Classification Accuracy for Stratification with Remotely Sensed Data

Tools are developed that help specify the classification accuracy required from remotely sensed data. These tools are applied during the planning stage of a sample survey that will use poststratification, prestratification with proportional allocation, or double sampling for stratification. Accuracy...

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Veröffentlicht in:Forest science 2003-06, Vol.49 (3), p.402-408
Hauptverfasser: Czaplewski, Raymond L., Patterson, Paul L.
Format: Artikel
Sprache:eng
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Zusammenfassung:Tools are developed that help specify the classification accuracy required from remotely sensed data. These tools are applied during the planning stage of a sample survey that will use poststratification, prestratification with proportional allocation, or double sampling for stratification. Accuracy standards are developed in terms of an “error matrix,” which is familiar to remote sensing specialists. In addition, guidance is provided to determine when new remotely sensed classifications are needed to maintain acceptable levels of statistical precision with stratification. FOR. SCI. 49(3):402–408.
ISSN:0015-749X
1938-3738
DOI:10.1093/forestscience/49.3.402