Automatic identification and extraction of endmember from hyperspectral imagery by iterative unmixing[J]. Journal of Remote Sensing, 2013,17(2):258-268.
Automatic identification and extraction of endmember from hyperspectral imagery by iterative unmixing[J]. Journal of Remote Sensing, 2013,17(2):258-268. DOI: 10.11834/jrs.20132108.
Current algorithms of endmember extraction basically need manually determining the number of endmembers
which is not conducive to automatically process. The paper puts forward iterative algorithm for automatic identification and extraction of endmember. First
we obtain the similarity threshold among pixels by statistical analysis
and determine the criterion of candidate endmembers. Then
the internal and external correlation judgments of candidate endmembers are done
and ill-conditioned matrix to circumvent judgment on endmember spectral set is conducted. Finally
the criterion of candidate endmembers is the end of the iterative conditions. When the hyperspectral image contains no candidate endmembers
the endmember spectral set is got and the numbers of endmembers are determined. Experiments show the effectiveness of this method
by which the error risk of sequential endmember extraction algorithm can be avoided