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Unsupervised machine learning via Hidden Markov Models for accurate clustering of plant stress levels based on imaged chlorophyll fluorescence profiles their rate of change in time

机译:通过隐马尔可夫模型进行无监督机器学习,可基于成像的叶绿素荧光图及其时间变化率对植物胁迫水平进行准确的聚类

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Chlorophyll fluorescence (ChlF), a plant response in time to stressors, has long been known to be a useful tool to detect plant stress. Early and accurate plant stress detection is imperative in enabling timely and appropriate intervention. One major limitation of prior work is that, in general, only a few key inflection points of a localized section of a chlorophyll fluorescence signal are used to calculate single index values. These values yield very limited insight into stress level or type. In this paper, we present a method for plant stress classification that uses global (versus local) ChlF time-varying signal data acquired via imaging. We classify this time-varying-intensity-signal using a Hidden Markov Model (HMM). While HMMs have been used in other fields, in this paper we present their first application in the field of plant stress clustering and classification. We show how the proposed selection of a low-pass filtered plant's entire chlorophyll fluorescence signal profile, as a global feature selection, improves the accuracy of plant stress classification. Additionally, we show how the rate of change-in-time of the plant ChlF intensity time-varying profiles further improves the plant stress classification accuracy. Finally, we present experimental results to show the value and potential of the proposed method to enable more accurate and specific classification of plant stressor levels and stressor types.
机译:叶绿素荧光(ChlF)是植物对胁迫的及时响应,长期以来一直被认为是检测植物胁迫的有用工具。尽早而准确地检测植物压力对于及时,适当地进行干预至关重要。先前工作的一个主要限制是,通常,仅使用叶绿素荧光信号局部截面的几个关键拐点来计算单个指标值。这些值对压力水平或类型的了解非常有限。在本文中,我们提出了一种植物胁迫分类的方法,该方法使用通过成像获取的全局(相对于局部)ChlF时变信号数据。我们使用隐马尔可夫模型(HMM)对时变强度信号进行分类。虽然HMM已在其他领域中使用,但在本文中,我们介绍了它们在植物胁迫聚类和分类领域中的首次应用。我们展示了如何建议对低通滤过植物的整个叶绿素荧光信号图进行选择,作为全局特征选择,如何提高植物胁迫分类的准确性。此外,我们显示了植物ChlF强度时变曲线的时间变化率如何进一步提高植物胁迫分类的准确性。最后,我们提供了实验结果,以显示所提出的方法的价值和潜力,以使植物胁迫水平和胁迫类型能够更准确,更具体地分类。

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