Skip to content

Audio compression using companders (integer implementation, A-Law, Mu-Law) for embedded micros with IIR fixed-radix averager

License

Notifications You must be signed in to change notification settings

deftio/companders

Repository files navigation

License Github Actions Ci

(c) 2001-2024 M. A. Chatterjee

This repo is a simple audio compression library for microcontrollers using A-Law and Mu-Law (a type of compander). The code uses fixed-radix (integer only) math with a small introductory discussion and use of associated DC-offset correction with an IIR fixed-radix filter.

All the code in this repo is suitable for small microcontrollers such as 8 bit and 16 bit families (arduino, 68hc, 8051 ) as well as on 32 bit familes such as ARM, RISC-V, etc.

As this is a fixed point library (a type of integer math), floating point is not used or even emulated. For more background on using fixed point (or fixed radix) math see this code library and documentation : FR_Math

Welcome

The accompanying companders.c contains a small set of functions written in C using only integer math for companding operations. I developed this several years ago for use in several embedded interized math projects and this small, slightly cleaned up version is made available for the public here. It worked very well on M*CORE, 80x86 and ARM processors for small embedded systems.

Usage:

#include "companders.h"   //no other dependancies or libaries are required.

// .. in code then
int myCompandedValue = DIO_LinearToALaw(123); // convert the integer to is A-Law equivalent companded value

int unCompandedValue = DIO_ALawToLinear(myCompandedValue); // convert back to linear range. (with appropriate loss)

About Companding

Companding is a special type of lossy compression in which linear format samples are converted to logarithmic representation in order to preserve dynamic range of the original linear sample at the expense of uniform precision. Companding is an old method and is free of patents (all have expired).

Theory of how companding works: Suppose that we have a signed 16 bit linear sample in 2's complement math. The range of this sample can vary from -32768 to + 32767 in integer steps. Now lets put the constraint that we only have 8 bits with which to represent the data not the full 16 bits of the original linear number. A simple way to preserve high order information would be to linearly truncate off the lower 8 bits giving us a signed number from -128 to +127. We could make a mental note to keep track of the fact that we lost the lower 8 bits and so when use this representation we multiply by 8 bits (or 256) to preserve the input range. so:

-128 * 256 = -32768
-127 * 256 = -32512
...
  -1 * 256 =   -256
   0 * 256 =      0
   1 * 256 =    256
   2 * 256 =    512
...
 126 * 256 =  32256 
 127 * 256 =  32512 

Notice that the steps between these linearly rounded off samples are quite large. This truncated 8 bit representation would be very good at representing a linear quantity system such as linear displacement transducer which moves through its whole range as part of normal operation (like a door). but terrible at logarithmic phenomonen such as audio. Audio information tends to be grouped around zero with occaisonaly peaks of loudness. So with linear quantization soft audio would be lost due to the large quanitization steps at low volumes. To address this companders were developed for use in landline telephony for compressing audio data logarithmically instead of linearly. Hence we use more bits for audio samples near zero and less with audio samples near the integer max extremes.

A-Law and it cousin mu-Law are companders. Rather than represent samples in linear steps the more bits are allocated to samples near zero while larger magnitude (positive or negative) samples are represented with proportionately larger interval sizes.

Differential encoding (taking the difference of neighboring samples) can greatly help with compressing data to where we "have more bits" as well, provided samples rates are fast enough. Telephony typically operated with 8 bit non-differential (companded) samples at 8KHz.

In A-Law the following table (in bits) shows how a 13 bit signed linear integer is companded in to A-Law: (source is Sun microsystems, a similar table is on wikipedia or the G.711 specification).

Linear Input Code Compressed Code
0000000wxyza 000wxyz
0000001wxyza 001wxyz
000001wxyzab 010wxyz
00001wxyzabc 011wxyz
0001wxyzabcd 100wxyz
001wxyzabcde 101wxyz
01wxyzabcdef 110wxyz
1wxyzabcdefg 111wxyz

Mu-law (also mu-law or u-law)

Mu is similar compander to A-Law but used in American & Japanese telephony instead of European Telephony.

