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Fourier transforms |
Continuous Fourier transform |
The Fourier
transform, named for Joseph Fourier,
is a mathematical transform with many applications in physics and engineering.
Very commonly, it expresses a mathematical function of
time as a function of frequency, known as its frequency spectrum. The Fourier inversion theorem details this relationship. For
instance, the transform of a musical chord made up of pure notes (without overtones) expressed as
amplitude as a function of time, is a mathematical representation of the
amplitudes and phases of the individual notes that make it
up. The function of time is often called the time domain representation, and the frequency
spectrum the frequency domain representation. The inverse Fourier
transform expresses a frequency domain function in the time domain. Each value
of the function is usually expressed as a complex number (called complex amplitude) that can be
interpreted as a magnitude and a phase component. The term "Fourier
transform" refers to both the transform operation and to the
complex-valued function it produces.
In the case of a periodic
function, such as a continuous, but not necessarily sinusoidal,
musical tone, the Fourier transform can be simplified to the calculation of a
discrete set of complex amplitudes, called Fourier series coefficients. Also, when a time-domain
function is sampled to
facilitate storage or computer-processing, it is still possible to recreate a
version of the original Fourier transform according to the Poisson summation formula, also known as discrete-time Fourier transform. These
topics are addressed in separate articles. For an overview of those and other
related operations, refer to Fourier analysis or List of Fourier-related transforms.
There are several common
conventions for
defining the Fourier transform ƒ̂ of an integrable function ƒ: R → C (Kaiser 1994,
p. 29), (Rahman 2011,
p. 11). This article will use the definition:
, for every real number ξ.
When the independent variable x represents time (with SI unit of seconds), the transform
variable ξ represents frequency (in hertz). Under suitable
conditions, ƒ can be reconstructed from ƒ̂ by the inverse transform:
for every real number x.
The statement that ƒ can be
reconstructed from ƒ̂ is known as the Fourier integral theorem, and was first
introduced in Fourier's Analytical Theory of Heat (Fourier 1822,
p. 525), (Fourier &
Freeman 1878, p. 408), although what would be considered a
proof by modern standards was not given until much later (Titchmarsh 1948,
p. 1). The functions ƒ and ƒ̂ often are referred to as a Fourier integral pair or Fourier
transform pair (Rahman 2011,
p. 10).
For other common conventions and
notations, including using the angular
frequency ω instead of the frequency ξ,
see Other conventions and Other notations below. The Fourier
transform on Euclidean space is
treated separately, in which the variable x often represents position and ξ
momentum.
See also: Fourier analysis
The motivation for the Fourier
transform comes from the study of Fourier series.
In the study of Fourier series, complicated but periodic functions are written
as the sum of simple waves mathematically represented by sines and cosines. The Fourier
transform is an extension of the Fourier series that results when the period of
the represented function is lengthened and allowed to approach infinity.(Taneja 2008,
p. 192)
Due to the properties of sine and
cosine, it is possible to recover the amplitude of each wave in a Fourier
series using an integral. In many cases it is desirable to use Euler's formula,
which states that e2πiθ=
cos(2πθ) + i sin(2πθ), to write Fourier
series in terms of the basic waves e2πiθ.
This has the advantage of simplifying many of the formulas involved, and
provides a formulation for Fourier series that more closely resembles the
definition followed in this article. Re-writing sines and cosines as complex exponentialsmakes it necessary for
the Fourier coefficients to be complex valued. The usual interpretation of this
complex number is that it gives both the amplitude (or size) of the wave present in the
function and the phase (or the initial angle) of the wave.
These complex exponentials sometimes contain negative "frequencies".
If θ is measured in seconds, then the waves e2πiθ and e−2πiθ both complete one cycle per second,
but they represent different frequencies in the Fourier transform. Hence,
frequency no longer measures the number of cycles per unit time, but is still
closely related.
There is a close connection between the
definition of Fourier series and the Fourier transform for functions ƒ which
are zero outside of an interval. For such a function, we can calculate its
Fourier series on any interval that includes the points where ƒ is not
identically zero. The Fourier transform is also defined for such a function. As
we increase the length of the interval on which we calculate the Fourier
series, then the Fourier series coefficients begin to look like the Fourier
transform and the sum of the Fourier series of ƒ begins to look like the
inverse Fourier transform. To explain this more precisely, suppose that T is large enough so that the interval
[−T/2,T/2] contains the interval on which ƒ is not
identically zero. Then the n-th
series coefficient cn is given by:
Comparing this to the definition of the
Fourier transform, it follows that cn = ƒ̂(n/T) since ƒ(x)
is zero outside [−T/2,T/2]. Thus the Fourier coefficients
are just the values of the Fourier transform sampled on a grid of width 1/T.
