MeasureTool » History » Version 25
Version 24 (Chris Cannam, 2013-03-05 01:19 PM) → Version 25/33 (Chris Cannam, 2013-03-05 01:20 PM)
h1. About the Measure tool and its limitations
The Sonic Visualiser Help reference "describes the Measure tool":http://www.sonicvisualiser.org/doc/reference/2.0/en/#measurements like this:
> The measure tool enables you to obtain measurements in scale units (such as time in the X coordinate, or whatever the Y coordinate of the current layer represents) corresponding to certain pixel positions. To measure a region, just click and drag a rectangle covering it, using the left mouse button with the measure tool selected ...
> It's important to note that the measurements shown in this way are based entirely on the pixel coordinates of the measurement rectangle, not on properties of the data being displayed.
The measure tool also has the ability to produce an automatic bounding box for a graphical feature, when double-clicked:
> The area enclosed by the rectangle is based on the extent of similarly-coloured pixels surrounding the click position: it is entirely graphical, involving no audio analysis, and so depends on the gain and colour scheme in use in the spectrogram.
Here's an example of what that means in terms of the practical limitations of the tool.
h2. Measurement box examples
!>measure.png!
This is a recording of an amateur male singer, using vibrato. For this illustration I have switched off all of the spectrogram interpolation options in the preferences, so as to be able to talk about individual spectrogram bins with more precision. The image shown here is a composite of three separately-highlighted measure boxes, because it isn't actually possible to highlight all three at once in SV. Let's imagine we want to measure the variation in pitch of the singer's vibrato about a nominal note pitch.
The *bottom* measurement box shows my first naive attempt to draw a measurement box around this vibrato.
The box is shown with a frequency-scale extent from 268.3 to 296.2Hz. These are the values that you would find if you took the green-line pixel positions and read them off against the scale on the left, interpolating appropriately (and taking into account that it's a log frequency scale). The frequency difference from top to bottom is 27.9Hz, but we want it in semitones, which corresponds to a frequency ratio rather than a frequency difference. Our ratio here is 296.2/268.3 = 1.104, for a semitone range of 12 * log2(1.104) = 1.712 semitones.
How accurate is that as an estimate of the singer's vibrato range? This is an 8192-bin spectrogram; the bin resolution of 44100/8192 = 5.38Hz corresponds to 0.34 semitones at this pitch -- that is, 12 * log2((268.3 + 5.38) / 268.3). Probably not very accurate.
Moving up, the *middle* measurement box shows the same rectangle around a higher harmonic of the same note. This time the range from 537.9 to 581.8Hz gives a 1.36 semitone range. This harmonic has double the frequency of the first; if we just doubled the frequency limits from the first box, we'd have 536.6 to 592.4Hz so this is tighter at both top and bottom, but particularly at the top where our placement of the green line was a bit optimistic in the first box.
However, this still overestimates the vibrato range. That's partly because the spectrogram still has limited bin resolution here: we're at double the earlier frequency, so it now has about 0.17 semitones per bin. It's partly because of the width of the central spectral lobe: even a pure sine tone gets smudged a bit across three visible bins at this colour scale, when the transform is windowed with any window that produces less leakage elsewhere than a rectangular one does. And it's partly because the signal is moving, so it contributes to more than one vertical bin per time division and so looks "thicker".
The *top* measurement box appears around a far higher harmonic (the 23rd) of this note, in a 2048-bin spectrogram. Up here there is much higher resolution available in semitone terms. Also, I've made more effort to place the green lines through the "middle" of the trace rather than simply drawing around it. Here the frequency range from 6229.8 to 6580.2Hz gives us a semitone range of 0.95, a lot more conservative than the other estimates.
h2. Some conclusions
# Even a high resolution spectrogram has surprisingly limited discrimination around the fundamental of a typical singing voice.
# The "thickness" of a line on the spectrogram is deceptive. In fact, you can make a line appear as thick as you like by simply turning up the gain, because that magnifies the analysis window lobes. To get an estimate of a partial frequency, you need to measure "through" it rather than "around" it.
# Interpolation can make it easier to "see" features, but doesn't make it any significant difference to measuring them.
# The measure tool is just a tool -- all it does is map a pixel position on the plot onto a frequency scale. If you double-click with it, it selects some contiguous pixels of similar-looking colour and puts a box around those. Whether any of this means anything musically is really up to the user.
h2. In light of this...
Returning to the bottom measurement box, this is what the fundamental "wiggle" looks like with the default settings, i.e. with interpolation switched on in an 8192-bin spectrogram.
!measure2.png!
This time, I've just aimed the measurement box roughly "through" the lines rather than "around" them. With an estimated range of 0.95 semitones, this is much closer to the estimate obtained from the high overtone above. (Well, actually it's the same value, but that's a bit lucky.) Using interpolation makes this sort of estimate by eye slightly easier to do, but it's still only an estimate. rather approximate.
