Compress a signal by storing signal diff instead of actual samples - is there such a thing?












4












$begingroup$


I am working with EMG signals sampled at 2kHz and 16 bits, and noticed that they "look smooth", that is, the signals are differentiable, and if I apply a "diff" function (numpy.diff in my case) the magnitude of the values is considerably lower than the actual samples.



So I am considering to do something like:




  • Split the signal into chunks of a given size;

  • Foreach chunk, using variable length quantity (or similar), create a byte list and:



    • For the first sample of the chunk, add its absolute value;


    • For the remaining samples of the chunk, add their difference, relative to the previous value;




This way, the smoother the signal, and the closer it is to the baseline, the more I expect to decrease the byte-size of each chunk, by decreasing the individual byte-size of a large part of the samples.



Although I suspect this would improve things for me, I also suspect that this is nothing new, and perhaps it has a proper name, and even more elegant/efficient ways to implement it.



So the question is: what is the name of this compression technique, and what are its alternatives and/or variants?










share|improve this question









$endgroup$








  • 3




    $begingroup$
    See en.wikipedia.org/wiki/…
    $endgroup$
    – MBaz
    Apr 5 at 19:03










  • $begingroup$
    @MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
    $endgroup$
    – heltonbiker
    Apr 5 at 19:19






  • 3




    $begingroup$
    BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
    $endgroup$
    – leonbloy
    2 days ago


















4












$begingroup$


I am working with EMG signals sampled at 2kHz and 16 bits, and noticed that they "look smooth", that is, the signals are differentiable, and if I apply a "diff" function (numpy.diff in my case) the magnitude of the values is considerably lower than the actual samples.



So I am considering to do something like:




  • Split the signal into chunks of a given size;

  • Foreach chunk, using variable length quantity (or similar), create a byte list and:



    • For the first sample of the chunk, add its absolute value;


    • For the remaining samples of the chunk, add their difference, relative to the previous value;




This way, the smoother the signal, and the closer it is to the baseline, the more I expect to decrease the byte-size of each chunk, by decreasing the individual byte-size of a large part of the samples.



Although I suspect this would improve things for me, I also suspect that this is nothing new, and perhaps it has a proper name, and even more elegant/efficient ways to implement it.



So the question is: what is the name of this compression technique, and what are its alternatives and/or variants?










share|improve this question









$endgroup$








  • 3




    $begingroup$
    See en.wikipedia.org/wiki/…
    $endgroup$
    – MBaz
    Apr 5 at 19:03










  • $begingroup$
    @MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
    $endgroup$
    – heltonbiker
    Apr 5 at 19:19






  • 3




    $begingroup$
    BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
    $endgroup$
    – leonbloy
    2 days ago
















4












4








4





$begingroup$


I am working with EMG signals sampled at 2kHz and 16 bits, and noticed that they "look smooth", that is, the signals are differentiable, and if I apply a "diff" function (numpy.diff in my case) the magnitude of the values is considerably lower than the actual samples.



So I am considering to do something like:




  • Split the signal into chunks of a given size;

  • Foreach chunk, using variable length quantity (or similar), create a byte list and:



    • For the first sample of the chunk, add its absolute value;


    • For the remaining samples of the chunk, add their difference, relative to the previous value;




This way, the smoother the signal, and the closer it is to the baseline, the more I expect to decrease the byte-size of each chunk, by decreasing the individual byte-size of a large part of the samples.



Although I suspect this would improve things for me, I also suspect that this is nothing new, and perhaps it has a proper name, and even more elegant/efficient ways to implement it.



So the question is: what is the name of this compression technique, and what are its alternatives and/or variants?










share|improve this question









$endgroup$




I am working with EMG signals sampled at 2kHz and 16 bits, and noticed that they "look smooth", that is, the signals are differentiable, and if I apply a "diff" function (numpy.diff in my case) the magnitude of the values is considerably lower than the actual samples.



