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Estimating Crop Yields With Remote Sensing And Deep Learning

机译:通过遥感和深度学习估算作物产量

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Increasing the accuracy of crop yield estimates may allow improvements in the whole crop production chain, allowing farmers to better plan for harvest, and for insurers to better understand risks of production, to name a few advantages. To perform their predictions, most current machine learning models use NDVI data, which can be hard to use, due to the presence of clouds and their shadows in acquired images, and due to the absence of reliable crop masks for large areas, especially in developing countries. In this paper, we present a deep learning model able to perform pre-season and in-season predictions for five different crops. Our model uses crop calendars, easy-to-obtain remote sensing data and weather forecast information to provide accurate yield estimates.
机译:提高作物产量估算的准确性可能会改善整个作物生产链,使农民能够更好地计划收割,并使保险公司能够更好地了解生产风险,仅举几例优势。为了执行预测,大多数当前的机器学习模型都使用NDVI数据,由于采集的图像中存在云层和阴影,并且由于在大面积区域(尤其是在开发中)缺少可靠的作物遮罩,因此很难使用NDVI数据国家。在本文中,我们提出了一种深度学习模型,能够对五种不同的作物进行季前和季内预测。我们的模型使用作物日历,易于获取的遥感数据和天气预报信息来提供准确的产量估算。

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