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Latent Dirichlet Allocation Uncovers Spectral Characteristics of Drought Stressed Plants

机译:潜在Dirichlet分配揭示了干旱胁迫植物的光谱特征

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Understanding the adaptation process of plants to drought stress is essential in improving management practices, breeding strategies as well as engineering viable crops for a sustainable agriculture in the coming decades. Hyper-spectral imaging provides a particularly promising approach to gain such understanding since it allows to discover non-destructively spectral characteristics of plants governed primarily by scattering and absorption characteristics of the leaf internal structure and biochemical constituents. Several drought stress indices have been derived using hyper-spectral imaging. However, they are typically based on few hyper-spectral images only, rely on interpretations of experts, and consider few wavelengths only. In this study, we present the first data-driven approach to discovering spectral drought stress indices, treating it as an unsupervised labeling problem at massive scale. To make use of short range dependencies of spectral wavelengths, we develop an online varia-tional Bayes algorithm for latent Dirichlet allocation with convolved Dirichlet regularizer. This approach scales to massive datasets and, hence, provides a more objective complement to plant physiological practices. The spectral topics found conform to plant physiological knowledge and can be computed in a fraction of the time compared to existing LDA approaches.
机译:了解植物适应干旱胁迫的过程对于改善管理实践,育种策略以及为未来几十年的可持续农业设计可行的作物至关重要。高光谱成像提供了一种获得这种理解的特别有前途的方法,因为它可以发现主要由叶片内部结构和生化成分的散射和吸收特性决定的植物的非破坏性光谱特性。使用高光谱成像已经得出了几种干旱胁迫指数。但是,它们通常仅基于少量的高光谱图像,依赖于专家的解释,并且仅考虑很少的波长。在这项研究中,我们提出了第一个数据驱动的方法来发现光谱干旱胁迫指数,并将其视为大规模的无监督标记问题。为了利用光谱波长的短距离依赖性,我们开发了在线卷积贝叶斯算法,用于带卷积Dirichlet正则化器的潜在Dirichlet分配。这种方法可扩展到海量数据集,因此为植物生理实践提供了更为客观的补充。与现有的LDA方法相比,发现的光谱主题符合植物生理知识,并且可以在很短的时间内进行计算。

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