Title :
Lower bound on the mean-squared error in oversampled quantization of periodic signals using vector quantization analysis
Author :
Thao, Nguyen T. ; Vetterli, Martin
Author_Institution :
Dept. of Electr. & Electron. Eng., Hong Kong Univ., Hong Kong
fDate :
3/1/1996 12:00:00 AM
Abstract :
Oversampled analog-to-digital conversion is a technique which permits high conversion resolution using coarse quantization. Classically, by lowpass filtering the quantized oversampled signal, it is possible to reduce the quantization error power in proportion to the oversampling ratio R. In other words, the reconstruction mean-squared error (MSE) is in 𝒪(R-1). It was recently found that this error reduction is not optimal. Under certain conditions, it was shown on periodic bandlimited signals that an upper bound on the MSE of optimal reconstruction is in 𝒪(R-2) instead of 𝒪(R -1). In the present paper, we prove on the same type of signals that the order 𝒪(R-2) is the theoretical limit of reconstruction as an MSE lower bound. The proof is based on a vector-quantization approach with an analysis of partition cell density
Keywords :
decoding; low-pass filters; signal reconstruction; signal sampling; vector quantisation; analog-to-digital conversion technique; coarse quantization; high conversion resolution; lower bound; lowpass filtering; mean-squared error; optimal reconstruction; oversampled quantization; oversampling ratio; partition cell density; periodic signals; reconstruction mean-squared error; upper bound; vector quantization analysis; Analog-digital conversion; Band pass filters; Decoding; Digital filters; Digital integrated circuits; Integrated circuit noise; Quantization; Reconstruction algorithms; Signal resolution; Upper bound;
Journal_Title :
Information Theory, IEEE Transactions on