A Pathfinder Global Soils Research Initiative
Pathfinder Imagery for Global Soils Identification
Robert C. Lozar
Construction Engineering Research Laboratory
USA
(NB: This plus other global presentations are available on the Internet at:
http://www.cecer.army.mil/WWWDEMO/global_apps/global_menu.html )
Objective
To develop a method which will improve the global soils map. The method will incorporate the high
confidence statistical characteristics derived from NASA's latest Mission To Planet Earth (MTPE)
satellite imagery from the Pathfinder Data Sets with currently available digital mapped information.
The Pathfinder Data is being generated to test the Earth Observing System Data and Information
System (EOSDIS).
Problem
The only existing global soils map is the one compiled by the United Nations Food and Agriculture
Organization (FAO) from individual countries using a categorization based on a combination of
systems. Though this is a vast step forward, it is difficult to use to:
* generate soil interpretations,
* assign statistical quality evaluations, or
* update.
Why are Soils Identification Important?
Soils are a key indicator of many environmental concerns. They indicate (among many other
concerns):
* the sensitivity to environmental impacts,
* the parent materials and the mineralogy,
* many subsurface conditions,
* the potential agricultural productivity,
* expected soil moisture,
* the recent climatic conditions, and
* the susceptibility to erosion.
Basic Technique
We will use the Pathfinder data sets (such as the Normalized Vegetation Index) to extract statistical
characteristics of the data, correlate that with the central sections of the FAO soils units to derive
significant correlations. How the statistical characteristics change over time will also be investigated.
These, in combination with other information types (such as soils maps, topography, terrain types,
water flow concentration, or climate character) will be used to improve the reliability of the current
soils map and provide a basis for continued improvement as more data becomes available. In
addition, using remotely sensed data can provide a map from which seasonally varying interpretations
can be
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