So I am considering to do something like:




  • Split the signal into chunks of a given size;

  • Foreach chunk, using variable length quantity (or similar), create a byte list and:



    • For the first sample of the chunk, add its absolute value;


    • For the remaining samples of the chunk, add their difference, relative to the previous value;




This way, the smoother the signal, and the closer it is to the baseline, the more I expect to decrease the byte-size of each chunk, by decreasing the individual byte-size of a large part of the samples.



Although I suspect this would improve things for me, I also suspect that this is nothing new, and perhaps it has a proper name, and even more elegant/efficient ways to implement it.



So the question is: what is the name of this compression technique, and what are its alternatives and/or variants?







discrete-signals digital-communications sampling compression






share|improve this question













share|improve this question











share|improve this question




share|improve this question










asked Apr 5 at 18:58









heltonbikerheltonbiker

647721




647721








  • 3




    $begingroup$
    See en.wikipedia.org/wiki/…
    $endgroup$
    – MBaz
    Apr 5 at 19:03










  • $begingroup$
    @MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
    $endgroup$
    – heltonbiker
    Apr 5 at 19:19






  • 3




    $begingroup$
    BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
    $endgroup$
    – leonbloy
    2 days ago
















  • 3




    $begingroup$
    See en.wikipedia.org/wiki/…
    $endgroup$
    – MBaz
    Apr 5 at 19:03










  • $begingroup$
    @MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
    $endgroup$
    – heltonbiker
    Apr 5 at 19:19






  • 3




    $begingroup$
    BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
    $endgroup$
    – leonbloy
    2 days ago










3




3




$begingroup$
See en.wikipedia.org/wiki/…
$endgroup$
– MBaz
Apr 5 at 19:03




$begingroup$
See en.wikipedia.org/wiki/…
$endgroup$
– MBaz
Apr 5 at 19:03












$begingroup$
@MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
$endgroup$
– heltonbiker
Apr 5 at 19:19




$begingroup$
@MBaz I think your comment contains the correct answer. If you write it down I would most probably accept it. Thanks for now!
$endgroup$
– heltonbiker
Apr 5 at 19:19




3




3




$begingroup$
BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
$endgroup$
– leonbloy
2 days ago






$begingroup$
BTW: this is also done in image compresion, in PNG format, line by line (only that for each line you can choose among using difference with respect to the pixel left or up, or other two predictions - or none of them); the standard calls this "filtering", but it's actually a typical "predict and code the prediction error" scheme, of which your technique is a basic case en.wikipedia.org/wiki/Portable_Network_Graphics#Filtering
$endgroup$
– leonbloy
2 days ago












3 Answers
3






active

oldest

votes


















6












$begingroup$

Another notion you might wanna look into for lossless compression of a bandlimited signal (it's this bandlimiting that gets you this "smoother ... signal, ...closer ... to the baseline") is Linear Predictive Coding.



I think this is historically correct that LPC was first used as a variant of Delta coding where the LPC algorithm predicts $hat{x}[n]$ from the set of samples: $x[n-1], x[n-2], ... x[n-N]$. If the prediction is good, then the real $x[n]$ is not far off from the prediction $hat{x}[n]$ and you need store only the delta $x[n]-hat{x}[n]$ which is smaller in magnitude and a smaller word width might be sufficient. You would need to store the LPC coefficients for each block, but there are usually no more than a dozen or so of these.



This stored difference value can be compressed further using something like Huffman coding in which you would need to either store the "codebook" along with the compressed data or have some kinda codebook standardized so that both transmitter and receiver know it.



I think it's some combination of LPC and Huffman coding that is used by various lossless audio formats. Maybe there is some perceptual stuff used to, to get almost lossless compression.






share|improve this answer









$endgroup$





















    8












    $begingroup$

    You can also think of delta encoding as linear predictive coding (LPC) where only the prediction residual ($x[n]-hat{x}[n]$ in @robertbristow-johnson's notation) is stored and the predictor of the current sample is the previous sample. This is a fixed linear predictor (not with arbitrary coefficients optimized to data) that can exactly predict constant signals. Run the same linear predictive coding again on the residuals, and you have exactly predicted linear signals. Next round, quadratic signals. Or run a higher-order fixed predictor once to do the same.



