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mathematics Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics itself. There are many ar ...
and
signal processing Signal processing is an electrical engineering subfield that focuses on analyzing, modifying and synthesizing ''signals'', such as audio signal processing, sound, image processing, images, Scalar potential, potential fields, Seismic tomograph ...
, the Hilbert transform is a specific singular integral that takes a function, of a real variable and produces another function of a real variable . The Hilbert transform is given by the Cauchy principal value of the
convolution In mathematics (in particular, functional analysis), convolution is a operation (mathematics), mathematical operation on two function (mathematics), functions f and g that produces a third function f*g, as the integral of the product of the two ...
with the function 1/(\pi t) (see ). The Hilbert transform has a particularly simple representation in the
frequency domain In mathematics, physics, electronics, control systems engineering, and statistics, the frequency domain refers to the analysis of mathematical functions or signals with respect to frequency (and possibly phase), rather than time, as in time ser ...
: It imparts a
phase shift In physics and mathematics, the phase (symbol φ or ϕ) of a wave or other periodic function F of some real variable t (such as time) is an angle-like quantity representing the fraction of the cycle covered up to t. It is expressed in such a s ...
of ±90° (/2 radians) to every frequency component of a function, the sign of the shift depending on the sign of the frequency (see ). The Hilbert transform is important in signal processing, where it is a component of the analytic representation of a real-valued signal . The Hilbert transform was first introduced by
David Hilbert David Hilbert (; ; 23 January 1862 – 14 February 1943) was a German mathematician and philosopher of mathematics and one of the most influential mathematicians of his time. Hilbert discovered and developed a broad range of fundamental idea ...
in this setting, to solve a special case of the Riemann–Hilbert problem for analytic functions.


Definition

The Hilbert transform of can be thought of as the
convolution In mathematics (in particular, functional analysis), convolution is a operation (mathematics), mathematical operation on two function (mathematics), functions f and g that produces a third function f*g, as the integral of the product of the two ...
of with the function , known as the Cauchy kernel. Because 1/ is not integrable across , the integral defining the convolution does not always converge. Instead, the Hilbert transform is defined using the Cauchy principal value (denoted here by ). Explicitly, the Hilbert transform of a function (or signal) is given by \operatorname(u)(t) = \frac\, \operatorname \int_^ \frac\,\mathrm\tau, provided this integral exists as a principal value. This is precisely the convolution of with the tempered distribution . Alternatively, by changing variables, the principal-value integral can be written explicitly as \operatorname(u)(t) = \frac\, \lim_ \int_\varepsilon^\infty \frac \,\mathrm\tau. When the Hilbert transform is applied twice in succession to a function , the result is \operatorname\bigl(\operatorname(u)\bigr)(t) = -u(t), provided the integrals defining both iterations converge in a suitable sense. In particular, the inverse transform is -\operatorname. This fact can most easily be seen by considering the effect of the Hilbert transform on the
Fourier transform In mathematics, the Fourier transform (FT) is an integral transform that takes a function as input then outputs another function that describes the extent to which various frequencies are present in the original function. The output of the tr ...
of (see below). For an
analytic function In mathematics, an analytic function is a function that is locally given by a convergent power series. There exist both real analytic functions and complex analytic functions. Functions of each type are infinitely differentiable, but complex ...
in the
upper half-plane In mathematics, the upper half-plane, is the set of points in the Cartesian plane with The lower half-plane is the set of points with instead. Arbitrary oriented half-planes can be obtained via a planar rotation. Half-planes are an example ...
, the Hilbert transform describes the relationship between the real part and the imaginary part of the boundary values. That is, if is analytic in the upper half complex plane , and , then up to an additive constant, provided this Hilbert transform exists.


Notation

In
signal processing Signal processing is an electrical engineering subfield that focuses on analyzing, modifying and synthesizing ''signals'', such as audio signal processing, sound, image processing, images, Scalar potential, potential fields, Seismic tomograph ...
the Hilbert transform of is commonly denoted by \hat(t). However, in mathematics, this notation is already extensively used to denote the Fourier transform of . Occasionally, the Hilbert transform may be denoted by \tilde(t). Furthermore, many sources define the Hilbert transform as the negative of the one defined here.


