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Knowledge-aided Bayesian covariance matrix estimation in compound-Gaussian clutter

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Table 1. Gibbs sampler Input: Z
Fig. 1. Covariance metric for estimation of R versus number of snapshots. N = 8, ν = 10 and q = 4
Fig. 4. SNR loss versus number of snapshots. N = 8, ν = 16 and q = 4.

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