    Such fixed predictors are listed in Tony Robinson's SHORTEN technical report, yours in Eq. 4, and are also included in the FLAC lossless audio codec although not often used. Calculating the best prediction coefficients for each data block and storing them in a header of the compressed block results in better compression than the use of fixed predictors.



    The linear predictor is supposed to do the whitening, making the residuals independent. In lossless compression, what is left to do is to entropy code the residuals, instead of using run-length or other symbol-based encoding that doesn't work so well on noisy signals. Typically, entropy coding assigns longer code words to large residuals, approximately minimizing the mean encoding length for an assumed distribution of the residual values. A variant of Rice coding compatible with signed numbers is typically used, as is done in FLAC, see source code of FLAC__bitwriter_write_rice_signed. The Rice code has a distribution parameter that needs to be optimized for the data block and saved in the block header.






    share|improve this answer











    $endgroup$













    • $begingroup$
      as similar to your suggestion, Subband ADPCM would possibly be the best choice...
      $endgroup$
      – Fat32
      Apr 5 at 21:08



















    6












    $begingroup$

    That's used a lot. See for example https://en.wikipedia.org/wiki/Delta_encoding, https://en.wikipedia.org/wiki/Run-length_encoding.



    "Looking Smooth" typically means "not a lot of high frequency content". The easiest way to take advantage of this, is to figure out what the highest frequency really need then low-pass filter and choose an lower sample rate.



    IF you signal has a non-flat spectrum, it's typically advantageous to "whiten" the signal, i.e. filter it so that the average spectrum is white, then encode, decode and filter with the inverse signal to recover the signal. This way you spend more bits on the high energy frequencies and less and the low energy ones. Your quantization noise follows the spectrum of the signal.



    The scheme that you suggest is one of the simplest forms of this approach: your whitening filter is a differentiator and your inverse filter is an integrator.






    share|improve this answer









    $endgroup$














      Your Answer





      StackExchange.ifUsing("editor", function () {
      return StackExchange.using("mathjaxEditing", function () {
      StackExchange.MarkdownEditor.creationCallbacks.add(function (editor, postfix) {
      StackExchange.mathjaxEditing.prepareWmdForMathJax(editor, postfix, [["$", "$"], ["\\(","\\)"]]);
      });
      });
      }, "mathjax-editing");

      StackExchange.ready(function() {
      var channelOptions = {
      tags: "".split(" "),
      id: "295"
      };
      initTagRenderer("".split(" "), "".split(" "), channelOptions);

      StackExchange.using("externalEditor", function() {
      // Have to fire editor after snippets, if snippets enabled
      if (StackExchange.settings.snippets.snippetsEnabled) {
      StackExchange.using("snippets", function() {
      createEditor();
      });
      }
      else {
      createEditor();
      }
      });

      function createEditor() {
      StackExchange.prepareEditor({
      heartbeatType: 'answer',
      autoActivateHeartbeat: false,
      convertImagesToLinks: false,
      noModals: true,
      showLowRepImageUploadWarning: true,
      reputationToPostImages: null,
      bindNavPrevention: true,
      postfix: "",
      imageUploader: {
      brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
      contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
      allowUrls: true
      },
      noCode: true, onDemand: true,
      discardSelector: ".discard-answer"
      ,immediatelyShowMarkdownHelp:true
      });


      }
      });














      draft saved

      draft discarded


















      StackExchange.ready(
      function () {
      StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fdsp.stackexchange.com%2fquestions%2f56470%2fcompress-a-signal-by-storing-signal-diff-instead-of-actual-samples-is-there-su%23new-answer', 'question_page');
      }
      );

      Post as a guest















      Required, but never shown

























      3 Answers
      3






      active

      oldest

      votes








      3 Answers
      3






      active

      oldest

      votes









      active

      oldest

      votes






      active

      oldest

      votes









      6












      $begingroup$

      Another notion you might wanna look into for lossless compression of a bandlimited signal (it's this bandlimiting that gets you this "smoother ... signal, ...closer ... to the baseline") is Linear Predictive Coding.



