Random Projections of Signal Manifolds

Random projections have recently found a surprising niche in signal processing. The key revelation is that the relevant structure in a signal can be preserved when that signal is projected onto a small number of random basis functions. Recent work has exploited this fact under the rubric of compress...

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Bibliographische Detailangaben
Hauptverfasser: Wakin, M.B., Baraniuk, R.G.
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:Random projections have recently found a surprising niche in signal processing. The key revelation is that the relevant structure in a signal can be preserved when that signal is projected onto a small number of random basis functions. Recent work has exploited this fact under the rubric of compressed sensing (CS): signals that are sparse in some basis can be recovered from small numbers of random linear projections. In many cases, however, we may have a more specific low-dimensional model for signals in which the signal class forms a nonlinear manifold in RN. This paper provides preliminary theoretical and experimental evidence that manifold-based signal structure can be preserved using small numbers of random projections. The key theoretical motivation comes from Whitney's embedding theorem, which states that a K-dimensional manifold can be embedded in Ropf 2K+1 . We examine the potential applications of this fact. In particular, we consider the task of recovering a manifold-modeled signal from a small number of random projections. Thanks to our more specific model, we can recover certain signals using far fewer measurements than would be required using sparsity-driven CS techniques
ISSN:1520-6149
2379-190X
DOI:10.1109/ICASSP.2006.1661432