Concepedia

Publication | Closed Access

Compression-based unsupervised clustering of spectral signatures

11

Citations

14

References

2011

Year

Abstract

This paper proposes to use compression-based similarity measures to cluster spectral signatures on the basis of their similarities. Such universal distances estimate the shared information between two objects by comparing their compression factors, which can be obtained by any standard compressor. Experiments on rocks categorization show that these methods may outperform traditional choices for spectral distances based on vector processing.

References

YearCitations

Page 1