      I think this is historically correct that LPC was first used as a variant of Delta coding where the LPC algorithm predicts $hat{x}[n]$ from the set of samples: $x[n-1], x[n-2], ... x[n-N]$. If the prediction is good, then the real $x[n]$ is not far off from the prediction $hat{x}[n]$ and you need store only the delta $x[n]-hat{x}[n]$ which is smaller in magnitude and a smaller word width might be sufficient. You would need to store the LPC coefficients for each block, but there are usually no more than a dozen or so of these.



      This stored difference value can be compressed further using something like Huffman coding in which you would need to either store the "codebook" along with the compressed data or have some kinda codebook standardized so that both transmitter and receiver know it.



      I think it's some combination of LPC and Huffman coding that is used by various lossless audio formats. Maybe there is some perceptual stuff used to, to get almost lossless compression.






      share|improve this answer









      $endgroup$


















        6












        $begingroup$

        Another notion you might wanna look into for lossless compression of a bandlimited signal (it's this bandlimiting that gets you this "smoother ... signal, ...closer ... to the baseline") is Linear Predictive Coding.



        I think this is historically correct that LPC was first used as a variant of Delta coding where the LPC algorithm predicts $hat{x}[n]$ from the set of samples: $x[n-1], x[n-2], ... x[n-N]$. If the prediction is good, then the real $x[n]$ is not far off from the prediction $hat{x}[n]$ and you need store only the delta $x[n]-hat{x}[n]$ which is smaller in magnitude and a smaller word width might be sufficient. You would need to store the LPC coefficients for each block, but there are usually no more than a dozen or so of these.



        This stored difference value can be compressed further using something like Huffman coding in which you would need to either store the "codebook" along with the compressed data or have some kinda codebook standardized so that both transmitter and receiver know it.



        I think it's some combination of LPC and Huffman coding that is used by various lossless audio formats. Maybe there is some perceptual stuff used to, to get almost lossless compression.






        share|improve this answer









        $endgroup$
















          6












          6








          6





          $begingroup$

          Another notion you might wanna look into for lossless compression of a bandlimited signal (it's this bandlimiting that gets you this "smoother ... signal, ...closer ... to the baseline") is Linear Predictive Coding.



          I think this is historically correct that LPC was first used as a variant of Delta coding where the LPC algorithm predicts $hat{x}[n]$ from the set of samples: $x[n-1], x[n-2], ... x[n-N]$. If the prediction is good, then the real $x[n]$ is not far off from the prediction $hat{x}[n]$ and you need store only the delta $x[n]-hat{x}[n]$ which is smaller in magnitude and a smaller word width might be sufficient. You would need to store the LPC coefficients for each block, but there are usually no more than a dozen or so of these.



          This stored difference value can be compressed further using something like Huffman coding in which you would need to either store the "codebook" along with the compressed data or have some kinda codebook standardized so that both transmitter and receiver know it.



          I think it's some combination of LPC and Huffman coding that is used by various lossless audio formats. Maybe there is some perceptual stuff used to, to get almost lossless compression.






          share|improve this answer









          $endgroup$



          Another notion you might wanna look into for lossless compression of a bandlimited signal (it's this bandlimiting that gets you this "smoother ... signal, ...closer ... to the baseline") is Linear Predictive Coding.



          I think this is historically correct that LPC was first used as a variant of Delta coding where the LPC algorithm predicts $hat{x}[n]$ from the set of samples: $x[n-1], x[n-2], ... x[n-N]$. If the prediction is good, then the real $x[n]$ is not far off from the prediction $hat{x}[n]$ and you need store only the delta $x[n]-hat{x}[n]$ which is smaller in magnitude and a smaller word width might be sufficient. You would need to store the LPC coefficients for each block, but there are usually no more than a dozen or so of these.



