Title :
Minimum mean-squared error transform coding and subband coding
Author :
Aas, Knut C. ; Mullis, Clifford T.
Author_Institution :
Dept. of Electr. & Comput. Eng., Colorado Univ., Boulder, CO, USA
fDate :
7/1/1996 12:00:00 AM
Abstract :
Knowledge of the power spectrum of a stationary random sequence can be used for quantizing the signal efficiently and with minimum mean-squared error. A multichannel filter is used to transform the random sequence into an intermediate set of variables that are quantized using independent scalar quantizers, and then inverse-filtered, producing a quantized version of the original sequence. Equal word-length and optimal word-length quantization at high bit rates is considered. An analytical solution for the filter that minimizes the mean-squared quantization error is obtained in terms of its singular value decomposition. The performance is characterized by a set of invariants termed second-order modes, which are derived from the eigenvalue decomposition of the matrix-valued power spectrum. A more general rank-reduced model is used for decreasing distortion by introducing bias. The results are specialized to the case when the vector-valued time series is obtained from a scalar random sequence, which gives rise to a filter bank model for quantization. The asymptotic performance of such a subband coder is derived and shown to coincide with the asymptotic bound for transform coding. Quantization employing a single scalar pre- and postfilter, traditional transform coding using a square linear transformation, and subband coding in filter banks, arise as special cases of the structure analyzed here
Keywords :
band-pass filters; eigenvalues and eigenfunctions; filtering theory; least mean squares methods; quantisation (signal); random processes; singular value decomposition; time series; transform coding; bias; distortion; eigenvalue decomposition; equal word-length; filter bank model; high bit rates; independent scalar quantizers; invariants; inverse-filtering; matrix-valued power spectrum; minimum mean-squared error transform coding; multichannel filter; optimal word-length quantization; performance; power spectrum; rank-reduced model; second-order modes; signal quantization; singular value decomposition; stationary random sequence; subband coding; vector-valued time series; Bit rate; Distortion measurement; Filter bank; Matrix decomposition; Nonlinear filters; Quantization; Random sequences; Singular value decomposition; Transform coding; Vectors;
Journal_Title :
Information Theory, IEEE Transactions on