预测草莓收获时间的机器学习应用

Yang Mihye, Won-Ho Nam, Kim, Taegon, Kwanho Lee, Young Hwa Kim
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引用次数: 5

摘要

智能农场是结合信息通信技术(ICT)、物联网(IoT)、农业技术,以最少的人力运营农场,并自动控制温室环境的系统。基于最近数据驱动技术的机器学习与大数据技术和高性能计算一起出现,为农业操作环境中量化数据密集型过程创造了机会。本文研究了基于图像处理技术的机器学习技术在大棚作物生长状态诊断和草莓收获时间预测中的应用。为了对草莓的生长阶段进行分类,我们使用了基于深度学习神经网络和TensorFlow的机器学习模型进行对象推理和检测。基于训练数据量和训练历元对分类精度进行比较。结果,在200张训练图像和8000个训练步骤的情况下,它能够以超过90%的准确率进行分类。在草莓成熟期和过成熟期,草莓成熟度的检测和分类准确率可达90%以上。同时,实验结果很有希望,他们表明这种方法可以应用于开发预测草莓收获时间的机器学习模型,并可用于为农民和政策制定者提供关于最佳收获时间和收获计划的关键决策支持信息。
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Machine learning application for predicting the strawberry harvesting time
A smart farm is a system that combines information and communication technology (ICT), internet of things (IoT), and agricultural technology that enable a farm to operate with minimal labor and to automatically control of a greenhouse environment. Machine learning based on recently data-driven techniques has emerged with big data technologies and high-performance computing to create opportunities to quantify data intensive processes in agricultural operational environments. This paper presents research on the application of machine learning technology to diagnose the growth status of crops and predicting the harvest time of strawberries in a greenhouse according to image processing techniques. To classify the growth stages of the strawberries, we used object inference and detection with machine learning model based on deep learning neural networks and TensorFlow. The classification accuracy was compared based on the training data volume and training epoch. As a result, it was able to classify with an accuracy of over 90% with 200 training images and 8,000 training steps. The detection and classification of the strawberry maturities could be identified with an accuracy of over 90% at the mature and over mature stages of the strawberries. Concurrently, the experimental results are promising, and they show that this approach can be applied to develop a machine learning model for predicting the strawberry harvesting time and can be used to provide key decision support information to both farmers and policy makers about optimal harvest times and harvest planning.
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