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Estimation of inter-annual winter crop area variation and spatial distribution with low resolution NDVI data by using neural networks trained on high resolution images

机译:通过使用在高分辨率图像上训练的神经网络,利用低分辨率NDVI数据估算冬季作物的年际变化和空间分布

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The current work aimed at testing a methodology which can be applied to low spatial resolution satellite data to assess inter-annual crop area variations on a regional scale. The methodology is based on the assumption that within mixed pixels such variations are reflected by changes in the related multitemporal Normalised Difference Vegetation Index (NDVI) profiles. This implies that low resolution NDVI images with high temporal frequency can be used to update land cover estimates derived from higher resolution cartography. More particularly, changes in the shape of annual NDVI profiles can be detected by a Neural Network trained by using high resolution images for a subset of the study years. By taking into account the respective proportions of the remaining land covers within a given low resolution pixel, the accuracy of the net can be further increased. The proposed methodology was applied in a study region in central Italy to estimate area changes of winter crops from low resolution NDVI profiles. The accuracy of such estimates was assessed by comparison to official agricultural statistics using a bootstrap approach. The method showed promise for estimating crop area variation on a regional scale and proved to have a significantly higher forecast capability than other methods used previously for the same study area.
机译:当前的工作旨在测试一种可用于低空间分辨率卫星数据的方法,以评估区域尺度上的年际作物面积变化。该方法基于这样的假设:在混合像素内,此类变化通过相关的多时间归一化差异植被指数(NDVI)轮廓的变化反映出来。这意味着具有较高时频的低分辨率NDVI图像可用于更新从高分辨率制图获得的土地覆盖估算。更具体地说,年度NDVI轮廓形状的变化可以通过神经网络进行检测,该网络通过使用一部分研究年份的高分辨率图像进行训练。通过考虑在给定的低分辨率像素内剩余的土地覆盖物的各个比例,可以进一步提高网的精度。拟议的方法已在意大利中部的一个研究区域中应用,可通过低分辨率NDVI剖面估算冬季作物的面积变化。通过使用自举方法与官方农业统计数据进行比较,评估了此类估计的准确性。该方法显示出在区域范围内估计作物面积变化的希望,并且比以前用于相同研究区域的其他方法具有明显更高的预测能力。

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