高光谱成像
拉图卡
光谱辐射计
人工神经网络
遥感
水分胁迫
环境科学
反射率
生物系统
计算机科学
人工智能
园艺
生物
地质学
光学
物理
作者
Lucas Prado Osco,Ana Paula Marques Ramos,Érika Akemi Saito Moriya,Lorrayne Guimarães Bavaresco,Bruna Coelho de Lima,Nayara Vasconcelos Estrabis,Danilo Roberto Pereira,José Eduardo Creste,José Marcato,Wesley Nunes Gonçalves,Nilton Nobuhiro Imai,Jonathan Li,Veraldo Liesenberg,Fábio Fernando de Araújo
出处
期刊:Remote Sensing
[Multidisciplinary Digital Publishing Institute]
日期:2019-11-26
卷期号:11 (23): 2797-2797
被引量:49
摘要
Modeling the hyperspectral response of vegetables is important for estimating water stress through a noninvasive approach. This article evaluates the hyperspectral response of water-stress induced lettuce (Lactuca sativa L.) using artificial neural networks (ANN). We evenly split 36 lettuce pots into three groups: control, stress, and bacteria. Hyperspectral response was measured four times, during 14 days of stress induction, with an ASD Fieldspec HandHeld spectroradiometer (325–1075 nm). Both reflectance and absorbance measurements were calculated. Different biophysical parameters were also evaluated. The performance of the ANN approach was compared against other machine learning algorithms. Our results show that the ANN approach could separate the water-stressed lettuce from the non-stressed group with up to 80% accuracy at the beginning of the experiment. Additionally, this accuracy improved at the end of the experiment, reaching an accuracy of up to 93%. Absorbance data offered better accuracy than reflectance data to model it. This study demonstrated that it is possible to detect early stages of water stress in lettuce plants with high accuracy based on an ANN approach applied to hyperspectral data. The methodology has the potential to be applied to other species and cultivars in agricultural fields.
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