The Sonic Visualiser Help reference "describes the Measure tool":http://www.sonicvisualiser.org/doc/reference/2.0/en/#measurements like this:
> The measure tool enables you to obtain measurements in scale units (such as time in the X coordinate, or whatever the Y coordinate of the current layer represents) corresponding to certain pixel positions. To measure a region, just click and drag a rectangle covering it, using the left mouse button with the measure tool selected ...
> It's important to note that the measurements shown in this way are based entirely on the pixel coordinates of the measurement rectangle, not on properties of the data being displayed.
The measure tool also has the ability to produce an automatic bounding box for a graphical feature, when double-clicked:
> The area enclosed by the rectangle is based on the extent of similarly-coloured pixels surrounding the click position: it is entirely graphical, involving no audio analysis, and so depends on the gain and colour scheme in use in the spectrogram.
Here's an example of what that means in terms of the practical limitations of the tool.
h2. Measurement box examples
!>measure.png!
This is a recording of an amateur male singer, using vibrato. For this illustration I have switched off all of the spectrogram interpolation options in the preferences, so as to be able to talk about individual spectrogram bins with more precision. The image shown here is a composite of three separately-highlighted measure boxes, because it isn't actually possible to highlight all three at once in SV. Let's imagine we want to measure the variation in pitch of the singer's vibrato about a nominal note pitch.
The *bottom* measurement box shows my first naive attempt to draw a measurement box around this vibrato.
The box is shown with a frequency-scale extent from 268.3 to 296.2Hz. These are the values that you would find if you took the green-line pixel positions and read them off against the scale on the left, interpolating appropriately (and taking into account that it's a log frequency scale). The frequency difference from top to bottom is 27.9Hz, but we want it in semitones, which corresponds to a frequency ratio rather than a frequency difference. Our ratio here is 296.2/268.3 = 1.104, for a semitone range of 12 * log2(1.104) = 1.712 semitones.
How accurate is that as an estimate of the singer's vibrato range? This is an 8192-bin spectrogram; the bin resolution of 44100/8192 = 5.38Hz corresponds to 0.34 semitones at this pitch -- that is, 12 * log2((268.3 + 5.38) / 268.3). Probably not very accurate.
Moving up, the *middle* measurement box shows the same rectangle around a higher harmonic of the same note. This time the range from 537.9 to 581.8Hz gives a 1.36 semitone range. This harmonic has double the frequency of the first; if we just doubled the frequency limits from the first box, we'd have 536.6 to 592.4Hz so this is tighter at both top and bottom, but particularly at the top where our placement of the green line was a bit optimistic in the first box.
However, this still overestimates the vibrato range. That's partly because the spectrogram still has limited bin resolution here: we're at double the earlier frequency, so it now has about 0.17 semitones per bin. It's partly because of the width of the central spectral lobe: even a pure sine tone gets smudged a bit across three visible bins at this colour scale, when the transform is windowed with any window that produces less leakage elsewhere than a rectangular one does. And it's partly because the signal is moving, so it contributes to more than one vertical bin per time division and so looks "thicker".
The *top* measurement box appears around a far higher harmonic (the 23rd) of this note, in a 2048-bin spectrogram. Up here there is much higher resolution available in semitone terms. Also, I've made more effort to place the green lines through the "middle" of the trace rather than simply drawing around it. Here the frequency range from 6229.8 to 6580.2Hz gives us a semitone range of 0.95, a lot more conservative than the other estimates.
h2. Some conclusions
# Even a high resolution spectrogram has surprisingly limited discrimination around the fundamental of a typical singing voice.
# The "thickness" of a line on the spectrogram is deceptive. In fact, you can make a line appear as thick as you like by simply turning up the gain, because that magnifies the analysis window lobes. To get an estimate of a partial frequency, you need to measure "through" it rather than "around" it.
# Interpolation can make it easier to "see" features, but doesn't make it any significant difference to measuring them.
# The measure tool is just a tool -- all it does is map a pixel position on the plot onto a frequency scale. If you double-click with it, it selects some contiguous pixels of similar-looking colour and puts a box around those. Whether any of this means anything musically is really up to the user.
h2. In light of this...
Returning to the bottom measurement box, this is what the fundamental "wiggle" looks like with the default settings, i.e. with interpolation switched on in an 8192-bin spectrogram.
!measure2.png!
This time, I've just aimed the measurement box roughly "through" the lines rather than "around" them. With an estimated range of 0.95 semitones, this is much closer to the estimate obtained from the high overtone above. (Well, actually it's the same value, but that's a bit lucky.) Using interpolation makes this sort of estimate by eye slightly easier to do, but it's still only an estimate. rather approximate.