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  5. Mapping sub-pixel proportional land cover with AVHRR imagery

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Article
English
1997

Mapping sub-pixel proportional land cover with AVHRR imagery

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English
1997
International Journal of Remote Sensing
Vol 18 (4)
DOI: 10.1080/014311697218836

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Mark Cutler
Mark Cutler

University Of Dundee

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Peter M. Atkinson
Mark Cutler
Hugh G. Lewis

Abstract

A problem with NOAA AVHRR imagery is that the intrinsic scale of spatial variation in land cover in the U.K. is usually finer than the scale of sampling imposed by the image pixels. The result is that most NOAA AVHRR pixels contain a mixture of land cover types (sub-pixel mixing). Three techniques for mapping the sub-pixel proportions of land cover classes in the New Forest, U.K. were compared: (i) artificial neural networks (ANN); (ii) mixture modelling; and (iii) fuzzy c -means classification. NOAA AVHRR imagery and SPOT HRV imagery, both for 28 June 1994, were obtained. The SPOT HRV images were classified using the maximum likelihood method, and used to derive the 'known' sub-pixel proportions of each land cover class for each NOAA AVHRR pixel. These data were then used to evaluate the predictions made (using the three techniques and the NOAA AVHRR imagery) in terms of the amount of information provided, the accuracy with which that information is provided, and the ease of implementation. The ANN was the most accurate technique, but its successful implementation depended on accurate co-registration and the availability of a training data set. Supervised fuzzy c -means classification was slightly more accurate than mixture modelling.

How to cite this publication

Peter M. Atkinson, Mark Cutler, Hugh G. Lewis (1997). Mapping sub-pixel proportional land cover with AVHRR imagery. International Journal of Remote Sensing, 18(4), pp. 917-935, DOI: 10.1080/014311697218836.

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Publication Details

Type

Article

Year

1997

Authors

3

Datasets

0

Total Files

0

Language

English

Journal

International Journal of Remote Sensing

DOI

10.1080/014311697218836

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