History

The Hilbert transform arose in Hilbert's 1905 work on a problem Riemann posed concerning analytic functions, which has come to be known as the Riemann–Hilbert problem. Hilbert's work was mainly concerned with the Hilbert transform for functions defined on the circle. Some of his earlier work related to the Discrete Hilbert Transform dates back to lectures he gave in
Göttingen Göttingen (, ; ; ) is a college town, university city in Lower Saxony, central Germany, the Capital (political), capital of Göttingen (district), the eponymous district. The River Leine runs through it. According to the 2022 German census, t ...
. The results were later published by Hermann Weyl in his dissertation. Schur improved Hilbert's results about the discrete Hilbert transform and extended them to the integral case. These results were restricted to the spaces and . In 1928, Marcel Riesz proved that the Hilbert transform can be defined for ''u'' in L^p(\mathbb) ( Lp space) for , that the Hilbert transform is a
bounded operator In functional analysis and operator theory, a bounded linear operator is a linear transformation L : X \to Y between topological vector spaces (TVSs) X and Y that maps bounded subsets of X to bounded subsets of Y. If X and Y are normed vector ...
on L^p(\mathbb) for , and that similar results hold for the Hilbert transform on the circle as well as the discrete Hilbert transform. The Hilbert transform was a motivating example for Antoni Zygmund and Alberto Calderón during their study of singular integrals. Their investigations have played a fundamental role in modern harmonic analysis. Various generalizations of the Hilbert transform, such as the bilinear and trilinear Hilbert transforms are still active areas of research today.


Relationship with the Fourier transform

The Hilbert transform is a multiplier operator. The multiplier of is , where is the
signum function In mathematics, the sign function or signum function (from '' signum'', Latin for "sign") is a function that has the value , or according to whether the sign of a given real number is positive or negative, or the given number is itself zer ...
. Therefore: \mathcal\bigl(\operatorname(u)\bigr)(\omega) = -i \sgn(\omega) \cdot \mathcal(u)(\omega) , where \mathcal denotes the
Fourier transform In mathematics, the Fourier transform (FT) is an integral transform that takes a function as input then outputs another function that describes the extent to which various frequencies are present in the original function. The output of the tr ...
. Since , it follows that this result applies to the three common definitions of \mathcal. By
Euler's formula Euler's formula, named after Leonhard Euler, is a mathematical formula in complex analysis that establishes the fundamental relationship between the trigonometric functions and the complex exponential function. Euler's formula states that, for ...
, \sigma_\operatorname(\omega) = \begin ~~i = e^ & \text \omega < 0\\ ~~ 0 & \text \omega = 0\\ -i = e^ & \text \omega > 0 \end Therefore, has the effect of shifting the phase of the
negative frequency In mathematics, the concept of signed frequency (negative and positive frequency) can indicate both the rate and sense of rotation; it can be as simple as a wheel rotating clockwise or counterclockwise. The rate is expressed in units such as revol ...
components of by +90° ( radians) and the phase of the positive frequency components by −90°, and has the effect of restoring the positive frequency components while shifting the negative frequency ones an additional +90°, resulting in their negation (i.e., a multiplication by −1). When the Hilbert transform is applied twice, the phase of the negative and positive frequency components of are respectively shifted by +180° and −180°, which are equivalent amounts. The signal is negated; i.e., , because \left(\sigma_\operatorname(\omega)\right)^2 = e^ = -1 \quad \text \omega \neq 0 .


Table of selected Hilbert transforms

In the following table, the
frequency Frequency is the number of occurrences of a repeating event per unit of time. Frequency is an important parameter used in science and engineering to specify the rate of oscillatory and vibratory phenomena, such as mechanical vibrations, audio ...
parameter \omega is real. Notes An extensive table of Hilbert transforms is available. Note that the Hilbert transform of a constant is zero.


Domain of definition

It is by no means obvious that the Hilbert transform is well-defined at all, as the improper integral defining it must converge in a suitable sense. However, the Hilbert transform is well-defined for a broad class of functions, namely those in L^p(\mathbb) for . More precisely, if is in L^p(\mathbb) for , then the limit defining the improper integral \operatorname(u)(t) = \frac \lim_ \int_\varepsilon^\infty \frac\,d\tau exists for
almost every In measure theory (a branch of mathematical analysis), a property holds almost everywhere if, in a technical sense, the set for which the property holds takes up nearly all possibilities. The notion of "almost everywhere" is a companion notion to ...
. The limit function is also in L^p(\mathbb) and is in fact the limit in the mean of the improper integral as well. That is, \frac \int_\varepsilon^\infty \frac\,\mathrm\tau \to \operatorname(u)(t) as in the norm, as well as pointwise almost everywhere, by the Titchmarsh theorem. In the case , the Hilbert transform still converges pointwise almost everywhere, but may itself fail to be integrable, even locally. In particular, convergence in the mean does not in general happen in this case. The Hilbert transform of an function does converge, however, in -weak, and the Hilbert transform is a bounded operator from to . (In particular, since the Hilbert transform is also a multiplier operator on , Marcinkiewicz interpolation and a duality argument furnishes an alternative proof that is bounded on .)


