Multispectral Imaging and Convolutional Neural Network for Photosynthetic Pigments Prediction

K. Prilianti, Ivan C. Onggara, M. A. Adhiwibawa, T. H. Brotosudarmo, S. Anam, A. Suryanto
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引用次数: 2

Abstract

The evaluation of photosynthetic pigments composition is an essential task in agricultural studies. This is due to the fact that pigments composition could well represent the plant characteristics such as age and varieties. It could also describe the plant conditions, for example, nutrient deficiency, senescence, and responses under stress. Pigment role as light absorber makes it visually colorful. This colorful appearance provides benefits to the researcher on conducting a nondestructive analysis through a plant color digital image. In this research, a multispectral digital image was used to analyze three main photosynthetic pigments, i.e., chlorophyll, carotenoid, and anthocyanin in a plant leaf. Moreover, Convolutional Neural Network (CNN) model was developed to deliver a real-time analysis system. Input of the system is a plant leaf multispectral digital image, and the output is a content prediction of the pigments. It is proven that the CNN model could well recognize the relationship pattern between leaf digital image and pigments content. The best CNN architecture was found on ShallowNet model using Adaptive Moment Estimation (Adam) optimizer, batch size 30 and trained with 15 epoch. It performs satisfying prediction with MSE 0.0037 for in sample and 0.0060 for out sample prediction (actual data range -0.1 up to 2.2).
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多光谱成像和卷积神经网络用于光合色素预测
光合色素组成的评价是农业研究中的一项重要任务。这是因为色素组成能很好地反映植物的年龄和品种等特征。它还可以描述植物的状况,例如营养缺乏、衰老和对压力的反应。色素吸收光的作用使其在视觉上色彩斑斓。这种彩色的外观为研究人员通过植物彩色数字图像进行无损分析提供了好处。本研究利用多光谱数字图像对植物叶片中的叶绿素、类胡萝卜素和花青素三种主要光合色素进行了分析。此外,开发了卷积神经网络(CNN)模型,实现了实时分析系统。系统的输入是植物叶片的多光谱数字图像,输出是色素的含量预测。实验证明,该CNN模型能够很好地识别叶片数字图像与色素含量的关系模式。使用自适应矩估计(Adam)优化器在shaallownet模型上发现了最好的CNN架构,批处理大小为30,训练时间为15 epoch。样本内预测的MSE为0.0037,样本外预测的MSE为0.0060(实际数据范围为-0.1至2.2)。
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