Title :
Spatiotemporal dimensionality and time-space characterization of vegetation phenology from multitemporal MODIS EVI
Author :
Small, Christopher
Author_Institution :
Lamont Doherty Earth Obs., Columbia Univ., Columbia, NY, USA
Abstract :
Spatiotemporal dimensionality refers to the structure of the continuum of spatial and temporal patterns in an image time series. Time-Space characterization refers to an approach for representing this continuum as combinations of spatial and temporal components with a minimum of assumptions about the forms of the patterns. Patterns can be related to processes through modeling - both deterministic and statistical. By combining characterization and modeling, two complementary analytical tools can be used together so that each resolves a key limitation of the other. Empirical Orthogonal Function analysis, used in conjunction with Temporal Mixture Models, provide a way to 1) Represent the spatiotemporal dimensionality of an image time series, 2) Identify distinct temporal modes and their spatial distributions, and 3) Map the relative contributions of these modes to the observed image time series as spatially continuous fields. Some strengths and limitations of Time-Space characterization are illustrated using multitemporal MODIS EVI time series of vegetation dynamics on the Ganges-Brahmaputra delta.
Keywords :
geophysical image processing; principal component analysis; spatiotemporal phenomena; time series; vegetation mapping; Ganges-Brahmaputra delta; deterministic process; distinct temporal mode; empirical orthogonal function analysis; image time series; multitemporal MODIS EVI time series; spatial distribution; spatial pattern structure; spatiotemporal dimensionality analysis; statistical process; temporal mixture model; temporal pattern structure; time-space characterization; vegetation dynamics; vegetation phenology; Analytical models; Eigenvalues and eigenfunctions; Spatial resolution; Spatiotemporal phenomena; Time series analysis; Transforms; Vegetation mapping; EOF; Mixture model; Spatiotemporal;
Conference_Titel :
Analysis of Multi-temporal Remote Sensing Images (Multi-Temp), 2011 6th International Workshop on the
Conference_Location :
Trento
Print_ISBN :
978-1-4577-1202-9
DOI :
10.1109/Multi-Temp.2011.6005049