Variational Autoencoder for Early Stress Detection in Smart Agriculture: A Pilot Study

Alberto Zancanaro, Giulia Cisotto, Dagmawi Delelegn Tegegn, Sara L. Manzoni, Ivan Reguzzoni, E. Lotti, I. Zoppis
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引用次数: 2

Abstract

The digitalization of the agrifood market is increasingly demanding for new technologies to support its transition towards smart agriculture, a sustainable food industry, and efficient management of greenhouses and crop breeding. In this work, we aim to exploit two emerging and promising technologies with application to the early detection of stressful conditions in plants. Two high-resolution near-infrared spectrometers, spanning the range from 1350 nm to 2150 nm, were used to acquire the reflectance spectra from a pothos (Epipremnum aureum) in two different hydration conditions, i.e., normal and anomalous. Then, we trained a machine learning model, i.e., a $\beta$ -variational autoencoder ($\beta$ - VAE), to identify the anomalies in the hydration of the plant over three months of acquisition. We are able to show the feasibility of our proposed combination of near-infrared spectrometry and the $\beta$ - VAE to accurately identify anomalies, i.e., to detect stressful conditions in plants. This contributes to the recent and promising advancements in smart agriculture, by exploiting a new generation of high-resolution, portable, and non-destructive near-infrared sensing technology and powerful machine learning data analytics.
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智能农业早期应力检测的变分自编码器:试点研究
农业食品市场的数字化对新技术的要求越来越高,以支持其向智能农业、可持续食品工业以及温室和作物育种的高效管理过渡。在这项工作中,我们的目标是利用两种新兴和有前途的技术,应用于植物应激条件的早期检测。利用1350 nm ~ 2150 nm的高分辨率近红外光谱仪,获得了一种水化条件下的水化光谱,即正常水化和异常水化。然后,我们训练了一个机器学习模型,即$\beta$ -变分自动编码器($\beta$ - VAE),以识别在三个月的收购期间植物水化的异常情况。我们能够证明我们提出的近红外光谱法和$\beta$ - VAE相结合的可行性,以准确识别异常,即检测植物中的应激条件。通过利用新一代高分辨率,便携式,非破坏性近红外传感技术和强大的机器学习数据分析,这有助于智能农业的最新和有希望的进展。
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