Donald O. Ohlen
STX Corporation
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Featured researches published by Donald O. Ohlen.
International Journal of Remote Sensing | 2000
Thomas R. Loveland; Bradley C. Reed; Jesslyn F. Brown; Donald O. Ohlen; Zhiliang Zhu; Limin Yang; James W. Merchant
Researchers from the U.S. Geological Survey, University of Nebraska-Lincoln and the European Commissions Joint Research Centre, Ispra, Italy produced a 1 km resolution global land cover characteristics database for use in a wide range of continental-to global-scale environmental studies. This database provides a unique view of the broad patterns of the biogeographical and ecoclimatic diversity of the global land surface, and presents a detailed interpretation of the extent of human development. The project was carried out as an International Geosphere-Biosphere Programme, Data and Information Systems (IGBP-DIS) initiative. The IGBP DISCover global land cover product is an integral component of the global land cover database. DISCover includes 17 general land cover classes defined to meet the needs of IGBP core science projects. A formal accuracy assessment of the DISCover data layer will be completed in 1998. The 1 km global land cover database was developed through a continent-by-continent unsupervised classification of 1 km monthly Advanced Very High Resolution Radiometer (AVHRR) Normalized Difference Vegetation Index (NDVI) composites covering 1992-1993. Extensive post-classification stratification was necessary to resolve spectral/temporal confusion between disparate land cover types. The complete global database consists of 961 seasonal land cover regions that capture patterns of land cover, seasonality and relative primary productivity. The seasonal land cover regions were aggregated to produce seven separate land cover data sets used for global environmental modelling and assessment. The data sets include IGBP DISCover, U.S. Geological Survey Anderson System, Simple Biosphere Model, Simple Biosphere Model 2, Biosphere-Atmosphere Transfer Scheme, Olson Ecosystems and Running Global Remote Sensing Land Cover. The database also includes all digital sources that were used in the classification. The complete database can be sourced from the website: http://edcwww.cr.usgs.gov/landdaac/glcc/glcc.html.
Journal of Vegetation Science | 1994
Bradley C. Reed; Jesslyn F. Brown; Darrel VanderZee; Thomas R. Loveland; James W. Merchant; Donald O. Ohlen
Vegetation phenological phenomena are closely related to seasonal dynamics of the lower atmosphere and are therefore important elements in global models and vegetation monitoring. Normalized difference vegetation index (NDVI) data derived from the National Oceanic and Atmospheric Administrations Advanced Very High Resolution Radiom- eter (AVHRR) satellite sensor offer a means of efficiently and objectively evaluating phenological characteristics over large areas. Twelve metrics linked to key phenological events were computed based on time-series NDVI data collected from 1989 to 1992 over the conterminous United States. These measures include the onset of greenness, time of peak NDVI, maximum NDVI, rate of greenup, rate of senescence, and integrated NDVI. Measures of central tendency and variabil- ity of the measures were computed and analyzed for various land cover types. Results from the analysis showed strong coincidence between the satellite-derived metrics and pre- dicted phenological characteristics. In particular, the metrics identified interannual variability of spring wheat in North Dakota, characterized the phenology of four types of grasslands, and established the phenological consistency of deciduous and coniferous forests. These results have implications for large- area land cover mapping and monitoring. The utility of re- motely sensed data as input to vegetation mapping is demon- strated by showing the distinct phenology of several land cover types. More stable information contained in ancillary data should be incorporated into the mapping process, particu- larly in areas with high phenological variability. In a regional or global monitoring system, an increase in variability in a region may serve as a signal to perform more detailed land cover analysis with higher resolution imagery.
Journal of remote sensing | 2011
Xuexia Chen; James E. Vogelmann; Matthew G. Rollins; Donald O. Ohlen; Carl H. Key; Limin Yang; Chengquan Huang; Hua Shi
It is challenging to detect burn severity and vegetation recovery because of the relatively long time period required to capture the ecosystem characteristics. Multitemporal remote sensing data can provide multitemporal observations before, during and after a wildfire, and can improve the change detection accuracy. The goal of this study is to examine the correlations between multitemporal spectral indices and field-observed burn severity, and to provide a practical method to estimate burn severity and vegetation recovery. The study site is the Jasper Fire area in the Black Hills National Forest, South Dakota, that burned during August and September 2000. Six multitemporal Landsat images acquired from 2000 (pre-fire), 2001 (post-fire), 2002, 2003, 2005 and 2007 were used to assess burn severity. The normalized difference vegetation index (NDVI), enhanced vegetation index (EVI), normalized burn ratio (NBR), integrated forest index (IFI) and the differences of these indices between the pre-fire and post-fire years were computed and analysed with 66 field-based composite burn index (CBI) plots collected in 2002. Results showed that differences of NDVI and differences of EVI between the pre-fire year and the first two years post-fire were highly correlated with the CBI scores. The correlations were low beyond the second year post-fire. Differences of NBR had good correlation with CBI scores in all study years. Differences of IFI had low correlation with CBI in the first year post-fire and had good correlation in later years. A CBI map of the burnt area was produced using regression tree models and the multitemporal images. The dynamics of four spectral indices from 2000 to 2007 indicated that both NBR and IFI are valuable for monitoring long-term vegetation recovery. The high burn severity areas had a much slower recovery than the moderate and low burn areas.
Photogrammetric Engineering and Remote Sensing | 1991
Thomas R. Loveland; James W. Merchant; Donald O. Ohlen; Jesslyn F. Brown
Annals of The Association of American Geographers | 1995
Thomas R. Loveland; James W. Merchant; Jesslyn F. Brown; Donald O. Ohlen; Bradley C. Reed; Paul Olson; John Hutchinson
Photogrammetric Engineering and Remote Sensing | 1999
Thomas R. Loveland; Zhiliang Zhu; Donald O. Ohlen; Jesslyn F. Brown; Bradley C. Reed; Limin Yang
Photogrammetric Engineering and Remote Sensing | 1993
Jesslyn F. Brown; Thomas R. Loveland; James W. Merchant; Bradley C. Reed; Donald O. Ohlen
Archive | 1991
Thomas R. Loveland; James W. Merchant; Donald O. Ohlen; Jesslyn F. Brown
Photogrammetric Engineering and Remote Sensing | 1999
Jesslyn F. Brown; Thomas R. Loveland; Donald O. Ohlen; Zhiliang Zhu
Archive | 2006
Zhiliang Zhu; Donald O. Ohlen; Nate Benson