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Estimation of Rice Area from Satellite Data Using Neural Networks

机译:利用神经网络估计卫星数据的稻田

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摘要

It is well-known that a neural network is useful to classify several patterns. In order to estimate the rice area we apply a network of learning vector quantization (LVQ) to remote sensing data including Synthetic Aperture Radar (SAR) and optical sensors for estimation of a rice area. The satellite data were observed before and after planting rice. Three RADARSAT and one SPOT/HRV data are used in Higashi-Hiroshima City, Japan. RADARSAT image has only one band data and it is difficult to extract a rice area. However, SAR back-scattering intensity in a rice area decreases from April to May and increases from May to June. Thus, three RADARSAT images from April to June are used to know the changes of rice growth. The LVQ classification is applied to RADARSAT and SPOT data in order to evaluate rice area. It is shown that the true production rate of rice area can be estimated from RADASAT data using LVQ by approximately 60% compared with SPOT data. It will be shown that the proposed method is much better compared with SAR image classification by the maximum likelihood (MLH) method.
机译:众所周知,神经网络可用于分类若干模式。为了估计米区域,我们将学习矢量量化(LVQ)的网络应用于遥感数据,包括合成孔径雷达(SAR)和光学传感器,用于估计稻米面积。在种植米饭之前和之后观察到卫星数据。日本Higashi-Higashima市使用了三个雷达拉特和一个点/ HRV数据。 Radarsat Image只有一个带数据,很难提取稻米。然而,水稻面积的SAR背散射强度从4月到5月减少并从5月份增加到6月。因此,从4月到6月到六月的三个雷达拉特图像用于了解水稻生长的变化。 LVQ分类应用于Rayarsat和Spot Data以评估水稻区域。结果表明,与点数据相比,可以使用LVQ的Radasat数据从Radasat数据估算稻田的真正生产率。将表明,与最大似然(MLH)方法的SAR图像分类相比,该方法与SAR图像分类更好。

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