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Objective Definition of Rosette Shape Variation Using a Combined Computer Vision and Data Mining Approach

机译:结合计算机视觉和数据挖掘方法的玫瑰花冠形状变化的客观定义

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摘要

Computer-vision based measurements of phenotypic variation have implications for crop improvement and food security because they are intrinsically objective. It should be possible therefore to use such approaches to select robust genotypes. However, plants are morphologically complex and identification of meaningful traits from automatically acquired image data is not straightforward. Bespoke algorithms can be designed to capture and/or quantitate specific features but this approach is inflexible and is not generally applicable to a wide range of traits. In this paper, we have used industry-standard computer vision techniques to extract a wide range of features from images of genetically diverse Arabidopsis rosettes growing under non-stimulated conditions, and then used statistical analysis to identify those features that provide good discrimination between ecotypes. This analysis indicates that almost all the observed shape variation can be described by 5 principal components. We describe an easily implemented pipeline including image segmentation, feature extraction and statistical analysis. This pipeline provides a cost-effective and inherently scalable method to parameterise and analyse variation in rosette shape. The acquisition of images does not require any specialised equipment and the computer routines for image processing and data analysis have been implemented using open source software. Source code for data analysis is written using the R package. The equations to calculate image descriptors have been also provided.
机译:基于计算机视觉的表型变异测量对作物改良和粮食安全具有影响,因为它们本质上是客观的。因此,应该有可能使用这种方法来选择健壮的基因型。但是,植物的形态复杂,从自动获取的图像数据中识别有意义的性状并不容易。可以将定制算法设计为捕获和/或量化特定特征,但是这种方法不灵活,通常不适用于各种特征。在本文中,我们使用了行业标准的计算机视觉技术,从在非刺激条件下生长的遗传多样性拟南芥玫瑰的图像中提取了广泛的特征,然后使用统计分析来识别那些可以对生态类型进行良好区分的特征。该分析表明,几乎所有观察到的形状变化都可以由5个主要成分来描述。我们描述了一个易于实施的管道,包括图像分割,特征提取和统计分析。该管道提供了一种经济有效且可固有扩展的方法来参数化和分析莲座形的变化。图像的采集不需要任何专用设备,并且已经使用开源软件实现了用于图像处理和数据分析的计算机例程。使用R包编写用于数据分析的源代码。还提供了用于计算图像描述符的方程式。

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