Properties


Boundedness

If , then the Hilbert transform on L^p(\mathbb) is a
bounded linear operator In functional analysis and operator theory, a bounded linear operator is a linear transformation L : X \to Y between topological vector spaces (TVSs) X and Y that maps bounded subsets of X to bounded subsets of Y. If X and Y are normed vector ...
, meaning that there exists a constant such that \left\, \operatornameu\right\, _p \le C_p \left\, u\right\, _p for all The best constant C_p is given by C_p = \begin \tan \frac & \text ~ 1 < p \leq 2 \\ pt \cot \frac & \text ~ 2 < p < \infty \end An easy way to find the best C_p for p being a power of 2 is through the so-called Cotlar's identity that (\operatornamef)^2 =f^2 +2\operatorname(f\operatornamef) for all real valued . The same best constants hold for the periodic Hilbert transform. The boundedness of the Hilbert transform implies the L^p(\mathbb) convergence of the symmetric partial sum operator S_R f = \int_^R \hat(\xi) e^ \, \mathrm\xi to in


Anti-self adjointness

The Hilbert transform is an anti- self adjoint operator relative to the duality pairing between L^p(\mathbb) and the dual space where and are Hölder conjugates and . Symbolically, \langle \operatorname u, v \rangle = \langle u, -\operatorname v \rangle for u \isin L^p(\mathbb) and


Inverse transform

The Hilbert transform is an anti-involution, meaning that \operatorname\bigl(\operatorname\left(u\right)\bigr) = -u provided each transform is well-defined. Since preserves the space this implies in particular that the Hilbert transform is invertible on and that \operatorname^ = -\operatorname


Complex structure

Because ("" is the
identity operator Graph of the identity function on the real numbers In mathematics, an identity function, also called an identity relation, identity map or identity transformation, is a function that always returns the value that was used as its argument, unc ...
) on the real
Banach space In mathematics, more specifically in functional analysis, a Banach space (, ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vectors and ...
of ''real''-valued functions in the Hilbert transform defines a
linear complex structure In mathematics, a complex structure on a real vector space V is an automorphism of V that squares to the minus identity, - \text_V . Such a structure on V allows one to define multiplication by complex scalars in a canonical fashion so as to re ...
on this Banach space. In particular, when , the Hilbert transform gives the Hilbert space of real-valued functions in L^2(\mathbb) the structure of a ''complex'' Hilbert space. The (complex)
eigenstate In quantum physics, a quantum state is a mathematical entity that embodies the knowledge of a quantum system. Quantum mechanics specifies the construction, evolution, and measurement of a quantum state. The result is a prediction for the system re ...
s of the Hilbert transform admit representations as
holomorphic function In mathematics, a holomorphic function is a complex-valued function of one or more complex variables that is complex differentiable in a neighbourhood of each point in a domain in complex coordinate space . The existence of a complex de ...
s in the upper and lower half-planes in the
Hardy space In complex analysis, the Hardy spaces (or Hardy classes) H^p are spaces of holomorphic functions on the unit disk or upper half plane. They were introduced by Frigyes Riesz , who named them after G. H. Hardy, because of the paper . In real anal ...
by the Paley–Wiener theorem.


Differentiation

Formally, the derivative of the Hilbert transform is the Hilbert transform of the derivative, i.e. these two linear operators commute: \operatorname\left(\frac\right) = \frac\operatorname(u) Iterating this identity, \operatorname\left(\frac\right) = \frac\operatorname(u) This is rigorously true as stated provided and its first derivatives belong to One can check this easily in the frequency domain, where differentiation becomes multiplication by .


Convolutions

The Hilbert transform can formally be realized as a
convolution In mathematics (in particular, functional analysis), convolution is a operation (mathematics), mathematical operation on two function (mathematics), functions f and g that produces a third function f*g, as the integral of the product of the two ...
with the tempered distribution h(t) = \operatorname \frac Thus formally, \operatorname(u) = h*u However, ''a priori'' this may only be defined for a distribution of
compact support In mathematics, the support of a real-valued function f is the subset of the function domain of elements that are not mapped to zero. If the domain of f is a topological space, then the support of f is instead defined as the smallest closed ...
. It is possible to work somewhat rigorously with this since compactly supported functions (which are distributions ''a fortiori'') are
dense Density (volumetric mass density or specific mass) is the ratio of a substance's mass to its volume. The symbol most often used for density is ''ρ'' (the lower case Greek letter rho), although the Latin letter ''D'' (or ''d'') can also be use ...
in . Alternatively, one may use the fact that ''h''(''t'') is the distributional derivative of the function ; to wit \operatorname(u)(t) = \frac\left(\frac \left(u*\log\bigl, \cdot\bigr, \right)(t)\right) For most operational purposes the Hilbert transform can be treated as a convolution. For example, in a formal sense, the Hilbert transform of a convolution is the convolution of the Hilbert transform applied on ''only one'' of either of the factors: \operatorname(u*v) = \operatorname(u)*v = u*\operatorname(v) This is rigorously true if and are compactly supported distributions since, in that case, h*(u*v) = (h*u)*v = u*(h*v) By passing to an appropriate limit, it is thus also true if and provided that 1 < \frac + \frac from a theorem due to Titchmarsh.


