| Literature DB >> 28012371 |
Jakob Spiegelberg1, Ján Rusz2, Thomas Thersleff3, Kristiaan Pelckmans4.
Abstract
A set of geometric data decomposition methods is discussed. In particular, randomized vertex component analysis (RVCA), an extension of vertex component analysis (VCA) for the application to noisy data, is established. Minimum volume simplex analysis (MVSA), a recent technique for the extraction of endmembers in the absence of pure pixels, is presented. A comparison between MVSA and the previously presented technique of Bayesian Linear Unmixing (BLU) is drawn. Lastly, the efficiency of these methods for high-dimensional data is examined. Improvement on the extracted source components spectral signatures are achieved by establishing Gaussian mixture modeling as extraction technique.Keywords: Blind source separation; Data clustering; EELS; Geometric extraction methods; RVCA
Year: 2016 PMID: 28012371 DOI: 10.1016/j.ultramic.2016.12.014
Source DB: PubMed Journal: Ultramicroscopy ISSN: 0304-3991 Impact factor: 2.689