Evaluation of distance measure methods for vegetation index time-series data[J]. Journal of Remote Sensing, 2012,16(3):644-662. DOI: 10.11834/jrs.20121154.
In order to evaluate the clustering accuracy of different distance measure methods for vegetation index time-series data
we make a comprehensive comparison among six distance measure methods(Euclidean distance
spectral information divergence
spectral angle cosine
kernel spectral angle cosine
correlation coefficient and spectral angle cosine-Euclidean distance) based on the MODIS Enhanced Vegetation Index(EVI) time-series data in China by selecting 468 test pixels across 55 vegetation types and a test region.The test results indicate that the correlation coefficient method shows the lowest clustering accuracy.However
the spectral angle cosine-Euclidean distance method which captures both the curve shape and the amplitude features of the vegetation index time-series data shows the highest clustering accuracy among the six methods.Both the Euclidean distance method which is only sensitive to the spectral brightness and the spectral angle cosine method which is only sensitive to the curve shape perform an inferior clustering accuracy not only in distinguishing different land cover types but also in the regional application.Although the kernel spectral angle cosine method does not show high clustering accuracy in the test at the point level
it shows better performance in the regional application.The spectral information divergence method has a modest performance in the test both at the point level and at the regional level.