Invariance

The Hilbert transform has the following invariance properties on L^2(\mathbb). * It commutes with translations. That is, it commutes with the operators for all in \mathbb. * It commutes with positive dilations. That is it commutes with the operators for all . * It anticommutes with the reflection . Up to a multiplicative constant, the Hilbert transform is the only bounded operator on 2 with these properties. In fact there is a wider set of operators that commute with the Hilbert transform. The group \text(2,\mathbb) acts by unitary operators on the space L^2(\mathbb) by the formula \operatorname_^ f(x) = \frac \, f \left( \frac \right) \,,\qquad g = \begin a & b \\ c & d \end ~,\qquad \text~ a d - b c = \pm 1 . This
unitary representation In mathematics, a unitary representation of a group ''G'' is a linear representation π of ''G'' on a complex Hilbert space ''V'' such that π(''g'') is a unitary operator for every ''g'' ∈ ''G''. The general theory is well-developed in the ca ...
is an example of a principal series representation of ~\text(2,\mathbb)~. In this case it is reducible, splitting as the orthogonal sum of two invariant subspaces,
Hardy space In complex analysis, the Hardy spaces (or Hardy classes) H^p are spaces of holomorphic functions on the unit disk or upper half plane. They were introduced by Frigyes Riesz , who named them after G. H. Hardy, because of the paper . In real anal ...
H^2(\mathbb) and its conjugate. These are the spaces of boundary values of holomorphic functions on the upper and lower halfplanes. H^2(\mathbb) and its conjugate consist of exactly those functions with Fourier transforms vanishing on the negative and positive parts of the real axis respectively. Since the Hilbert transform is equal to , with being the orthogonal projection from L^2(\mathbb) onto \operatorname^2(\mathbb), and the
identity operator Graph of the identity function on the real numbers In mathematics, an identity function, also called an identity relation, identity map or identity transformation, is a function that always returns the value that was used as its argument, unc ...
, it follows that \operatorname^2(\mathbb) and its orthogonal complement are eigenspaces of for the eigenvalues . In other words, commutes with the operators . The restrictions of the operators to \operatorname^2(\mathbb) and its conjugate give irreducible representations of \text(2,\mathbb) – the so-called limit of discrete series representations.


Extending the domain of definition


Hilbert transform of distributions

It is further possible to extend the Hilbert transform to certain spaces of distributions . Since the Hilbert transform commutes with differentiation, and is a bounded operator on , restricts to give a continuous transform on the
inverse limit In mathematics, the inverse limit (also called the projective limit) is a construction that allows one to "glue together" several related objects, the precise gluing process being specified by morphisms between the objects. Thus, inverse limits ca ...
of
Sobolev spaces In mathematics, a Sobolev space is a vector space of functions equipped with a normed space, norm that is a combination of Lp norm, ''Lp''-norms of the function together with its derivatives up to a given order. The derivatives are understood in a ...
: \mathcal_ = \underset W^(\mathbb) The Hilbert transform can then be defined on the dual space of \mathcal_, denoted \mathcal_', consisting of distributions. This is accomplished by the duality pairing:
For define: \operatorname(u)\in \mathcal'_ = \langle \operatornameu, v \rangle \ \triangleq \ \langle u, -\operatornamev\rangle,\ \text \ v\in\mathcal_ . It is possible to define the Hilbert transform on the space of tempered distributions as well by an approach due to Gel'fand and Shilov, but considerably more care is needed because of the singularity in the integral.


Hilbert transform of bounded functions

The Hilbert transform can be defined for functions in L^\infty (\mathbb) as well, but it requires some modifications and caveats. Properly understood, the Hilbert transform maps L^\infty (\mathbb) to the
Banach space In mathematics, more specifically in functional analysis, a Banach space (, ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vectors and ...
of bounded mean oscillation (BMO) classes. Interpreted naïvely, the Hilbert transform of a bounded function is clearly ill-defined. For instance, with , the integral defining diverges almost everywhere to . To alleviate such difficulties, the Hilbert transform of an function is therefore defined by the following regularized form of the integral \operatorname(u)(t) = \operatorname \int_^\infty u(\tau)\left\ \, \mathrm\tau where as above and h_0(x) = \begin 0 & \text ~ , x, < 1 \\ \frac & \text ~ , x, \ge 1 \end The modified transform agrees with the original transform up to an additive constant on functions of compact support from a general result by Calderón and Zygmund. Furthermore, the resulting integral converges pointwise almost everywhere, and with respect to the BMO norm, to a function of bounded mean oscillation. A deep result of Fefferman's work is that a function is of bounded mean oscillation if and only if it has the form for some