          This stored difference value can be compressed further using something like Huffman coding in which you would need to either store the "codebook" along with the compressed data or have some kinda codebook standardized so that both transmitter and receiver know it.



          I think it's some combination of LPC and Huffman coding that is used by various lossless audio formats. Maybe there is some perceptual stuff used to, to get almost lossless compression.







          share|improve this answer












          share|improve this answer



          share|improve this answer










          answered Apr 5 at 21:41









          robert bristow-johnsonrobert bristow-johnson

          11.3k31751




          11.3k31751























              8












              $begingroup$

              You can also think of delta encoding as linear predictive coding (LPC) where only the prediction residual ($x[n]-hat{x}[n]$ in @robertbristow-johnson's notation) is stored and the predictor of the current sample is the previous sample. This is a fixed linear predictor (not with arbitrary coefficients optimized to data) that can exactly predict constant signals. Run the same linear predictive coding again on the residuals, and you have exactly predicted linear signals. Next round, quadratic signals. Or run a higher-order fixed predictor once to do the same.



              Such fixed predictors are listed in Tony Robinson's SHORTEN technical report, yours in Eq. 4, and are also included in the FLAC lossless audio codec although not often used. Calculating the best prediction coefficients for each data block and storing them in a header of the compressed block results in better compression than the use of fixed predictors.



              The linear predictor is supposed to do the whitening, making the residuals independent. In lossless compression, what is left to do is to entropy code the residuals, instead of using run-length or other symbol-based encoding that doesn't work so well on noisy signals. Typically, entropy coding assigns longer code words to large residuals, approximately minimizing the mean encoding length for an assumed distribution of the residual values. A variant of Rice coding compatible with signed numbers is typically used, as is done in FLAC, see source code of FLAC__bitwriter_write_rice_signed. The Rice code has a distribution parameter that needs to be optimized for the data block and saved in the block header.






              share|improve this answer











              $endgroup$













              • $begingroup$
                as similar to your suggestion, Subband ADPCM would possibly be the best choice...
                $endgroup$
                – Fat32
                Apr 5 at 21:08
















              8












              $begingroup$

              You can also think of delta encoding as linear predictive coding (LPC) where only the prediction residual ($x[n]-hat{x}[n]$ in @robertbristow-johnson's notation) is stored and the predictor of the current sample is the previous sample. This is a fixed linear predictor (not with arbitrary coefficients optimized to data) that can exactly predict constant signals. Run the same linear predictive coding again on the residuals, and you have exactly predicted linear signals. Next round, quadratic signals. Or run a higher-order fixed predictor once to do the same.



              Such fixed predictors are listed in Tony Robinson's SHORTEN technical report, yours in Eq. 4, and are also included in the FLAC lossless audio codec although not often used. Calculating the best prediction coefficients for each data block and storing them in a header of the compressed block results in better compression than the use of fixed predictors.



              The linear predictor is supposed to do the whitening, making the residuals independent. In lossless compression, what is left to do is to entropy code the residuals, instead of using run-length or other symbol-based encoding that doesn't work so well on noisy signals. Typically, entropy coding assigns longer code words to large residuals, approximately minimizing the mean encoding length for an assumed distribution of the residual values. A variant of Rice coding compatible with signed numbers is typically used, as is done in FLAC, see source code of FLAC__bitwriter_write_rice_signed. The Rice code has a distribution parameter that needs to be optimized for the data block and saved in the block header.






              share|improve this answer











              $endgroup$













              • $begingroup$
                as similar to your suggestion, Subband ADPCM would possibly be the best choice...
                $endgroup$
                – Fat32
                Apr 5 at 21:08














              8












              8








              8





              $begingroup$

              You can also think of delta encoding as linear predictive coding (LPC) where only the prediction residual ($x[n]-hat{x}[n]$ in @robertbristow-johnson's notation) is stored and the predictor of the current sample is the previous sample. This is a fixed linear predictor (not with arbitrary coefficients optimized to data) that can exactly predict constant signals. Run the same linear predictive coding again on the residuals, and you have exactly predicted linear signals. Next round, quadratic signals. Or run a higher-order fixed predictor once to do the same.



