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Direction of arrival estimation in a mixture of K-distributed and Gaussian noise

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Academic year: 2021

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Fig. 1. P ( σ w 2 , T ) for various values of nGGNR and T. ν¼0.2 and β = 1/ . ν
Fig. 4. Mean square error of estimators versus SNR. ν¼0.2.

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