Conjugate functions

The Hilbert transform can be understood in terms of a pair of functions and such that the function F(x) = f(x) + i\,g(x) is the boundary value of a
holomorphic function In mathematics, a holomorphic function is a complex-valued function of one or more complex variables that is complex differentiable in a neighbourhood of each point in a domain in complex coordinate space . The existence of a complex de ...
in the upper half-plane. Under these circumstances, if and are sufficiently integrable, then one is the Hilbert transform of the other. Suppose that f \isin L^p(\mathbb). Then, by the theory of the Poisson integral, admits a unique harmonic extension into the upper half-plane, and this extension is given by u(x + iy) = u(x, y) = \frac \int_^\infty f(s)\;\frac \; \mathrms which is the convolution of with the
Poisson kernel In mathematics, and specifically in potential theory, the Poisson kernel is an integral kernel, used for solving the two-dimensional Laplace equation, given Dirichlet boundary conditions on the unit disk. The kernel can be understood as the deriv ...
P(x, y) = \frac Furthermore, there is a unique harmonic function defined in the upper half-plane such that is holomorphic and \lim_ v\,(x + i\,y) = 0 This harmonic function is obtained from by taking a convolution with the ''conjugate Poisson kernel'' Q(x, y) = \frac . Thus v(x, y) = \frac\int_^\infty f(s)\;\frac\;\mathrms . Indeed, the real and imaginary parts of the Cauchy kernel are \frac = P(x, y) + i\,Q(x, y) so that is holomorphic by
Cauchy's integral formula In mathematics, Cauchy's integral formula, named after Augustin-Louis Cauchy, is a central statement in complex analysis. It expresses the fact that a holomorphic function defined on a disk is completely determined by its values on the boundary o ...
. The function obtained from in this way is called the harmonic conjugate of . The (non-tangential) boundary limit of as is the Hilbert transform of . Thus, succinctly, \operatorname(f) = \lim_ Q(-, y) \star f


Titchmarsh's theorem

Titchmarsh's theorem (named for E. C. Titchmarsh who included it in his 1937 work) makes precise the relationship between the boundary values of holomorphic functions in the upper half-plane and the Hilbert transform. It gives necessary and sufficient conditions for a complex-valued square-integrable function on the real line to be the boundary value of a function in the
Hardy space In complex analysis, the Hardy spaces (or Hardy classes) H^p are spaces of holomorphic functions on the unit disk or upper half plane. They were introduced by Frigyes Riesz , who named them after G. H. Hardy, because of the paper . In real anal ...
of holomorphic functions in the upper half-plane . The theorem states that the following conditions for a complex-valued square-integrable function F : \mathbb \to \mathbb are equivalent: * is the limit as of a holomorphic function in the upper half-plane such that \int_^\infty , F(x + i\,y), ^2\;\mathrmx < K * The real and imaginary parts of are Hilbert transforms of each other. * The
Fourier transform In mathematics, the Fourier transform (FT) is an integral transform that takes a function as input then outputs another function that describes the extent to which various frequencies are present in the original function. The output of the tr ...
\mathcal(F)(x) vanishes for . A weaker result is true for functions of class for . Specifically, if is a holomorphic function such that \int_^\infty , F(x + i\,y), ^p\;\mathrmx < K for all , then there is a complex-valued function in L^p(\mathbb) such that in the norm as (as well as holding pointwise
almost everywhere In measure theory (a branch of mathematical analysis), a property holds almost everywhere if, in a technical sense, the set for which the property holds takes up nearly all possibilities. The notion of "almost everywhere" is a companion notion to ...
). Furthermore, F(x) = f(x) + i\,g(x) where is a real-valued function in L^p(\mathbb) and is the Hilbert transform (of class ) of . This is not true in the case . In fact, the Hilbert transform of an function need not converge in the mean to another function. Nevertheless, the Hilbert transform of does converge almost everywhere to a finite function such that \int_^\infty \frac \; \mathrmx < \infty This result is directly analogous to one by
Andrey Kolmogorov Andrey Nikolaevich Kolmogorov ( rus, Андре́й Никола́евич Колмого́ров, p=ɐnˈdrʲej nʲɪkɐˈlajɪvʲɪtɕ kəlmɐˈɡorəf, a=Ru-Andrey Nikolaevich Kolmogorov.ogg, 25 April 1903 – 20 October 1987) was a Soviet ...
for Hardy functions in the disc. Although usually called Titchmarsh's theorem, the result aggregates much work of others, including Hardy, Paley and Wiener (see Paley–Wiener theorem), as well as work by Riesz, Hille, and Tamarkin