As T increases the Fourier coefficients
more closely represent the Fourier transform of the function.
Under appropriate conditions, the sum
of the Fourier series of ƒ will equal the function ƒ. In other words, ƒ can be
written:
where the last sum is simply the first
sum rewritten using the definitions ξn = n/T,
and Δξ = (n +
1)/T − n/T = 1/T.
This second sum is a Riemann sum,
and so by letting T → ∞
it will converge to the integral for the inverse Fourier transform given in the
definition section. Under suitable conditions this argument may be made precise
(Stein &
Shakarchi 2003).
In the study of Fourier series the
numbers cn could be thought of as the
"amount" of the wave present in the Fourier series of ƒ. Similarly,
as seen above, the Fourier transform can be thought of as a function that
measures how much of each individual frequency is present in our function ƒ,
and we can recombine these waves by using an integral (or "continuous
sum") to reproduce the original function.
The following images provide a visual
illustration of how the Fourier transform measures whether a frequency is
present in a particular function. The function depicted ƒ(t) =
cos(6πt) e-πt2 oscillates at 3 hertz (if t measures seconds) and tends quickly to
0. (The second factor in this equation is an envelope
function that shapes
the continuous sinusoid into a short pulse. Its general form is a Gaussian
function). This function was specially chosen to have a real Fourier
transform which can easily be plotted. The first image contains its graph. In
order to calculate ƒ̂(3) we must integrate e−2πi(3t)ƒ(t).
The second image shows the plot of the real and imaginary parts of this
function. The real part of the integrand is almost always positive, because
when ƒ(t) is negative, the real part of e−2πi(3t) is negative as well. Because they
oscillate at the same rate, when ƒ(t) is positive, so is the real part
of e−2πi(3t). The result is that when you
integrate the real part of the integrand you get a relatively large number (in
this case 0.5). On the other hand, when you try to measure a frequency that is
not present, as in the case when we look at ƒ̂(5), the integrand
oscillates enough so that the integral is very small. The general situation may
be a bit more complicated than this, but this in spirit is how the Fourier
transform measures how much of an individual frequency is present in a function
ƒ(t).
Original function
showing oscillation 3 hertz.
Real and imaginary
parts of integrand for Fourier transform at 3 hertz
Real and imaginary
parts of integrand for Fourier transform at 5 hertz
Fourier transform
with 3 and 5 hertz labeled.
Here we assume ƒ(x), g(x) and h(x) are integrable functions, are Lebesgue-measurable on the real line, and satisfy:
We denote the Fourier transforms of
these functions by ƒ̂(ξ), and
respectively.
The Fourier transform has the following
basic properties: (Pinsky 2002).
Linearity
For any complex numbers a and b,
if then
Translation
For any real number x0, if then
Modulation
For any real number ξ0 if then
Scaling
For a non-zero real number a, if h(x) = ƒ(ax),
then The case a = -1 leads to the time-reversal property, which states: if
then
If then
In particular, if ƒ is
real, then one has the reality
condition
And if ƒ is purely
imaginary, then
The rectangular function is Lebesgue integrable.
The sinc function,
which is the Fourier transform of the rectangular function, is bounded and
continuous, but not Lebesgue integrable.
The Fourier transform may be defined in
some cases for non-integrable functions, but the Fourier transforms of
integrable functions have several strong properties.
The Fourier transform, ƒ̂, of any
integrable function ƒ is uniformly continuous and (Katznelson 1976).
By theRiemann–Lebesgue lemma (Stein &
Weiss 1971),
However, ƒ̂ need not be
integrable. For example, the Fourier transform of the rectangular function, which is integrable,
is the sinc function,
which is not Lebesgue integrable, because its improper
integrals behave
analogously to the alternating harmonic series, in converging
to a sum without being absolutely convergent.
It is not generally possible to write
the inverse transform as a Lebesgue
integral. However, when both ƒ and ƒ̂ are integrable, the
inverse equality
holds almost
everywhere. That is, the Fourier transform is injective on L1(R).
(But if ƒ is continuous, then equality holds for every x.)
Let ƒ(x) and g(x) be integrable, and
let ƒ̂(ξ) and be
their Fourier transforms. If ƒ(x) and g(x)
are also square-integrable,
then we have Parseval's theorem (Rudin 1987,
p. 187):
where the bar denotes complex conjugation.
