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Machine Learning and Computer Vision System for Phenotype Data Acquisition and Analysis in Plants

机译:机器学习和计算机视觉系统,用于植物表型数据的获取和分析

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Phenomics is a technology-driven approach with promising future to obtain unbiased data of biological systems. Image acquisition is relatively simple. However data handling and analysis are not as developed compared to the sampling capacities. We present a system based on machine learning (ML) algorithms and computer vision intended to solve the automatic phenotype data analysis in plant material. We developed a growth-chamber able to accommodate species of various sizes. Night image acquisition requires near infrared lightning. For the ML process, we tested three different algorithms: k -nearest neighbour (kNN), Naive Bayes Classifier (NBC), and Support Vector Machine. Each ML algorithm was executed with different kernel functions and they were trained with raw data and two types of data normalisation. Different metrics were computed to determine the optimal configuration of the machine learning algorithms. We obtained a performance of 99.31% in kNN for RGB images and a 99.34% in SVM for NIR. Our results show that ML techniques can speed up phenomic data analysis. Furthermore, both RGB and NIR images can be segmented successfully but may require different ML algorithms for segmentation.
机译:物候学是一种技术驱动的方法,具有获得生物系统无偏数据的广阔前景。图像获取相对简单。但是,与采样能力相比,数据处理和分析还不够完善。我们提出了一种基于机器学习(ML)算法和计算机视觉的系统,旨在解决植物材料中的自动表型数据分析问题。我们开发了一个能够容纳各种大小物种的生长室。夜间图像采集需要近红外闪电。对于ML过程,我们测试了三种不同的算法:k最近邻(kNN),朴素贝叶斯分类器(NBC)和支持向量机。每种ML算法都是用不同的内核功能执行的,并且分别用原始数据和两种类型的数据归一化进行训练。计算了不同的指标,以确定机器学习算法的最佳配置。对于RGB图像,我们在kNN中获得了99.31%的性能,对于NIR,我们在SVM中获得了99.34%的性能。我们的结果表明,机器学习技术可以加快表型数据分析。此外,RGB和NIR图像都可以成功分割,但可能需要不同的ML算法进行分割。

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