Significance of Negative Frequency

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Discussion Overview

The discussion centers around the significance of negative frequency in signal processing, particularly in relation to phase information, magnitude, and the implications for digital image reconstruction. Participants explore theoretical and practical aspects, including Fourier transforms and their effects on signals.

Discussion Character

  • Exploratory
  • Technical explanation
  • Debate/contested
  • Mathematical reasoning

Main Points Raised

  • Some participants propose that negative frequency has no more significance than negative numbers in sinusoidal signals, where the symmetry of the signal makes them indistinguishable.
  • Others argue that negative frequency is significant in complex signal representations, affecting the imaginary part of the signal while leaving the real part unchanged.
  • A participant mentions that negative frequency plays a crucial role in phase information, particularly in modulation and potential aliasing issues.
  • One participant highlights that the Fourier transform of a sum of sine waves shows symmetric magnitude but odd-symmetric phase, indicating a difference in behavior between positive and negative frequencies.
  • Some participants contest the idea that phase information can be ignored when reconstructing images from magnitude alone, asserting that losing phase can lead to significant distortions in the image.
  • A later reply questions the validity of reconstructing images from magnitude without phase, noting that the phase can affect the overall magnitude response when combining waveforms.
  • Another participant reflects on their experience using the 2D FFT in MATLAB, stating they could reconstruct an image from magnitude values alone, leading to confusion about the role of phase in this context.

Areas of Agreement / Disagreement

Participants express differing views on the significance of negative frequency, particularly regarding its impact on phase information and image reconstruction. There is no consensus on whether phase can be disregarded in certain contexts.

Contextual Notes

Some discussions involve assumptions about signal symmetry and the nature of phase information, which may not hold in all cases. The implications of using different transforms, such as the Discrete Cosine Transform, are also noted but not fully resolved.

Who May Find This Useful

This discussion may be of interest to those studying signal processing, digital imaging, and Fourier analysis, particularly in understanding the nuances of frequency representation and its implications for practical applications.

salil87
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Hi
Just wanted to know if negative frequency has any significance?

Thanks
Salil
 
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salil87 said:
Just wanted to know if negative frequency has any significance?

no more significance than negative numbers do.

for real sinusoidal signals, where we define the origin of time (t=0) so that the sinusoid has even symmetry, then you cannot tell the difference between a frequency f and it's negative, -f.

x(t) = A \cos( 2 \pi f t ) = A \cos( 2 \pi (-f) t )

if t=0 were defined so that the sinusoid had odd symmetry, of course negating the frequency would negate the signal:

y(t) = A \sin( 2 \pi f t ) = -A \sin( 2 \pi (-f) t ).but the "real" reason that negative frequencies exist for electrical engineers is that sometimes we represent signals as complex quantities

x(t) = A e^{ j 2 \pi f t } = A \cos( 2 \pi f t ) + j A \sin( 2 \pi f t )

as you can see, negating f will negate the second term (the imaginary part), but not the first term (the real part). so there is a significant difference between the positive and negative frequency.

even though signals we really see and really measure are real, often inside of a device, the mathematical operations we do on a signal (this is what "DSP" is about) are done to a complex representation of it (which might be called a "phasor", not to be confused with Star Trek) where the sign on f will be significant. we have formalized some of these operations with concepts and techniques called the "analytical signal" which uses another concept called the "Hilbert transform".

so, do negative numbers really exist and have significance?
 
Negative frequency usually has more importance if you're considering phase information than if you're considering just magnitude.

For example, you can reconstruct a digital image completely from its 2D spectrum magnitude, where you get rid of the complex numbers and therefore are ignoring phase information.

Wikipedia gives an example as negative frequency being a rotation in the opposite direction, which is related to phase too.

Its siginificance also comes into play when you consider modulation, and you modulate a negative frequency into the positive frequency bandwidth, and then you can have issues of aliasing, where this negative frequency is now interferring with your positive frequencies.
 
An example, if you look at the Fourier transform of a sum of sine waves, you notice its magnitude is symmetric evenly, while the phase is symmetric odd (negative frequencies have positive phases, positive frequencies have negative phases). So you can look at the magnitude of negative frequency, and it will look the same to you as the magnitude of the positive frequency, but when you look at their phases, you see their signs are opposite.
 
DragonPetter said:
Negative frequency usually has more importance if you're considering phase information than if you're considering just magnitude.

i don't know if that is true.

For example, you can reconstruct a digital image completely from its 2D spectrum magnitude, where you get rid of the complex numbers and therefore are ignoring phase information.

i don't believe that is true at all. you can really mess up a digital image by ditching the phase information. in fact, by setting the phase information to zero, a general image (which would not normally have symmetry about either the horizontal or vertical axis) would become even symmetrical about both axes.

now there are these transforms called the Discrete Cosine Transform, but the model image is one where you reflect the image about both axes to make it even symmetry (this quadruples the area). then you can represent it with cosine terms where the sign of frequency makes no difference.
 
Last edited:
rbj said:
i don't know if that is true.



i don't believe that is true at all. you can really mess up a digital image by ditching the phase information. in fact, by setting the phase information to zero, a general image (which would not normally have symmetry about either the horizontal or vertical axis) would become even symmetrical about both axes.

now there are these transforms called the Discrete Cosine Transform, but the model image is one where you reflect the image about both axes to make it even symmetry (this quadruples the area). then you can represent it with cosine terms where the sign of frequency makes no difference.

Hmm I'm not sure what I've done. I used the 2D fast Fourier transform and when I take the magnitude of this, which loses all phase information, and then do the inverse Fourier transform, I get the image back again.

Edit: I guess magnitude is still using the phase.
 
DragonPetter said:
Hmm I'm not sure what I've done. I used the 2D fast Fourier transform and when I take the magnitude of this, which loses all phase information, and then do the inverse Fourier transform, I get the image back again.

Edit: I guess magnitude is still using the phase.

magnitude is not phase. it is definitely possible to keep the magnitude and lose the phase (but this has to mess up a previously non-symmetrical image into a symmetrical one). and this operation can destroy information, but doesn't always.

is it possible the tool you were using was a DCT? or perhaps before the FFT, the image size was doubled along both the x and y axes by reflecting the image? one thing about the DCT, is that the phase is always zero which means that the "magnitude" is sometimes negative. essentially you are ditching the imaginary part (which is zero anyway, if you have that even symmetry to start with).
 
I was using the 2D FFT function in matlab. I could get an array with magnitude values, and an array with phase values. I could completely ignore the phase values, and take the IFFT of the magnitude values and still get the image back.

Also, thank you for correcting me, I'm realizing what I said was quite wrong.

I think I've been confusing "phase information" with the phase response plot. The magnitude is not phase, but it is dependent on the phases of the frequencies since the complex values have an effect on the magnitude.

For example, I can have two waveforms, and their magnitude responses can look exactly the same, even if they're out of phase. When I add them together and then take the magnitude of their sum, it can be very different than each of their individual magnitude responses because their phase responses are different, even if just looking at the magnitude responses would lead me to think I could simply superimpose them. Its the complex numbers/phase that make this so.

I'm not really sure how this ties into negative frequencies now, so sorry for sidetracking the question.
 
Last edited:
Thanks rbj and DragonPetter
Salil
 

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