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首页> 外文期刊>ISPRS International Journal of Geo-Information >Exploratory Method for Spatio-Temporal Feature Extraction and Clustering: An Integrated Multi-Scale Framework
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Exploratory Method for Spatio-Temporal Feature Extraction and Clustering: An Integrated Multi-Scale Framework

机译:时空特征提取和聚类的探索方法:集成的多尺度框架

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摘要

This paper presents an integrated framework for exploratory multi-scale spatio-temporal feature extraction and clustering of spatio-temporal data. The framework combines the multi-scale spatio-temporal decomposition, feature identification, feature enhancing and clustering in a unified process. The original data are firstly reorganized as multi-signal time series, and then decomposed by the multi-signal wavelet. Exploratory data analysis methods, such as histograms, are used for feature identification and enhancing. The spatio-temporal evolution process of the multi-scale features can then be tracked by the feature clusters based on the data adaptive Fuzzy C-Means Cluster. The approach was tested with the global 0.25° satellite altimeter data over a period of 21 years from 1993 to 2013. The tracking of the multi-scale spatio-temporal evolution characteristics of the 1997–98 strong El Niño were used as validation. The results show that our method can clearly reveal and track the spatio-temporal distribution and evolution of complex geographical phenomena. Our approach is efficient for global scale data analysis, and can be used to explore the multi-scale pattern of spatio-temporal processes.
机译:本文提出了一个探索性的多尺度时空特征提取和时空数据聚类的集成框架。该框架在一个统一的过程中结合了多尺度的时空分解,特征识别,特征增强和聚类。原始数据首先被重组为多信号时间序列,然后由多信号小波分解。直方图等探索性数据分析方法用于特征识别和增强。然后,基于数据自适应模糊C均值聚类的特征聚类可以跟踪多尺度特征的时空演化过程。从1993年至2013年的21年期间,使用全球0.25°卫星高度计数据对这一方法进行了测试。对1997-98年强厄尔尼诺现象的多尺度时空演化特征的跟踪被用作验证。结果表明,该方法可以清晰地揭示和跟踪复杂地理现象的时空分布和演化。我们的方法对于全局规模的数据分析是有效的,并且可以用于探索时空过程的多尺度模式。

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