In mathematics, cauchy wavelets are a family of continuous wavelets, used in the continuous wavelet transform.

Definition

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The Cauchy wavelet of order   is defined as:

 

where   and  
therefore, its Fourier transform is defined as

 .

Sometimes it is defined as a function with its Fourier transform[1]

 

where   and   for   almost everywhere and   for all  .

Also, it had used to be defined as[2]

 

in previous research of Cauchy wavelet. If we defined Cauchy wavelet in this way, we can observe that the Fourier transform of the Cauchy wavelet

 

Moreover, we can see that the maximum of the Fourier transform of the Cauchy wavelet of order   is happened at   and the Fourier transform of the Cauchy wavelet is positive only in  , it means that:
(1) when   is low then the convolution of Cauchy wavelet is a low pass filter, and when   is high the convolution of Cauchy wavelet is a high pass filter.
Since the wavelet transform equals to the convolution to the mother wavelet and the convolution to the mother wavelet equals to the multiplication between the Fourier transform of the mother wavelet and the function by the convolution theorem.
And,
(2) the design of the Cauchy wavelet transform is considered with analysis of the analytic signal.

Since the analytic signal is bijective to the real signal and there is only positive frequency in the analytic signal (the real signal has conjugated frequency between positive and negative) i.e.

 

where   is a real signal ( , for all  )
And the bijection between analytic signal and real signal is that

 

 

where   is the corresponded analytic signal of the real signal  , and   is Hilbert transform of  .

Unicity of the reconstruction

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Phase retrieval problem

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A phase retrieval problem consists in reconstructing an unknown complex function   from a set of phaseless linear measurements. More precisely, let   be a vector space, whose vectors are complex functions, on   and   a set of linear forms from   to  . We are given the set of all  , for some unknown   and we want to determine  .
This problem can be studied under three different viewpoints:[1]
(1) Is   uniquely determined by   (up to a global phase)?
(2) If the answer to the previous question is positive, is the inverse application   is “stable”? For example, is it continuous? Uniformly Lipschitz?
(3) In practice, is there an efficient algorithm which recovers   from  ?

The most well-known example of a phase retrieval problem is the case where the   represent the Fourier coefficients:
for example:

 , for  ,

where   is complex-valued function on  
Then,   can be reconstruct by   as

 .

and in fact we have Parseval's identity

 .

where   i.e. the norm defined in  .
Hence, in this example, the index set   is the integer  , the vector space   is   and the linear form   is the Fourier coefficient. Furthermore, the absolute value of Fourier coefficients   can only determine the norm of   defined in  .

Unicity Theorem of the reconstruction

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Firstly, we define the Cauchy wavelet transform as:

 .

Then, the theorem is as followed

Theorem.[1] For a fixed  , if exist two different numbers   and the Cauchy wavelet transform defined as above. Then, if there are two real-valued functions   satisfied

 ,   and

 ,  ,

then there is a   such that  .

  implies that

  and

 .

Hence, we get the relation

 

and  .

Back to the phase retrieval problem, in the Cauchy wavelet transform case, the index set   is   with   and  , the vector space   is   and the linear form   is defined as  . Hence,   determines the two dimensional subspace   in  .

References

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  1. ^ a b c Mallat, Stéphane; Waldspurger, Irène (2015). "Phase retrieval for the Cauchy wavelet transform". Journal of Fourier Analysis and Applications. 21 (6): 1251–1309. arXiv:1404.1183. doi:10.1007/s00041-015-9403-4.
  2. ^ Argoul, Pierre; Le, Thien-phu (2003). "Instantaneous Indicators of Structural Behaviour Based on the Continuous Cauchy Wavelet Analysis". Mechanical Systems and Signal Processing. 17 (1): 243–250. Bibcode:2003MSSP...17..243A. doi:10.1006/mssp.2002.1557.