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Multi-Temporal Analysis of Remotely Sensed Information Using Wavelets

机译:基于小波的多时相遥感信息分析

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Land cover changes (LCC) are an important component of Global Change. LCC can be described not only by its occurrence, but also by the land cover replacement, causal agent and change duration or recuperation. Nowadays, remote sensing offers the opportunity to assemble reliable time series, however this fails to make a characterization of LCC since the series represents dynamics due to the combination of several processes occurring simultaneously. In this article we proposed an approach to the study of LCC using wavelet transform (WT) and MODIS vegetation time series. Through this work we have demonstrated the capacity of this tool in order to recognize and characterize four different LLC documented in scientific publications, presenting the results divided in frequency scales as interannual, seasonal and rapid changes. The information decomposed in frequency allows the interpretation of each involved process without the interference of others. The uses of WT in an image time series give us the possibility of joining temporal and spatial dimension in a single raster. Layers generated with WT might be used to pattern recognition in LCC and to improve an image classification.
机译:土地覆被变化(LCC)是全球变化的重要组成部分。 LCC不仅可以通过其发生来描述,还可以通过土地覆盖物的更换,因果关系以及变更持续时间或恢复来描述。如今,遥感技术为组装可靠的时间序列提供了机会,但是由于对多个过程同时进行,该序列代表了动态,因此无法对LCC进行表征。在本文中,我们提出了一种基于小波变换(WT)和MODIS植被时间序列的LCC研究方法。通过这项工作,我们已经证明了该工具的功能,以便识别和表征科学出版物中记录的四个不同的LLC,并将结果划分为频率范围,即年际,季节和快速变化。通过频率分解的信息可以解释每个涉及的过程,而不会受到其他过程的干扰。 WT在图像时间序列中的使用使我们有可能在单个栅格中加入时间和空间维度。用WT生成的图层可用于在LCC中进行模式识别并改善图像分类。

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