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Temporal Dimensionality Reduction for Land Cover Map Production Using High Resolution Image Time Series

机译:使用高分辨率图像时间序列减少土地覆盖图生产的时间维数

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Land cover mapping using high resolution image time series faces the issue dealing with high volumes of data which can threaten the ability of supervised classifiers to learn pertinent decision boundaries. Although dimensionality reduction approaches have been applied to hyperspectral imagery for a long time, their use with dense time series has not yet been explored. We study the usefulness of dimensionality reduction as a pre-processing step for high resolution optical image time series supervised classification for land cover mapping. Principal Component Analysis (PCA), Autoencoders and Ko-honen's Self Organising Map are compared over 3 dimensionality reduction approaches: global, per date and per band. Applying PCA to each date of the time series yields the best results in terms of classification accuracy.
机译:使用高分辨率图像时间序列的土地覆盖制图面临着处理大量数据的问题,这可能会威胁监督分类器学习相关决策边界的能力。尽管降维方法已在高光谱图像上应用了很长时间,但尚未探索将其与稠密时间序列一起使用。我们研究降维的有效性,将其作为高分辨率光学图像时间序列监督分类的预处理步骤,以进行土地覆被制图。在3维降维方法上比较了主成分分析(PCA),自动编码器和Ko-honen的自组织图:全局,每个日期和每个频段。就分类准确性而言,将PCA应用于时间序列的每个日期都可以得到最好的结果。

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