Signal-to-quantization-noise ratio
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Signal-to-quantization-noise ratio (SQNR or SNqR) is widely used quality measure in analysing
digitizing DigitizationTech Target. (2011, April). Definition: digitization. ''WhatIs.com''. Retrieved December 15, 2021, from https://whatis.techtarget.com/definition/digitization is the process of converting information into a digital (i.e. computer- ...
schemes such as
pulse-code modulation Pulse-code modulation (PCM) is a method used to digitally represent sampled analog signals. It is the standard form of digital audio in computers, compact discs, digital telephony and other digital audio applications. In a PCM stream, the ...
(PCM). The SQNR reflects the relationship between the maximum nominal
signal strength In telecommunications, particularly in radio frequency engineering, signal strength refers to the transmitter power output as received by a reference antenna at a distance from the transmitting antenna. High-powered transmissions, such as those u ...
and the
quantization error Quantization, in mathematics and digital signal processing, is the process of mapping input values from a large set (often a continuous set) to output values in a (countable) smaller set, often with a finite number of elements. Rounding and ...
(also known as quantization noise) introduced in the analog-to-digital conversion. The SQNR formula is derived from the general
signal-to-noise ratio Signal-to-noise ratio (SNR or S/N) is a measure used in science and engineering that compares the level of a desired signal to the level of background noise. SNR is defined as the ratio of signal power to the noise power, often expressed in de ...
(SNR) formula: :\mathrm=\frac \frac where: :P_e is the probability of received bit error :m_p(t) is the peak message signal level :m_m(t) is the mean message signal level As SQNR applies to quantized signals, the formulae for SQNR refer to discrete-time digital signals. Instead of m(t), the digitized signal x(n) will be used. For N quantization steps, each sample, x requires \nu=\log_2 N bits. The probability distribution function (pdf) representing the distribution of values in x and can be denoted as f(x). The maximum magnitude value of any x is denoted by x_. As SQNR, like SNR, is a ratio of signal power to some noise power, it can be calculated as: :\mathrm = \frac = \frac The signal power is: :\overline = E ^2= P_=\int_^x^2f(x)dx The quantization noise power can be expressed as: :E tilde^2= \frac Giving: :\mathrm = \frac When the SQNR is desired in terms of decibels (dB), a useful approximation to SQNR is: :\mathrm, _=P_+6.02\nu+4.77 where \nu is the number of bits in a quantized sample, and P_ is the signal power calculated above. Note that for each bit added to a sample, the SQNR goes up by approximately 6dB (20\times log_(2)).


References

* B. P. Lathi , Modern Digital and Analog Communication Systems (3rd edition), Oxford University Press, 1998


External links


Signal to quantization noise in quantized sinusoidal
- Analysis of quantization error on a sine wave {{Noise Digital audio Engineering ratios Noise (electronics)