National Mapping Division EROS Data Center U. S. Geological Survey U.S. Geological Survey Earth Resources Operation Systems (EROS) Data Center World Data.

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Presentation transcript:

National Mapping Division EROS Data Center U. S. Geological Survey U.S. Geological Survey Earth Resources Operation Systems (EROS) Data Center World Data Center for Remotely Sensed Land Data

National Mapping Division EROS Data Center U. S. Geological Survey USGS EROS DATA CENTER Land Remote Sensing from Space: Acquisition to Applications Earth Observation Satellites USGS National Archive Challenge Data Applications Declassified Systems Landsat 1-5,7 NOAA - POES Shuttle Radar TERRA (1999) NASA-EOS (1999) High Resolution Systems Preserve Provide Access Process Reproduce Distribute Hold in Trust Land Cover Environmental Monitoring Emergency Response Fire Danger Rating DOI Land Management Natural Hazards Coastal Zones Expanding to over 18 million images of the earth!

National Mapping Division EROS Data Center U. S. Geological Survey USGS EDC Data Holdings  Aerial Photographs  1940-present  U.S. coverage  > 9 million frames  Scale: 1-2 meter Natl. Aerial Photography Program (NAPP), Dallas/Fort Worth Airport

National Mapping Division EROS Data Center U. S. Geological Survey USGS EDC Data Holdings  Landsat Satellite Images  1972-present  > 18 million frames  Global coverage  meter Landsat 5 MSS

National Mapping Division EROS Data Center U. S. Geological Survey USGS EDC Data Holdings  AVHRR Satellite Images  1987-present  Global coverage  1 km resolution AVHRR Time Series

National Mapping Division EROS Data Center U. S. Geological Survey Fort Collins, Colorado - Landsat 7 - July 26, 1999 Using Landsat satellite imagery to estimate agricultural chemical exposure in an epidemiological study Susan Maxwell, PhD (USGS EROS Data Center) Interface 2002, Montreal, Canada Collaborators: Dr. Jay Nuckols, EHASL, Colorado State University Dr. Mary Ward, National Cancer Institute Eric Smith, EHASL, Colorado State University Leanne Small, EHASL, Colorado State University

National Mapping Division EROS Data Center U. S. Geological Survey Agriculture Chemicals  Fertilizers  Pesticides Spray drift Drinking water Dust Why use satellite imagery?  Traditional methods of collecting chemical exposure data don’t work well (environmental/biological sampling, questionnaires)

National Mapping Division EROS Data Center U. S. Geological Survey Why use satellite imagery?  Cancers generally take several years to develop, therefore need to reconstruct historical exposure  Our approach: use Landsat imagery to create historical land use/crop type maps – integrate with other data (chemical use, soils, wind, etc.) to estimate exposure

National Mapping Division EROS Data Center U. S. Geological Survey Metric Development … Transport Modeling (Ward et al. Environmental Health Perspectives, 2000)

National Mapping Division EROS Data Center U. S. Geological Survey Why Landsat ?  Longest running satellite sensor (1972-current)  Successful crop type mapping applications (AGRISTARS, etc.)  Appropriate spectral bands (visible, near infrared, middle infrared)  Appropriate spatial resolution (30-80 meter)  Inexpensive (compared to higher resolution data sets)

National Mapping Division EROS Data Center U. S. Geological Survey Crop Type Classification - Sheldon, NE

National Mapping Division EROS Data Center U. S. Geological Survey Case Study – Mapping Corn  Chemicals used on corn (nitrogen, atrazine) have been associated with several cancers and birth defects From: USGS 1225, The quality of our nation’s waters Ground-water contamination risk

National Mapping Division EROS Data Center U. S. Geological Survey Traditional classification methods are not appropriate  Only want CORN  BIG Data Sets Large geographical regions File size ~500 Mb/image Multi-year 30 years

National Mapping Division EROS Data Center U. S. Geological Survey Traditional classification methods are not appropriate (cont.)  Usually need ground reference data – expensive, difficult to get for historical data  Time-consuming process

National Mapping Division EROS Data Center U. S. Geological Survey Crop characteristics  Corn dominates

National Mapping Division EROS Data Center U. S. Geological Survey Crop characteristics  Large, homogeneous fields  Spectral characteristics differ from other major crops (soybeans, alfalfa, winter wheat, etc.)  Spectrally similar to deciduous trees, riparian area

National Mapping Division EROS Data Center U. S. Geological Survey Case Study – Mapping Corn  Initial method – software was developed to ….  Use existing land cover maps (NLCD) to eliminate non-row crop classes (spring grains, hay/pasture, trees, urban, wetland, etc.)  Use existing USDA acreage estimates to target specific geographic region (i.e., county) to collect training statistics  Use maximum likelihood algorithm to classify the entire image  Use the Mahalanobis distance image in combination with USDA acreage estimates to identify cut-off for “highly likely corn”, “likely corn” and “unlikely corn”

National Mapping Division EROS Data Center U. S. Geological Survey Method cont.  Use existing land cover maps (NLCD) to eliminate non-row crop classes (spring grains, hay/pasture, trees, urban, wetland, etc.)

National Mapping Division EROS Data Center U. S. Geological Survey Method cont.  Use USDA acreage estimates to target specific geographic region (i.e., county) to collect training signature

National Mapping Division EROS Data Center U. S. Geological Survey Method cont.  Use the Mahalanobis distance image in combination with USDA acreage estimates to identify cut-off for “highly likely corn”, “likely corn” and “unlikely corn” Highly Likely Corn Likely Corn Mahalanobis distance image

National Mapping Division EROS Data Center U. S. Geological Survey n... n131n1066.3n n100.7n2n2 n132n417.2n n3n3 n... n1787n0.4n n3n3 Mahalanobis Distance Threshold

National Mapping Division EROS Data Center U. S. Geological Survey Results  >80% average accuracy  Higher errors occur when … Spectrally similar cover types in same area (millet, sorghum) Image date is too early in growing season Non-parametric signature (clouds/haze, irrigated/non- irrigated corn)

National Mapping Division EROS Data Center U. S. Geological Survey Thank You Susan Maxwell