Both algorithms aim to optimize the dynamic range of an audio signal by using logarithmic compression, but they differ in their compression characteristics and implementation. A-Law provides a slightly lower compression ratio, which offers better signal quality for signals with lower amplitude, whereas μ-Law provides higher compression, which can handle a wider range of input levels more efficiently but introduces more distortion for low-level signals. These standards were developed in the mid-20th century to improve the efficiency and quality of voice transmission over limited-bandwidth communication channels. A-Law was standardized by the International Telegraph and Telephone Consultative Committee (CCITT) and is detailed in the ITU-T G.711 recommendation, while μ-Law was standardized by the American National Standards Institute (ANSI).

About this library

This free library supports A-Law, mu-Law and IIR averages. A-Law or Mu-Law are used for the companding while the IIR averagers can be used for for embedded ADCs where the zero point is set loosely. Since the companders are sensitive, and allocate more bits, to values near zero its important to define a good zero. For example a microcontroller has a pin with an ADC which is fed digitized audio signal. The smallest value for the microtroncoller is 0V = 0x00 and the 3.3V = 0x3ff for 10 effective bits of resolution. A resisitive analog divider is used to center the ADC near the half-input range or about 1.6V while the audio is capacitively coupled as shown here:


            +3.3V
              |
              R
              |            
uC_ADC_Pin<-----------C---- audio_input_source
              |
              R
              |
             GND

However cheap resistors have tolerances 5 to 10%, so the setpoint voltage could easily be anywhere from 1.4 to 1.8V. To address this software should read the ADC before audio is coming in and determine the actual DC bias voltage set by the real world resistors. Then when audio is coming in this value is subtracted from the ADC input to give a signed number which is fed to the LinearToAlaw encoder.

If it not easily possible to turn off the analog / audio source then the long term DC average can be inferred by using one of the IIR functions included here with a long window length (perhaps 2000 samples if sampling at 8 KHz or about 1/4 second). These IIR functions are cheap to run in realtime even with reasonably high sample rates as they take little memory and are simple integer-math IIRs.

About the Fixed Radix (FR) Math IIR averages

The (Infinite Impulse Reponse) IIR functions included here use fixed radix math to represent fractional parts of an integer. By providing a settable radix (amount of bits devoted to fractional resolution), the programmer can make tradeoffs between resolution and dynamic range. The larger the radix specified the more bits that will be used in the fractional portion of the representation, which for smaller window sizes may not by necessary. There are more comprehensive ways to deal with fractional representation in binary systems (floating point, bigNum / arbitrary length registers, separation of numerator/denomators etc) but these incur much larger compute/code/memory overhead. The simple system used here avoids the need for testing for overflow/underflow which allows for low foot print code/cpu/memory bandwidth.

To calculate how many bits of fractional part while preventing overflow use the following formulas:

Nb = number_of_bits_in_use = ceiling(log2(highest_number_represented))

radix = 32-Nb(sample_resolution)-Nb(WindowLength)-2

//for example if you have a ADC generating counts from 0 to 1023 then the Nb(ADC-range) = 
  Nb = ceiling(log2(1023)) = 10 // bits
  
//If you use a DC average window length of 2000 
  Nb = ceiling(log2(2000)) = 11 // bits
  
//so the max radix that should be specified is:
  radix = 32 - 10 - 11 - 2 = 32 - 23 = 9 // bits

with 9 bits in the radix fractional precision of 512 units per integer (e.g 1/512) is possible. The "2" in for formula comes from reserving bits for the sign bit and the additional operation in averager.

The function DIO_s32 DIO_IIRavgFR() allows any integer length window size to be used, while the function DIO_IIRavgPower2FR() specifies window lengths in powers of two but all calculations are based on shift operations which can be significantly faster on lower end microprocessors.

Embedded Systems

Now back to an embedded microcontroller example. Let's say it has an ADC which maps the voltage on 1 pin from 0-3.3V in to 0-4095 counts (12 bits). We capacitively couple the input voltage and use the bias resistors to set mid point in the center of the range. Lets say the the our resistors set the bias at 1.55V. This equals our "zero point". Below this point is negative from the incoming capacitively coupled audio and above this is positive.