              Such fixed predictors are listed in Tony Robinson's SHORTEN technical report, yours in Eq. 4, and are also included in the FLAC lossless audio codec although not often used. Calculating the best prediction coefficients for each data block and storing them in a header of the compressed block results in better compression than the use of fixed predictors.



              The linear predictor is supposed to do the whitening, making the residuals independent. In lossless compression, what is left to do is to entropy code the residuals, instead of using run-length or other symbol-based encoding that doesn't work so well on noisy signals. Typically, entropy coding assigns longer code words to large residuals, approximately minimizing the mean encoding length for an assumed distribution of the residual values. A variant of Rice coding compatible with signed numbers is typically used, as is done in FLAC, see source code of FLAC__bitwriter_write_rice_signed. The Rice code has a distribution parameter that needs to be optimized for the data block and saved in the block header.






              share|improve this answer











              $endgroup$



              You can also think of delta encoding as linear predictive coding (LPC) where only the prediction residual ($x[n]-hat{x}[n]$ in @robertbristow-johnson's notation) is stored and the predictor of the current sample is the previous sample. This is a fixed linear predictor (not with arbitrary coefficients optimized to data) that can exactly predict constant signals. Run the same linear predictive coding again on the residuals, and you have exactly predicted linear signals. Next round, quadratic signals. Or run a higher-order fixed predictor once to do the same.



              Such fixed predictors are listed in Tony Robinson's SHORTEN technical report, yours in Eq. 4, and are also included in the FLAC lossless audio codec although not often used. Calculating the best prediction coefficients for each data block and storing them in a header of the compressed block results in better compression than the use of fixed predictors.



              The linear predictor is supposed to do the whitening, making the residuals independent. In lossless compression, what is left to do is to entropy code the residuals, instead of using run-length or other symbol-based encoding that doesn't work so well on noisy signals. Typically, entropy coding assigns longer code words to large residuals, approximately minimizing the mean encoding length for an assumed distribution of the residual values. A variant of Rice coding compatible with signed numbers is typically used, as is done in FLAC, see source code of FLAC__bitwriter_write_rice_signed. The Rice code has a distribution parameter that needs to be optimized for the data block and saved in the block header.







              share|improve this answer














              share|improve this answer



              share|improve this answer








              edited 2 days ago

























              answered Apr 5 at 20:16









              Olli NiemitaloOlli Niemitalo

              8,6081638




              8,6081638












              • $begingroup$
                as similar to your suggestion, Subband ADPCM would possibly be the best choice...
                $endgroup$
                – Fat32
                Apr 5 at 21:08


















              • $begingroup$
                as similar to your suggestion, Subband ADPCM would possibly be the best choice...
                $endgroup$
                – Fat32
                Apr 5 at 21:08
















              $begingroup$
              as similar to your suggestion, Subband ADPCM would possibly be the best choice...
              $endgroup$
              – Fat32
              Apr 5 at 21:08




              $begingroup$
              as similar to your suggestion, Subband ADPCM would possibly be the best choice...
              $endgroup$
              – Fat32
              Apr 5 at 21:08











              6












              $begingroup$

              That's used a lot. See for example https://en.wikipedia.org/wiki/Delta_encoding, https://en.wikipedia.org/wiki/Run-length_encoding.



              "Looking Smooth" typically means "not a lot of high frequency content". The easiest way to take advantage of this, is to figure out what the highest frequency really need then low-pass filter and choose an lower sample rate.



              IF you signal has a non-flat spectrum, it's typically advantageous to "whiten" the signal, i.e. filter it so that the average spectrum is white, then encode, decode and filter with the inverse signal to recover the signal. This way you spend more bits on the high energy frequencies and less and the low energy ones. Your quantization noise follows the spectrum of the signal.