Riemann–Hilbert problem

One form of the Riemann–Hilbert problem seeks to identify pairs of functions and such that is
holomorphic In mathematics, a holomorphic function is a complex-valued function of one or more complex variables that is complex differentiable in a neighbourhood of each point in a domain in complex coordinate space . The existence of a complex deri ...
on the upper half-plane and is holomorphic on the lower half-plane, such that for along the real axis, F_(x) - F_(x) = f(x) where is some given real-valued function of The left-hand side of this equation may be understood either as the difference of the limits of from the appropriate half-planes, or as a hyperfunction distribution. Two functions of this form are a solution of the Riemann–Hilbert problem. Formally, if solve the Riemann–Hilbert problem f(x) = F_(x) - F_(x) then the Hilbert transform of is given by H(f)(x) = -i \bigl( F_(x) + F_(x) \bigr) .


Hilbert transform on the circle

For a periodic function the circular Hilbert transform is defined: \tilde f(x) \triangleq \frac \operatorname \int_0^ f(t)\,\cot\left(\frac\right)\,\mathrmt The circular Hilbert transform is used in giving a characterization of Hardy space and in the study of the conjugate function in Fourier series. The kernel, \cot\left(\frac\right) is known as the Hilbert kernel since it was in this form the Hilbert transform was originally studied. The Hilbert kernel (for the circular Hilbert transform) can be obtained by making the Cauchy kernel periodic. More precisely, for \frac\cot\left(\frac\right) = \frac + \sum_^\infty \left(\frac + \frac \right) Many results about the circular Hilbert transform may be derived from the corresponding results for the Hilbert transform from this correspondence. Another more direct connection is provided by the Cayley transform , which carries the real line onto the circle and the upper half plane onto the unit disk. It induces a unitary map U\,f(x) = \frac \, f\left(C\left(x\right)\right) of onto L^2 (\mathbb). The operator carries the Hardy space onto the Hardy space H^2(\mathbb).


Hilbert transform in signal processing


Bedrosian's theorem

Bedrosian's theorem states that the Hilbert transform of the product of a low-pass and a high-pass signal with non-overlapping spectra is given by the product of the low-pass signal and the Hilbert transform of the high-pass signal, or \operatorname\left(f_\text(t)\cdot f_\text(t)\right) = f_\text(t)\cdot \operatorname\left(f_\text(t)\right), where and are the low- and high-pass signals respectively. A category of communication signals to which this applies is called the ''narrowband signal model.'' A member of that category is amplitude modulation of a high-frequency sinusoidal "carrier": u(t) = u_m(t) \cdot \cos(\omega t + \varphi), where is the narrow bandwidth "message" waveform, such as voice or music. Then by Bedrosian's theorem: \operatorname(u)(t) = \begin +u_m(t) \cdot \sin(\omega t + \varphi) & \text \omega > 0 \\ -u_m(t) \cdot \sin(\omega t + \varphi) & \text \omega < 0 \end


Analytic representation

A specific type of conjugate function is: u_a(t) \triangleq u(t) + i\cdot H(u)(t), known as the ''analytic representation'' of u(t). The name reflects its mathematical tractability, due largely to
Euler's formula Euler's formula, named after Leonhard Euler, is a mathematical formula in complex analysis that establishes the fundamental relationship between the trigonometric functions and the complex exponential function. Euler's formula states that, for ...
. Applying Bedrosian's theorem to the narrowband model, the analytic representation is: A Fourier transform property indicates that this complex
heterodyne A heterodyne is a signal frequency that is created by combining or mixing two other frequencies using a signal processing technique called ''heterodyning'', which was invented by Canadian inventor-engineer Reginald Fessenden. Heterodyning is us ...
operation can shift all the negative frequency components of above 0 Hz. In that case, the imaginary part of the result is a Hilbert transform of the real part. This is an indirect way to produce Hilbert transforms.


Angle (phase/frequency) modulation

The form: u(t) = A \cdot \cos(\omega t + \varphi_m(t)) is called angle modulation, which includes both
phase modulation Phase modulation (PM) is a signal modulation method for conditioning communication signals for transmission. It encodes a message signal as variations in the instantaneous phase of a carrier wave. Phase modulation is one of the two principal f ...
and
frequency modulation Frequency modulation (FM) is a signal modulation technique used in electronic communication, originally for transmitting messages with a radio wave. In frequency modulation a carrier wave is varied in its instantaneous frequency in proporti ...
. The
instantaneous frequency Instantaneous phase and frequency are important concepts in signal processing that occur in the context of the representation and analysis of time-varying functions. The instantaneous phase (also known as local phase or simply phase) of a ''compl ...
is  \omega + \varphi_m^\prime(t).  For sufficiently large , compared to \operatorname(u)(t) \approx A \cdot \sin(\omega t + \varphi_m(t)) and: u_a(t) \approx A \cdot e^.


