Science Inventory

QUANTIFYING STRUCTURAL PHYSICAL HABITAT ATTRIBUTES USING LIDAR AND HYPERSPECTRAL IMAGERY

Citation:

Hall, R. K., R. Watkins, D T. Heggem, K B. Jones, AND P Kaufmann. QUANTIFYING STRUCTURAL PHYSICAL HABITAT ATTRIBUTES USING LIDAR AND HYPERSPECTRAL IMAGERY. Presented at Environmental Monitoring and Assessment Program (EMAP) Symposium 2004, Newport, RI, May 3-7, 2004.

Impact/Purpose:

There are four basic objectives of the project:

Demonstrate the application of a comparative landscape assessment in analyzing the vulnerability of surface and coastal water conditions to declines based on landscape conditions (as estimated by landscape indicators as demonstrated in the mid-Atlantic landscape atlas) in western environments;

Develop and apply landscape assessment approaches relative to specific issues, including an ability to prioritize the vulnerability of areas relative to the Clean Water Act 303(d) designations; Quantify relationships between landscape conditions (as measured by landscape indicators) and surface and coastal waters in the west to reduce the uncertainty in comparative landscape assessments, and issue-specific, landscape assessments (e.g., Total Maximum Daily Load (TMDLs);

Complete a west-wide, comparative landscape assessment relative to surface and coastal water vulnerability;

Transfer landscape assessment technologies to Regional Offices so that they can conduct landscape assessments at many scales.

Description:

Structural physical habitat attributes include indices of stream size, channel gradient, substrate size, habitat complexity and cover, riparian vegetation cover and structure, anthropogenic disturbances and channel-riparian interaction. These habitat attributes will vary dependent on ecological setting and in the presence of anthropogenic disturbances. Lidar is an airborne scanning laser system that provides information on topography, as well as height and structure of vegetation and other ground features. Lidar-derived DEMs, at I meter horizontal and 0.3 meter vertical resolution, allow for the measuring of approximate channel dimensions (width, depth, volume), slope, channel complexity (residual pools, morphometric complexity, hydraulic roughness), riparian vegetation (height), dimensions of riparian zone, anthropogenic alterations and disturbances, and channel and riparian interaction. Hyperspectral imagery is comprised of narrow spectral bandwidths (IOnm) with a continuous spectrum in the visual to near infrared portion of the electromagnetic spectrum. Hyperspectral imagery offers the advantages of high spectral and spatial resolution allowing for the detection and identification of riparian vegetation and natural and anthropogenic features not possible with satellite imagery .When combined, or fused, these technologies comprise a powerful geospatial dataset for assessing and monitoring environmental characteristics and condition, and in delineating and quantifying structural physical habitat attributes at different spatial scales (reach, sub-basin, watershed). Examples taken from Nevada and Oregon pilot projects illustrate the utility and capability of high resolution remote sensing in detecting a variety of features ( e.g., vegetation type, sedimentation, water column constituents, potential sources of non-point source pollution), channel attributes, and in identifying ecological condition. .

Record Details:

Record Type:DOCUMENT( PRESENTATION/ ABSTRACT)
Product Published Date:05/03/2004
Record Last Revised:06/06/2005
Record ID: 76164