ARTÍCULO
TITULO

Efficient Quantization for Overcomplete Expansions in R^N

Beferull-Lozano    
B. Ortega    
A.    

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Pan, J.-S. Lu, Z.-M. Sun, S.-H.     Pág. 265 - 270