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Mixed Model Estimation of Rice Yield based on NDVI and GNDVIusing a Satellite Image.

机译:基于NDVI和GNDViusing卫星图像的水稻产量的混合模型估计。

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In Japan, a sustainable supply of rice should be guaranteed since it is the staple food. Therefore it is important to stabilize rice farmers' incomes by giving them appropriate compensation even at the time of adverse weather, e.g. cold summer. In thecase of compensating farmers' incomes based on a comparison between the usual yield and estimated yield, an accurate and quick estimation of rice yield is significant to help farmers at the time of disaster. However, a manual survey requires a huge amount of effort and time to investigate all the fields where damage has been declared, especially when a large-scale cool summer occurs; therefore, we propose a yield estimation system using satellite images and part of the yield data. Our system provides an accurate and quick yield estimation for the vast extent of the fields at a reasonable cost.Many rice yield estimation methodologies utilizing satellite images have been studied over the years. For example, a crop growth model-based method and deep learning based method that utilize many satellite images taken multiple times at different timeshave been proposed. Although we can get much information about fields from many satellite images, systems using plural images cost much and need exhaustive calibration before the estimation. Therefore, in this study we propose a yield estimation method using a single image that is taken just before the harvest time. First, we extracted the spectral values from the satellite image using field GIS data and then used a mixed model to perform rice yield estimation. Mixed model is expanded linear regressionmodel and able to take the difference between rice varieties, such as Yumepirika and Nanatsuboshi, into accounts. In addition, we introduced two vegetation indexes, normalized difference vegetation index (NDVI) and green normalized difference vegetationindex (GNDVI), into our model as feature values. Generally, NDVI and GNDVI have a positive correlation with the volume of the plant on the field and are used for yield estimation. Of course, we could use machine learning methods, for example random forest and support vector regression. However, we adopted a mixed model considering the explainability of the results and tha fact that the number of input feature values is small.The area of interest is Asahikawa-City, Hokkaido Province, Japan. We demonstrated our method on two datasets and evaluated the performance of our model based on mean absolute error (MAE) using 10-fold cross-validation. One dataset was damaged field dataacquired in 2018 (2170 fields). The other was undamaged field data acquired in 2017 (1358 fields). We used RapidEye and SPOT-6 satellite images in 2017 and 2018, respectively. Our experimental results show that our model reduces the MAE of the estimatedyield by over 2.5% percent compared to conventional regression methods in each damaged field and undamaged field case.
机译:在日本,应该保证可持续的大米供应,因为它是主食。因此,即使在恶劣天气时,也可以通过给予适当的赔偿来稳定水稻农民收入是很重要的。寒冷的夏天。基于通常产量和估计产量的比较,基于薪酬和估计产量之间的比较,对水稻产量的准确和快速估计有关在灾难时帮助农民。然而,手动调查需要大量的努力和时间来调查宣布损坏的所有领域,特别是当发生大规模的凉爽夏季时;因此,我们提出了使用卫星图像的产量估计系统和产量数据的一部分。我们的系统以合理的成本提供了准确和快速的产生估计,以合理的成本。多年来已经研究了利用卫星图像的大米产量估算方法。例如,提出了一种基于作物生长模型的方法和基于深度学习的方法,该方法利用多次在不同的时间段多次拍摄的许多卫星图像。虽然我们可以获得有关来自许多卫星图像的字段的许多信息,但是使用多个图像的系统成本多,并且在估计之前需要详尽校准。因此,在该研究中,我们提出了使用在收获时间之前采取的单个图像的产量估计方法。首先,我们使用场GIS数据从卫星图像中提取光谱值,然后使用混合模型来执行水稻产量估计。混合模型是扩展的线性回归模型,能够在账户中取得水稻品种(如yumepirika和Nanatuboshi)的差异。此外,我们介绍了两种植被指标,归一化差异植被指数(NDVI)和绿色归一化差异植被(GNDVI),作为特征值。通常,NDVI和GNDVI与场上的植物体积具有正相关性,并且用于产量估计。当然,我们可以使用机器学习方法,例如随机林并支持向量回归。然而,我们采用了一种混合模型,考虑到结果和THA的解释性,即输入特征值的数量很小。兴趣领域是日本北海道省的旭川市。我们在两个数据集上展示了我们的方法,并根据使用10倍交叉验证的平均绝对误差(MAE)评估我们模型的性能。 2018年,一个数据集已损坏DataAcQuired(2170个字段)。另一个是2017年(1358个字段)中获取的未恢复的现场数据。我们在2017年和2018年使用了Rapideye和Spot-6卫星图像。我们的实验结果表明,与每个受损场中的传统回归方法相比,我们的模型将估计坝的MAE减少了超过2.5%的百分比。

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