Fuzzy Reliability Assessment of Multi-Period Land-cover Change Maps
- 1 August 2005
- journal article
- Published by American Society for Photogrammetry and Remote Sensing in Photogrammetric Engineering & Remote Sensing
- Vol. 71 (8) , 939-945
- https://doi.org/10.14358/pers.71.8.939
Abstract
A fuzzy methodology is presented for evaluating the reliability of satellite imagery-derived, continent-wide (Australia) land-cover deforestation/regrowth maps covering the period of 1972 to 2000 in ten discrete time periods. The methodology uses aerial photographs as its reference data and accommodates the difficulty inherent in determining definitively from an aerial photograph, whether a sample point is Forest or Non-forest by permitting interpreters to identify their level of certainty, i.e., Definitely Forest, Probably Forest, Uncertain, Probably Non-forest, or Definitely Nonforest. This information is then cross-tabulated against the Forest/Non-forest classification for the classified image closest in date to the photo date. Information from several photographs is summarized over a larger geographic area and over all time periods. Subsequently, temporal lineage information for each sample pixel is extracted from the 1972 to 2000 series of classified images to determine if a pixel’s lineage is Forest Throughout, Non-forest Throughout, Deforestation, Regrowth, or Cyclic. The fuzzy evaluation for individual pixels is then tabulated against this lineage information to identify if pixels of any particular lineage have an elevated tendency to be misclassified. The methodology provides a means by which problems in the map production methodology can be improved as future time slices are added.Keywords
This publication has 13 references indexed in Scilit:
- Applying evidential reasoning methods to agricultural land cover classificationInternational Journal of Remote Sensing, 2003
- Multitemporal land-cover classification of Mexico using Landsat MSS imageryInternational Journal of Remote Sensing, 2003
- Can a sample of Landsat sensor scenes reliably estimate the global extent of tropical deforestation?International Journal of Remote Sensing, 2003
- Bayesian classification by data augmentationInternational Journal of Remote Sensing, 2003
- Calibrating images from different dates to ‘like-value’ digital countsRemote Sensing of Environment, 2001
- An area-based accuracy assessment methodology for digital change mapsInternational Journal of Remote Sensing, 2001
- Approaches for the production and evaluation of fuzzy land cover classifications from remotely-sensed dataInternational Journal of Remote Sensing, 1996
- A review of assessing the accuracy of classifications of remotely sensed dataRemote Sensing of Environment, 1991
- Change-detection accuracy assessment using SPOT multispectral imagery of the rural-urban fringeRemote Sensing of Environment, 1989
- A Coefficient of Agreement for Nominal ScalesEducational and Psychological Measurement, 1960