Single sideband modulation (SSB)

When in  is also an analytic representation (of a message waveform), that is: u_m(t) = m(t) + i \cdot \widehat(t) the result is single-sideband modulation: u_a(t) = (m(t) + i \cdot \widehat(t)) \cdot e^ whose transmitted component is: \begin u(t) &= \operatorname\\\ &= m(t)\cdot \cos(\omega t + \varphi) - \widehat(t)\cdot \sin(\omega t + \varphi) \end


Causality

The function h(t) = 1/(\pi t) presents two causality-based challenges to practical implementation in a convolution (in addition to its undefined value at 0): * Its duration is infinite (technically ''infinite support''). Finite-length '' windowing'' reduces the effective frequency range of the transform; shorter windows result in greater losses at low and high frequencies. See also quadrature filter. * It is a non-causal filter. So a delayed version, h(t-\tau), is required. The corresponding output is subsequently delayed by \tau. When creating the imaginary part of an
analytic signal In mathematics and signal processing, an analytic signal is a complex-valued function that has no negative frequency components.  The real and imaginary parts of an analytic signal are real-valued functions related to each other by the Hilb ...
, the source (real part) must also be delayed by \tau.


Discrete Hilbert transform

For a discrete function, u with
discrete-time Fourier transform In mathematics, the discrete-time Fourier transform (DTFT) is a form of Fourier analysis that is applicable to a sequence of discrete values. The DTFT is often used to analyze samples of a continuous function. The term ''discrete-time'' refers ...
(DTFT), U(\omega), and discrete Hilbert transform \widehat u the DTFT of \widehat u /math> in the region is given by: :\operatorname (\widehat u) = U(\omega)\cdot (-i\cdot \sgn(\omega)). The inverse DTFT, using the
convolution theorem In mathematics, the convolution theorem states that under suitable conditions the Fourier transform of a convolution of two functions (or signals) is the product of their Fourier transforms. More generally, convolution in one domain (e.g., time dom ...
, is: : \begin \widehat u &= (U(\omega))\ *\ (-i\cdot \sgn(\omega))\\ &= u *\ \frac\int_^ (-i\cdot \sgn(\omega))\cdot e^ \,\mathrm\omega\\ &= u *\ \underbrace_, \end where :h \triangleq \ \begin 0, & \textn\text\\ \frac 2 & \textn\text \end which is an infinite impulse response (IIR). Practical considerations Method 1: Direct convolution of streaming u /math> data with an FIR approximation of h which we will designate by \tilde h Examples of truncated h /math> are shown in figures 1 and 2. Fig 1 has an odd number of anti-symmetric coefficients and is called Type III. This type inherently exhibits responses of zero magnitude at frequencies 0 and Nyquist, resulting in a bandpass filter shape. A Type IV design (even number of anti-symmetric coefficients) is shown in Fig 2. It has a highpass frequency response. Type III is the usual choice. for these reasons: * A typical (i.e. properly filtered and sampled) u /math> sequence has no useful components at the Nyquist frequency. * The Type IV impulse response requires a \tfrac sample shift in the h /math> sequence. That causes the zero-valued coefficients to become non-zero, as seen in ''Figure 2''. So a Type III design is potentially twice as efficient as Type IV. * The group delay of a Type III design is an integer number of samples, which facilitates aligning \widehat u /math> with u /math> to create an
analytic signal In mathematics and signal processing, an analytic signal is a complex-valued function that has no negative frequency components.  The real and imaginary parts of an analytic signal are real-valued functions related to each other by the Hilb ...
. The group delay of Type IV is halfway between two samples. The abrupt truncation of h /math> creates a rippling (Gibbs effect) of the flat frequency response. That can be mitigated by use of a window function to taper \tilde h /math> to zero. Method 2: Piecewise convolution. It is well known that direct convolution is computationally much more intensive than methods like overlap-save that give access to the efficiencies of the Fast Fourier transform via the convolution theorem. Specifically, the
discrete Fourier transform In mathematics, the discrete Fourier transform (DFT) converts a finite sequence of equally-spaced Sampling (signal processing), samples of a function (mathematics), function into a same-length sequence of equally-spaced samples of the discre ...
(DFT) of a segment of u /math> is multiplied pointwise with a DFT of the \tilde h /math> sequence. An inverse DFT is done on the product, and the transient artifacts at the leading and trailing edges of the segment are discarded. Over-lapping input segments prevent gaps in the output stream. An equivalent time domain description is that segments of length N (an arbitrary parameter) are convolved with the periodic function: :\tilde_N \triangleq \sum_^\infty \tilde - mN When the duration of non-zero values of \tilde /math> is M < N, the output sequence includes N-M+1 samples of \widehat u.  M-1 outputs are discarded from each block of N, and the input blocks are overlapped by that amount to prevent gaps. Method 3: Same as method 2, except the DFT of \tilde /math> is replaced by samples of the -i \operatorname(\omega) distribution (whose real and imaginary components are all just 0 or \pm 1.) That convolves u /math> with a
periodic summation In mathematics, any integrable function s(t) can be made into a periodic function s_P(t) with period ''P'' by summing the translations of the function s(t) by integer multiples of ''P''. This is called periodic summation: :s_P(t) = \sum_^\inf ...
: :h_N \triangleq \sum_^\infty h - mN for some arbitrary parameter, N. h /math> is not an FIR, so the edge effects extend throughout the entire transform. Deciding what to delete and the corresponding amount of overlap is an application-dependent design issue. Fig 3 depicts the difference between methods 2 and 3. Only half of the antisymmetric impulse response is shown, and only the non-zero coefficients. The blue graph corresponds to method 2 where h /math> is truncated by a rectangular window function, rather than tapered. It is generated by a Matlab function, hilb(65). Its transient effects are exactly known and readily discarded. The frequency response, which is determined by the function argument, is the only application-dependent design issue. The red graph is h_ corresponding to method 3. It is the inverse DFT of the -i \operatorname(\omega) distribution. Specifically, it is the function that is convolved with a segment of u /math> by the
MATLAB MATLAB (an abbreviation of "MATrix LABoratory") is a proprietary multi-paradigm programming language and numeric computing environment developed by MathWorks. MATLAB allows matrix manipulations, plotting of functions and data, implementat ...
function, hilbert(u,512). The real part of the output sequence is the original input sequence, so that the complex output is an analytic representation of u When the input is a segment of a pure cosine, the resulting convolution for two different values of N is depicted in Fig 4 (red and blue plots). Edge effects prevent the result from being a pure sine function (green plot). Since h_N /math> is not an FIR sequence, the theoretical extent of the effects is the entire output sequence. But the differences from a sine function diminish with distance from the edges. Parameter N is the output sequence length. If it exceeds the length of the input sequence, the input is modified by appending zero-valued elements. In most cases, that reduces the magnitude of the edge distortions. But their duration is dominated by the inherent rise and fall times of the h /math> impulse response. Fig 5 is an example of piecewise convolution, using both methods 2 (in blue) and 3 (red dots). A sine function is created by computing the Discrete Hilbert transform of a cosine function, which was processed in four overlapping segments, and pieced back together. As the FIR result (blue) shows, the distortions apparent in the IIR result (red) are not caused by the difference between h /math> and h_N /math> (green and red in Fig 3). The fact that h_N /math> is tapered (''windowed'') is actually helpful in this context. The real problem is that it's not windowed enough. Effectively, M=N, whereas the overlap-save method needs M < N.


