Analysis of forest environments - classification as a metric of hyperspectral instrument performance

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Pearlman, J.S.;   Dyk, A.;   Goodenough, D.;   Zhenkui Ma;   Crawford, M.;   Neuenschwander, A.;   Jisoo Ham;  
The Boeing Co., Seattle, WA, USA 

This paper appears in: Advances in Techniques for Analysis of Remotely Sensed Data, 2003 IEEE Workshop on
Issue Date: 27-28 Oct. 2003
On page(s): 428 - 435
ISSN:
Print ISBN: 0-7803-8350-8
Cited by : 2
INSPEC Accession Number: 8088411
Digital Object Identifier: 10.1109/WARSD.2003.1295226 
Date of Current Version: 04 May 2004

Abstract

In considering the design of an operational space-based hyperspectral imager, instrument characteristics such as signal-to-noise, ground resolution and spectral coverage are factors for both system capability and cost. To provide a basis for imager optimization, an exploratory study was performed to investigate the impact of instrument characteristics on forest species classification, as an example criterion. A study site with pure and mixed western hemlock and Douglas fir stands was imaged with Hyperion and AVIRIS. The data were analyzed using classification accuracy of a maximum a posteriori Bayesian classifier applied to selected maximum noise fraction (MNF) transformed features and a random subspace binary hierarchical classifier as a metric for instrument performance. Quantitative results for signal-to-noise, ground resolution, and spectral range suggest operational parameters for hyperspectral imaging systems and clearly indicate the need for advances in methodology for analysis of hyperspectral data.

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