Forest mapping accuracies are improved using a supervised nonparametric classifier with SPOT data

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Abstract

A new supervised nonparametric classifer produces an image showing the empirical probability of correct classification for a pixel as well as a thematic image. This allows an analyst to visually locate those parts of the image where classification success can be improved. The algorithm was tested using SPOT XS data over a forest plantation in southeast Australia. The classifier produced thematic maps of higher accurary than those from conventional supervised classifers. -Authors

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Skidmore, A. K., & Turner, B. J. (1988). Forest mapping accuracies are improved using a supervised nonparametric classifier with SPOT data. Photogrammetric Engineering & Remote Sensing.

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