The purpose of the workshop was to invite statisticians, applied mathematicians, computer scientists, data system architects, experts in remote sensing technology, and Climate and Earth System scientists to review, discuss, and plan research on issues related to large-scale, efficient analysis of distributed data using spatial statistical methods. Our motivation in organizing this event was to catalyze interchange among experts on the fast-emerging problem of analysis of distributed data. As part of SAMSI's 2017-2018 Program on Mathematical and Statistical Methods for Climate and the Earth System, a Working Group on Remote Sensing was established to address statistical and mathematical research problems in the analysis of remote sensing dat...
Due to rapid data growth, it is increasingly becoming infeasible to move massive datasets, and stati...
This thesis addresses the uncertainty in empirical remote sensing models. Specifically the empirica...
Interest in statistical analysis of remote sensing data to produce measurements of environment, agri...
Key words: random process, geostatistics, spectral analysis, least-squares collocation. The large va...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
This paper presents an integrated approach towards spatial statistics for remote sensing. Using the ...
This paper presents an integrated approach towards spatial statistics for remote sensing. Using the ...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
This paper summarizes the development and application of spatial statistical models in satellite opt...
Using the literature review and quantitative analysis, the research on the quality and uncertainty o...
This paper summarizes the development and application of spatial statistical models in satellite opt...
As remote sensing for scientific purposes has transitioned from an experimental technology to an ope...
Remote sensing and geographical information science (GIS) have advanced considerably in recent years...
The procedures of a workshop assessing the state of the art of machine analysis of remotely sensed d...
Due to rapid data growth, it is increasingly becoming infeasible to move massive datasets, and stati...
This thesis addresses the uncertainty in empirical remote sensing models. Specifically the empirica...
Interest in statistical analysis of remote sensing data to produce measurements of environment, agri...
Key words: random process, geostatistics, spectral analysis, least-squares collocation. The large va...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
This paper presents an integrated approach towards spatial statistics for remote sensing. Using the ...
This paper presents an integrated approach towards spatial statistics for remote sensing. Using the ...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
This paper summarizes the development and application of spatial statistical models in satellite opt...
Using the literature review and quantitative analysis, the research on the quality and uncertainty o...
This paper summarizes the development and application of spatial statistical models in satellite opt...
As remote sensing for scientific purposes has transitioned from an experimental technology to an ope...
Remote sensing and geographical information science (GIS) have advanced considerably in recent years...
The procedures of a workshop assessing the state of the art of machine analysis of remotely sensed d...
Due to rapid data growth, it is increasingly becoming infeasible to move massive datasets, and stati...
This thesis addresses the uncertainty in empirical remote sensing models. Specifically the empirica...
Interest in statistical analysis of remote sensing data to produce measurements of environment, agri...