Detekcja zmian pokrycia terenu na zdjęciach satelitarnych Landsat - porównanie trzech metod Land cover change detection using Landsat imagery - comparison of three methods
Environmental changes are amongst the most important
research subjects in geography. The changes may be natural,
but also may be caused by human activity. Land cover is a significant component of the changing environment. Monitoring
of its changes involves usage of satellite techniques. Landsat
mission provides comparable data since forty years, very useful
in land cover studies. Utilization of satellite techniques in such
researches is developing quickly. This paper is an example of
methods that enable quick and quite accurate assessment of
range and spatial distribution of land cover changes. Practical
application of image difference, principal component analysis
and supervised classification to detect land cover changes is
presented. Methods are applied to study area containing different
land cover classes. Accuracy of methods was tested and
compared.
Combining methods presented in earlier researches, five
new methods were developed: image difference, image difference
with classification, classification, principal component analysis,
principal component analysis with classification. Methods were
applied to three different input datasets: pairs of images with
different level of preprocessing. First dataset was a pair of
georeferenced Landsat Thematic Mapper images. The second
dataset was the same pair of images, atmospherically corrected
using dark object subtraction method. Normalization of one
image to the other provided the third dataset.
Accuracy assessment was executed. Results were obtained
from confusion matrices. Overall accuracy of methods was
high, from 77% to 91%. Supervised classification was the
most accurate method. Combining fully automatic methods
with supervised classification has increased overall accuracy of
automatic change detection, however not significantly. Studies
on combining change detection methods should be continued.
Future studies should concentrate on the automation of change
detection process.
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