植物基因网络的叶片分割与平行表型分析

Olivier Janssens, Jonas De Vylder, J. Aelterman, S. Verstockt, W. Philips, D. Straeten, S. Hoecke, R. Walle
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引用次数: 12

摘要

在过去的4年里,表型分析变得越来越自动化,减少了大量的体力劳动。可以从图像中自动提取唯一定义植物的特征。由于需要处理大量的植物数据来提取特征,因此快速处理这些特征是一个挑战。为此,本文提出了一种叶片呈圆形排列的植物单叶自动分割的新方法,并提出了一种提取叶片对称线的算法。此外,为了实现植物表型的快速处理,为了在CPU和GPU上运行,并行化了四种特征提取方法。我们的评估结果表明,通过并行化特征提取方法,可以比单线程实现更快地计算图像矩、面积、直方图和强度之和5到45倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leaf segmentation and parallel phenotyping for the analysis of gene networks in plants
Over the last 4 years phenotyping is becoming more and more automated, decreasing a lot of manual labour. Features, which uniquely define the plant, can be extracted automatically from images. As a lot of plant data has to be processed in order to extract the features, fast processing of these features is a challenge. Therefore in this paper, a new method for automatic segmentation of individual leaves from plants with a circular arrangement of leaves (rosettes) is proposed, together with an algorithm to extract the line of symmetry of the leaf. Furthermore, in order to achieve fast processing for phenotyping plants, four feature extraction methods are parallelised in order to run on the CPU and GPU. Our evaluation results show that by parallelizing the feature extraction methods, it is possible to calculate the image moments, area, histogram and sum of intensities 5 to 45 times faster than single threaded implementations.
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