1981
DOI: 10.1175/1520-0450(1981)020<0309:actatg>2.0.co;2
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Automatic Cloud Tracking Applied to GOES and METEOSAT Observations

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1983
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Cited by 32 publications
(14 citation statements)
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“…However, multichannel infrared sensors might help to improve cloud selection, height assessment and data coverage. Monitoring of cloud motions has a positive influence on synoptic-scale analyses and forecasts (Virji, 1981) but demands the use of automated methods of tracking (Endlich and Wolf, 1981;Tsuchiya and Downey, 1981). In cloud-free areas, winds can often be derived with useful accuracy from water vapor data (Stewart et al, 1985).…”
Section: Satellite Windsmentioning
confidence: 99%
“…However, multichannel infrared sensors might help to improve cloud selection, height assessment and data coverage. Monitoring of cloud motions has a positive influence on synoptic-scale analyses and forecasts (Virji, 1981) but demands the use of automated methods of tracking (Endlich and Wolf, 1981;Tsuchiya and Downey, 1981). In cloud-free areas, winds can often be derived with useful accuracy from water vapor data (Stewart et al, 1985).…”
Section: Satellite Windsmentioning
confidence: 99%
“…Cloud motion vectors can be used to derive wind fields at one or more levels. 60 " 62 In addition, rainfall patterns and amounts can be estimated by means of empirical relationships linking satellite-derived cloud heights (as represented by "brightness" temperatures) to rainfall rates. 63 Such wind and precipitation estimates have been prepared from information obtained by the Japanese Geosynchronous Meteorological Satellite for use in applying ENAMAP to the area shown in Figure II.…”
Section: Data-sparse Regionsmentioning
confidence: 99%
“…This approach also enables the derivation of cloud velocity. Optical flow was found the most suitable approach for cloud tracking during this study, while other cloud tracking methods were the topic of several previous publications (Endlich and Wolf, 1981;Guillot et al, 2012;Escrig et al, 2013). The CMV field and velocities are utilized to calculate the streamline of the flow field reaching the location of interest.…”
Section: Introductionmentioning
confidence: 99%