Vector Quantization Using the L 1
نویسنده
چکیده
| This paper considers vector quantization of signals using the L1 distortion measure. The key contribution is a result that allows one to characterize the cen-troid of a set of vectors for the L1 distortion measure. A method similar to the LBG algorithm for designing code-books has been developed and tested. The paper also discusses the design of vector quantizers employing the L1 distortion measure in an application in which the occurrences of quantization errors with larger magnitudes than a pre-selected threshold must be minimized.
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تاریخ انتشار 1997