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Speech and Audio Coding

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Principles and Applications for Fixed and Wireless Channels by Lajos ... Nyquist sampling theorem, Anti-aliasing. Discrete in Amplitude. ADC (uniform quantizer) ... – PowerPoint PPT presentation

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Title: Speech and Audio Coding


1
Speech and Audio Coding
  • Reference
  • Voice Compression and Communications
  • Principles and Applications for Fixed and
    Wireless Channels by Lajos Hanzo, F. Clare A.
    Somerville, Jason P. Woodard

PCM,DPCM, ADPCM
CELP,VSELP
LPC
2
  • MOS (Mean Opinion Score) subjective measure
  • 1 bad, 2-poor, 3-fair, 4-good, 5-execellent
  • PCM G.711, ADPCM G.726/G.723
  • CELP G.728
  • Sub-band coding
  • Speech Coding Objectives
  • High perceived quality
  • High measured intelligibility
  • Low bit rate (bits per second of speech)
  • Low computational requirement (MIPS)
  • Robustness to successive encode/decode cycles
  • Robustness to transmission errors
  • Objectives for real-time only
  • Low coding/decoding delay (ms)
  • Work with non-speech signals (e.g. touch tone)

3
Chap 1. Quantization (PCM)
  • Introduction
  • Discrete in Time
  • Nyquist sampling theorem,
  • Anti-aliasing
  • Discrete in Amplitude
  • ADC (uniform quantizer)
  • signal amplitude ? -V, V
  • - Quantization characteristic
  • - Quantization level L, step q
  • - signal power

Midrise
Midtread
4
- Quantization Error (Noise) granular
distortion only (vs. overload distortion)
- SNR (Signal to Quantization noise
ratio) where R is the
quantization bit number
5
  • Rate distortion Theorem
  • - lower distortion need higher data rate
  • From Information Theory
  • If x (signal) is Gaussian distributed
  • SNR of other signal distributions
  • - same S.D. , uniform distribution had smallest
    dynamic range
  • ? uniform distributed signal has smallest SNR

6
  • Optimal Quantization level for non-uniform
    distributed signal-
  • highly distributed signal range
  • ? small quantization error
  • ? non-uniform quantization step
  • Of course, we can find the optimal quantization
    level and SNR when signal pdf is given.
  • Companding
  • - using a compressor to transform the signal pdf
    into uniform distribution.
  • - compressor y c(x)
  • - from Probability Theory

7
(No Transcript)
8

9

10
  • Approximation of c(x)
  • ?-law (United State standard)

11
  • A-law (Europe standard)

12
  • Piecewise linear approximation of A-law - 16
    segments

13
  • Design of optimal non-uniform quantizer
  • (Lloyd-Max quantizer)

14
  • Step 1 of iterative method
  • Step 2 of iterative method

15
  • Iterative method (repeat Step 1, 2)
  • ? converge to optimal solution
  • Initial value ? uniform quantizer

16
  • Simulation results (form ref10)
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