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Spectral classification of crop groups for land use identification with temporally sparse time-series satellite images

机译:利用时间稀疏时间序列卫星图像识别土地利用的农作物类别的光谱分类

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In previous work we demonstrated the use of temporal image sequences to identify broad land use classes [1]. The approach aims to provide information critical to modeling land use impacts while minimizing reliance on collecting ground control for individual images. Here, we extend the method to include spectral information taken at the peak NDVI stage for each field. Results show the level of spectral separability of various key crops and pastures, and how we have grouped certain crops that are not spectrally separable. Whereas we obtained only 42% classification accuracy when attempting to classify crops individually, the classification accuracy for our crop groups was 81%. A major challenge is that image datasets are typically sparse - due to cloud cover in New Zealand - so the growth stage, and therefore appearance, of individual crops can vary widely in the `peak' NDVI image.
机译:在先前的工作中,我们演示了使用时间图像序列来识别广泛的土地利用类别[1]。该方法旨在提供对建模土地使用影响至关重要的信息,同时最大程度地减少对收集单个图像的地面控制的依赖。在这里,我们将方法扩展为包括在每个场的峰值NDVI阶段获取的光谱信息。结果显示了各种主要农作物和牧草的光谱可分离性水平,以及我们如何对无法光谱分离的某些农作物进行了分组。尝试对农作物进行单独分类时,我们仅获得42%的分类准确度,而我们农作物组的分类准确度则为81%。一个主要的挑战是,由于新西兰的云层覆盖,图像数据集通常比较稀疏,因此在“峰值” NDVI图像中,各个农作物的生长阶段和外观都可能有很大差异。

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