Combined modeling of sparse and dense noise for improvement of Relevance Vector Machine

12 Jan 2015Martin SundinSaikat ChatterjeeMagnus Jansson

Using a Bayesian approach, we consider the problem of recovering sparse signals under additive sparse and dense noise. Typically, sparse noise models outliers, impulse bursts or data loss... (read more)

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