The influence of autocorrelation in signature extraction—an example from a geobotanical investigation of Cotter Basin, Montana
- 1 March 1984
- journal article
- research article
- Published by Taylor & Francis in International Journal of Remote Sensing
- Vol. 5 (2) , 315-332
- https://doi.org/10.1080/01431168408948811
Abstract
The presence of positive serial correlation (autocorrelation) in remotely sensed data results in an underestimate of the variance-covariance matrix when calculated using contiguous pixels. This underestimate produces an inflation in F statistics. For a set of Thematic Mapper Simulator data (TMS), used to test the ability to discriminate a known geobotanical anomaly from its background, the inflation in F statistics related to serial correlation is between 7 and 70 times. This means that significance tests of means of the special bands initially appear to suggest that the anomalous site is very different in spectral reflectance and emitance from its background sites. However, this difference often disappears and is always dramatically reduced when compared to frequency distributions of test statistics produced by the comparison of simulated training sets possessing equal means, but which are composed of autocorrelated observations.Keywords
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