL license with benchmark datasets of several different crop types for algorithm development and for evaluating ground coverage ratios.

摘要

了解田间条件下基因型、环境和管理的相互作用对于选择新的品种和耕作系统至关重要。图像分析被认为是一种在高通量表型中进行非破坏性采样的强大技术。然而,由于光强、生长环境和发育阶段的多样性,对数字田间衍生图像的分析仍然具有挑战性。植物冠层覆盖率(PCC)比是作物生长发育的一个重要指标。在这里,我们提出了一种工具 EasyPCC,用于在可变田间条件下有效地和准确地评估大量图像的地面覆盖率比。EasyPCC 的核心算法基于一种基于像素的分割方法,使用基于决策树的分割模型(DTSM)。EasyPCC 是在 MATLAB 和 R 语言下开发的;因此,它可以在高性能计算中实现,只需进行一次模型训练过程,就可以处理大量的图像。本研究使用了一组来自稻田的实验图像来演示 EasyPCC,并展示了通过调整关键点(例如,异常值删除和模型重新训练)可以提高准确性。计算出的覆盖率的准确性(²=0.99)是通过与相应的基准数据集进行验证的。EasyPCC 的源代码是根据 GPL 许可证发布的,其中包含了几种不同作物类型的基准数据集,用于算法开发和评估地面覆盖率比。

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