基于卷积神经网络的人工光植物生理失调自动识别

S. Shimamura, Seiichi Koakutsu Kenta Uehara
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引用次数: 3

摘要

人工光植物工厂作为一种稳定生产农作物的技术正受到世界各国的关注。作物的生理失调是作物生长的主要问题之一。Tipburn是植物生长点细胞坏死的一种现象。特别是在PFAL中种植的莴苣,发生倒伏的频率很高。当发生倾斜时,通过人眼观察进行识别,并用手修剪倾斜叶片或从产品中去除倾斜生菜。这些操作需要大量的劳动力和成本。如果能利用机器学习自动进行倾向性识别,经济效益将是巨大的,将成为pal推广的动力。在这项研究中,我们的目标是使用卷积神经网络的机器学习对PFAL中种植的生菜进行发生和不发生的二元判别。特别是,我们的目标是识别的症状,即倒栽油的早期阶段,在叶尖变色黑色和商业价值,因为蔬菜受到损害。实验结果表明,该方法能较准确地识别出烧伤症状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Identification of Plant Physiological Disorders in Plant Factories with Artificial Light Using Convolutional Neural Networks
Plant factories with artificial light (PFAL) are attracting worldwide attention as a technology for stably producing crops. One of the problems of PFAL is tipburn which is a physiological disorder of crops. Tipburn is a phenomenon in which plant growth point cells are necrotized. Lettuce cultivated in PFAL in particular has a high frequency of tipburn. When tipburn occurs, its identification is done by human eye observation, and tipburn leaves are trimmed by hand or tipburn lettuce is removed from products. These operations require much labor and cost. If tipburn identification can automatically be done using machine learning, the economic effect will be great and it will be a driving force for spreading PFAL. In this study, we aim to perform binary discrimination of tipburn occurrence and its non-occurrence about lettuce cultivated in PFAL using machine learning with convolutional neural networks. In particular, we aim to recognize the symptom of tipburn which means the early stages of tipburn immediately before leaf tips discolor blackly and the commercial value as the vegetables is damaged. The results of the experiments indicate that the recognition of the symptom of tipburn can be performed with high accuracy.
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