              The scheme that you suggest is one of the simplest forms of this approach: your whitening filter is a differentiator and your inverse filter is an integrator.






              share|improve this answer









              $endgroup$


















                6












                $begingroup$

                That's used a lot. See for example https://en.wikipedia.org/wiki/Delta_encoding, https://en.wikipedia.org/wiki/Run-length_encoding.



                "Looking Smooth" typically means "not a lot of high frequency content". The easiest way to take advantage of this, is to figure out what the highest frequency really need then low-pass filter and choose an lower sample rate.



                IF you signal has a non-flat spectrum, it's typically advantageous to "whiten" the signal, i.e. filter it so that the average spectrum is white, then encode, decode and filter with the inverse signal to recover the signal. This way you spend more bits on the high energy frequencies and less and the low energy ones. Your quantization noise follows the spectrum of the signal.



                The scheme that you suggest is one of the simplest forms of this approach: your whitening filter is a differentiator and your inverse filter is an integrator.






                share|improve this answer









                $endgroup$
















                  6












                  6








                  6





                  $begingroup$

                  That's used a lot. See for example https://en.wikipedia.org/wiki/Delta_encoding, https://en.wikipedia.org/wiki/Run-length_encoding.



                  "Looking Smooth" typically means "not a lot of high frequency content". The easiest way to take advantage of this, is to figure out what the highest frequency really need then low-pass filter and choose an lower sample rate.



                  IF you signal has a non-flat spectrum, it's typically advantageous to "whiten" the signal, i.e. filter it so that the average spectrum is white, then encode, decode and filter with the inverse signal to recover the signal. This way you spend more bits on the high energy frequencies and less and the low energy ones. Your quantization noise follows the spectrum of the signal.



                  The scheme that you suggest is one of the simplest forms of this approach: your whitening filter is a differentiator and your inverse filter is an integrator.






                  share|improve this answer









                  $endgroup$



                  That's used a lot. See for example https://en.wikipedia.org/wiki/Delta_encoding, https://en.wikipedia.org/wiki/Run-length_encoding.



                  "Looking Smooth" typically means "not a lot of high frequency content". The easiest way to take advantage of this, is to figure out what the highest frequency really need then low-pass filter and choose an lower sample rate.



                  IF you signal has a non-flat spectrum, it's typically advantageous to "whiten" the signal, i.e. filter it so that the average spectrum is white, then encode, decode and filter with the inverse signal to recover the signal. This way you spend more bits on the high energy frequencies and less and the low energy ones. Your quantization noise follows the spectrum of the signal.



                  The scheme that you suggest is one of the simplest forms of this approach: your whitening filter is a differentiator and your inverse filter is an integrator.







                  share|improve this answer












                  share|improve this answer



                  share|improve this answer










                  answered Apr 5 at 19:14









                  HilmarHilmar

                  10.5k1218




                  10.5k1218






























                      draft saved

                      draft discarded




















































                      Thanks for contributing an answer to Signal Processing Stack Exchange!


                      • Please be sure to answer the question. Provide details and share your research!

                      But avoid



                      • Asking for help, clarification, or responding to other answers.

                      • Making statements based on opinion; back them up with references or personal experience.


                      Use MathJax to format equations. MathJax reference.


                      To learn more, see our tips on writing great answers.




                      draft saved


                      draft discarded














                      StackExchange.ready(
                      function () {
                      StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fdsp.stackexchange.com%2fquestions%2f56470%2fcompress-a-signal-by-storing-signal-diff-instead-of-actual-samples-is-there-su%23new-answer', 'question_page');
                      }
                      );

                      Post as a guest















                      Required, but never shown





















































                      Required, but never shown














                      Required, but never shown












                      Required, but never shown







                      Required, but never shown

































                      Required, but never shown














                      Required, but never shown












                      Required, but never shown







                      Required, but never shown







                      Popular posts from this blog

                      GameSpot

                      日野市

                      Tu-95轟炸機