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Using a Structural Root System Model to Evaluate and Improve the Accuracy of Root Image Analysis Pipelines

机译:使用结构性根系统模型评估和提高根图像分析管道的准确性

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摘要

Root system analysis is a complex task, often performed with fully automated image analysis pipelines. However, the outcome is rarely verified by ground-truth data, which might lead to underestimated biases. We have used a root model, ArchiSimple, to create a large and diverse library of ground-truth root system images (10,000). For each image, three levels of noise were created. This library was used to evaluate the accuracy and usefulness of several image descriptors classically used in root image analysis softwares. Our analysis highlighted that the accuracy of the different traits is strongly dependent on the quality of the images and the type, size, and complexity of the root systems analyzed. Our study also demonstrated that machine learning algorithms can be trained on a synthetic library to improve the estimation of several root system traits. Overall, our analysis is a call to caution when using automatic root image analysis tools. If a thorough calibration is not performed on the dataset of interest, unexpected errors might arise, especially for large and complex root images. To facilitate such calibration, both the image library and the different codes used in the study have been made available to the community.
机译:根系统分析是一项复杂的任务,通常使用全自动图像分析管道执行。但是,结果很少由真实数据验证,这可能会导致低估偏差。我们使用了一个根模型ArchiSimple来创建一个庞大而多样的地面真实根系统映像库(10,000)。对于每个图像,创建了三个级别的噪声。该库用于评估根图像分析软件中经典使用的几种图像描述符的准确性和实用性。我们的分析强调,不同特征的准确性在很大程度上取决于图像的质量以及所分析根系的类型,大小和复杂性。我们的研究还表明,可以在综合库中训练机器学习算法,以提高对几种根系系统性状的估计。总体而言,使用自动根映像分析工具时,我们的分析提醒您注意。如果未对目标数据集进行全面校准,则可能会出现意外错误,尤其是对于大型且复杂的根图像。为了便于进行此类校准,已向社区提供了图像库和研究中使用的不同代码。

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