This paper outlines the development of a multi-satellite precipitation estimation methodology that draws on techniques from machine learning and morphology to produce high-resolution, short-duration rainfall estimates in an automated fashion. First, cloud systems are identified from geostationary infrared imagery using morphology based watershed segmentation algorithm. Second, a novel pattern recognition technique, growing hierarchical self-organizing map (GHSOM), is used to classify clouds into a number of clusters with hierarchical architecture. Finally, each cloud cluster is associated with co-registered passive microwave rainfall observations through a cumulative histogram matching approach. The network was initially trained using remot...
A new multiplatform multisensor satellite rainfall estimation technique is proposed in which sequenc...
Over the years, estimation of precipitation from geostationary satellite imagery has proved to be a ...
This thesis addresses the problem of estimating rainfall rates from satellite imagery. The potential...
This paper outlines the development of a multi‐satellite precipitation estimation methodology that d...
Precipitation estimation from satellite information (VISIBLE , IR, or microwave) is becoming increas...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
Satellite precipitation estimation at high spatial and temporal resolutions is beneficial for resear...
Among all natural phenomena, precipitation is the main driver of the hydrological cycle and the chal...
Clouds and precipitation are key components of the Earth’s hydrological cycle, yet there is a lack o...
The design, management and operation (as well as the associated costs) of major water resource proje...
The consequences of global warming include changes in rainfall patterns and increase in flood risks ...
[1] Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial ...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
A new multiplatform multisensor satellite rainfall estimation technique is proposed in which sequenc...
Over the years, estimation of precipitation from geostationary satellite imagery has proved to be a ...
This thesis addresses the problem of estimating rainfall rates from satellite imagery. The potential...
This paper outlines the development of a multi‐satellite precipitation estimation methodology that d...
Precipitation estimation from satellite information (VISIBLE , IR, or microwave) is becoming increas...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
Satellite precipitation estimation at high spatial and temporal resolutions is beneficial for resear...
Among all natural phenomena, precipitation is the main driver of the hydrological cycle and the chal...
Clouds and precipitation are key components of the Earth’s hydrological cycle, yet there is a lack o...
The design, management and operation (as well as the associated costs) of major water resource proje...
The consequences of global warming include changes in rainfall patterns and increase in flood risks ...
[1] Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial ...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
A new multiplatform multisensor satellite rainfall estimation technique is proposed in which sequenc...
Over the years, estimation of precipitation from geostationary satellite imagery has proved to be a ...
This thesis addresses the problem of estimating rainfall rates from satellite imagery. The potential...