LI Xin, JIN Rui, LIU Shaomin, et al. Upscaling research in HiWATER: Progress and prospects. [J]. Journal of Remote Sensing 20(5):921-932(2016) DOI: 10.11834/jrs.20166241.
Upscaling research in HiWATER: Progress and prospects
Hi WATER初步形成了从采样设计、多尺度观测、代表性误差的度量、尺度上推新方法到真实性检验的研究框架。
Abstract
The scale issue in quantitative remote sensing is a significant challenge that comprises three major problems that need to be addressed:(1) the forward modeling of remote sensing signals for heterogeneous land surfaces
(2) the parameter inversion for heterogeneous land surfaces
and(3) the upscaling of in situ observation for the validation of remote sensing products. This study focuses on the third problem by reviewing the progress of upscaling research in the Heihe Watershed Allied Telemetry Experimental Research(Hi WATER). First
we define several basic concepts associated with scaling on the basis of the probability space and data assimilation theory. These concepts include spatial average
spatial upscaling
footprint scale
pixel scale
point scale
representativeness error
observation truth
and validation threshold. Second
we introduce the multiscale observation platform of Hi WATER and multiscale observation data
which covers the scales from point to pixels
sub-basins
and the whole river basin. Third
we describe several new developments in the sampling design based on geostatistics and temporal stability analysis. Specifically
a hybrid model-based sampling method without any spatial autocorrelation assumptions is developed to optimize the distribution of eco-hydrological wireless sensor network nodes
a universal co Kriging model is proposed to optimize multivariate sampling design
and a stratified block kriging is used to optimize the sampling locations in a spatial heterogeneous area. The temporal stability analysis is improved for the selection of the representative sampling points of the albedo and leaf area index. The stratified temporal stability analysis is proposed to identify the representative sampling points for monitoring long-term soil moisture at the pixel scale in high-intensity irrigated agricultural landscapes. Fourth
the representativeness of the in situ observation of solar radiation
carbon flux
soil moisture
and land surface temperature is evaluated. Results showed that the uncertainty of the validation for remote sensing products in heterogeneous areas mainly comes from the spatial and temporal representativeness of in situ measurements. Fifth
several upscaling methods are developed. The Kriging method is extended to block regression Kriging
area-to-area regression Kriging
spatiotemporal regression block Kriging
and unequal accuracy block Kriging for upscaling the in situ observation from the point-scale or footprint-scale to the pixel scale. Additionally
several case studies show that the Bayesian maximum entropy
a nonlinear method
is capable of providing a generalized theory framework to fuse general knowledge(such as that obtained from a model) and specific knowledge(such as that obtained from direct and indirect observations). The usefulness of high-resolution remote sensing data as auxiliary information in improving the accuracy of upscaling is verified in this work. Overall
the multi-scale observation data collected in Hi WATER are helpful in improving our understanding of remote sensing scale problems.
关键词
像元尺度代表性误差观测真值采样设计真实性检验黑河流域
Keywords
pixel-scalerepresentativeness errortrue valuesampling designvalidationHeihe river basin