Number-theoretic Hilbert transform

The number theoretic Hilbert transform is an extension of the discrete Hilbert transform to integers modulo an appropriate prime number. In this it follows the generalization of
discrete Fourier transform In mathematics, the discrete Fourier transform (DFT) converts a finite sequence of equally-spaced Sampling (signal processing), samples of a function (mathematics), function into a same-length sequence of equally-spaced samples of the discre ...
to number theoretic transforms. The number theoretic Hilbert transform can be used to generate sets of orthogonal discrete sequences.


See also

*
Analytic signal In mathematics and signal processing, an analytic signal is a complex-valued function that has no negative frequency components.  The real and imaginary parts of an analytic signal are real-valued functions related to each other by the Hilb ...
* Harmonic conjugate * Hilbert spectroscopy * Hilbert transform in the complex plane * Hilbert–Huang transform * Kramers–Kronig relations * Riesz transform *
Single-sideband modulation In radio communications, single-sideband modulation (SSB) or single-sideband suppressed-carrier modulation (SSB-SC) is a type of signal modulation used to transmit information, such as an audio signal, by radio waves. A refinement of amplitu ...
* Singular integral operators of convolution type


Notes


Page citations


References

* * * * * * * * * * * * * * * * * * * ; also http://www.fuchs-braun.com/media/d9140c7b3d5004fbffff8007fffffff0.pdf * * * * * * * * * * * * * * * * * ; also https://www.dsprelated.com/freebooks/mdft/Analytic_Signals_Hilbert_Transform.html * * * * * *


Further reading

* * * * *


External links


Derivation of the boundedness of the Hilbert transform


— Contains a table of transforms * * an entry level introduction to Hilbert transformation. {{DEFAULTSORT:Hilbert Transform Harmonic functions Integral transforms Signal processing Singular integrals Schwartz distributions