Our "guess" as to the bias = both resistors are the same = (3.3V/2) =1.65V = (1.65V)/(4095 counts/3.3V)= 2048 counts

Resistor actual set bias "zero point" = 1.55V = (1.55V) *(4095 counts/3.3V)) = 1923 counts We want this to be "zero" we use for the companded A/D process.

To do this we start our ADC to periodically sample for sometime before we start "recording" audio. We will feed the ADC values in to our IIR average to find the actual zero point. Note that even when we decide not to "record" we still can still run the A/D and IIR averager so its adapting to the real zero point.

C-like Pseudo code

#include "companders.h"

static volatile int32 gIIRavg= 2048; // global static var holds DC average as estimated by the IIR
static volatile int   gDoSomethingWithCompandedValue=0;

void processAudioSample() //interrupt handler -- runs at the sample rate
{
 short adcValue;
 char  aLawValue;
 
 //read the raw uncorrected sample (has some DC offset bias) 
 adcValue= inputPin.read_u16(); // read a 16 bit unsigned sample
 
 // this updates the IIR average everytime the adc returns a sample
 gIIRavg = DIO_IIRavgPower2FR(gIIRavg,11,adcValue,8);
 
 //now compute companded value with DC offset correction
 if (gDoSomethingWithCompandedValue)
 {
  aLawValue = DIO_LinearToALaw(adcValue-DIO_FR2I(gIIRavg));  // subtract off the offset and get a good A-Law value
  doSomethingWithALaw(aLawValue);  // store it to a buffer, send it the cloud ;) etc
 }
}

main()
{
 gDoSomethingWithCompandedValue=0;
 inputPin.attachInterrupt(&processAudioSample,8000); //attach interrupt handler, 8000 Hz sample rate
 
 // ... somepoint later in the code
 
 inputPin.start(); // start the collecting audio.  inside the interrupt handler we'll start estimating the DC bias
 
 // ... some time later  (when we actually want the audio) we set this flag
 gDoSomethingWithCompandedValue=1; //now the interrupt routine will call the doSomethingWithALaw() function
 
 // ... some time later
 gDoSomethingWithCompandedValue=0; //we're no longer collecting ALaw companded date, but we're 
           // still running the IIR averager
 
}

The accompanying compandit.c file is an example program demonstrating the convergence of the averager to a simulated DC offset value (output is in the testout.txt file).

Some Closing Comments

Finally, it can be in some systems that we can't turn off the audio input source it may be hard wired to some sensor or mic or perhaps the A/D center bias circuit (the 2 resistors) always is on when the audio is on. In this case running the IIR with a long filter length all the time can remove the bias even when the audio is running. For example in an 8KHz sampling system with an IIR length of 1024 is about 1/8 of a second or a cutoff freq well below 10Hz and costs almost nothing to run.

Further Reading

Code Coverage

Code coverage is achieved using gcov from the gcc test suite. To see the code coverage:

make clean
make
./test-library.out
gcov companders.c

The line gcov companders.c generates the file companders.c.gcov, which can be viewed in any text editor. Lines marked with #### have never been run.

Versions

  • 1.0.6 08 Aug 2024 -- added ci testing
  • 1.0.5 30 May 2024 -- cleaned up release
  • 1.0.4 30 May 2024 -- add ulaw, updated docs, added full test
  • 1.0.4 23 Jan 2023 -- updated docs
  • 1.0.3 28 Jul 2019 -- updated docs, ver example
  • 1.0.2 15 Jul 2016 -- updated README.md to markdown format. updated license to be OSI compliant. no code changes. some minor doc updates. Thanks to John R Strohm giving me the nudge to update the docs here.
  • 1.0.1 3 Sep 2012 -- original release in github

License

See attached LICENSE.txt file (OSI approved BSD 2 Clause)

Copyright (c) 2001-2024, M. A. Chatterjee < deftio at deftio dot com > All rights reserved.

Redistribution and use in source and binary forms, with or without modification, are permitted provided that the following conditions are met:

  • Redistributions of source code must retain the above copyright notice, this list of conditions and the following disclaimer.

  • Redistributions in binary form must reproduce the above copyright notice, this list of conditions and the following disclaimer in the documentation and/or other materials provided with the distribution.

THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.