The Plancherel theorem, which is equivalent to Parseval's theorem, states (Rudin 1987,
p. 186):
The Plancherel theorem makes it
possible to extend the Fourier transform, by a continuity argument, to a unitary operator on L2(R).
On L1(R)∩L2(R),
this extension agrees with original Fourier transform defined on L1(R), thus
enlarging the domain of the Fourier transform to L1(R) + L2(R). The
Plancherel theorem has the interpretation in the sciences that the Fourier
transform preserves the energy of the original quantity. Depending on the
author either of these theorems might be referred to as the Plancherel theorem
or as Parseval's theorem.
See Pontryagin duality for a general formulation of this
concept in the context of locally compact abelian groups.
Main article: Poisson
summation formula
The Poisson summation formula (PSF) is
an equation that relates the Fourier series coefficients of the periodic summation of a function to values of the
function's continuous Fourier transform. It has a variety of useful forms that
are derived from the basic one by application of the Fourier transform's
scaling and time-shifting properties. The frequency-domain dual of the standard
PSF is also called discrete-time Fourier transform, which
leads directly to:
§
a popular, graphical, frequency-domain
representation of the phenomenon of aliasing, and
§
a proof of the Nyquist-Shannon sampling theorem.
Main article: Convolution theorem
The Fourier transform translates
between convolution and multiplication of functions. If ƒ(x)
and g(x) are
integrable functions with Fourier transforms ƒ̂(ξ) and respectively,
then the Fourier transform of the convolution is given by the product of the
Fourier transforms ƒ̂(ξ) and
(under
other conventions for the definition of the Fourier transform a constant factor
may appear).
This means that if:
where ∗ denotes the convolution
operation, then:
In linear time
invariant (LTI) system theory, it is common to interpret g(x) as the impulse response of an LTI system with input ƒ(x)
and output h(x),
since substituting the unit impulse for ƒ(x) yields h(x) = g(x). In this case, represents
the frequency response of the system.
Conversely, if ƒ(x) can be
decomposed as the product of two square integrable functions p(x) and q(x), then the Fourier
transform of ƒ(x) is given by the convolution of the respective Fourier
transforms and
.
Main article: Cross-correlation
In an analogous manner, it can be shown
that if h(x) is the cross-correlation of ƒ(x) and g(x):
then the Fourier transform of h(x) is:
As a special case, the autocorrelation of function ƒ(x) is:
for which
One important choice of an orthonormal
basis for L2(R) is given by the Hermite functions
where are the "probabilist's" Hermite polynomials, defined by
Under this convention for the Fourier
transform, we have that
In other words, the Hermite functions
form a complete orthonormal system of eigenfunctions for the Fourier transform on L2(R) (Pinsky 2002).
However, this choice of eigenfunctions is not unique. There are only four
different eigenvalues of the Fourier transform (±1 and ±i)
and any linear combination of eigenfunctions with the same eigenvalue gives
another eigenfunction. As a consequence of this, it is possible to decompose L2(R) as a
direct sum of four spaces H0, H1, H2, and H3 where the Fourier transform acts onHek simply by multiplication by ik. This approach to
define the Fourier transform is due to N. Wiener (Duoandikoetxea
2001). Among other properties, Hermite functions decrease
exponentially fast in both frequency and time domains and they are used to
define a generalization of the Fourier transform, namely the fractional Fourier transform used in time-frequency analysis (Boashash 2003).
The Fourier transform can be in any
arbitrary number of dimensions n.
As with the one-dimensional case, there are many conventions. For an integrable
function ƒ(x), this article takes the definition:
where x and ξ are n-dimensional vectors, and x · ξ is the dot product of the vectors. The dot product is
sometimes written as .
All of the basic properties listed
above hold for the n-dimensional
Fourier transform, as do Plancherel's and Parseval's theorem. When the function
is integrable, the Fourier transform is still uniformly continuous and the Riemann–Lebesgue lemma holds. (Stein &
Weiss 1971)
For more details on this topic, see Uncertainty principle.
Generally speaking, the more
concentrated ƒ(x) is, the more spread out its Fourier transform
ƒ̂(ξ) must be. In particular, the scaling property of the Fourier
transform may be seen as saying: if we "squeeze" a function in x, its Fourier transform
"stretches out" in ξ. It is not possible to arbitrarily
concentrate both a function and its Fourier transform.
The trade-off between the compaction of
a function and its Fourier transform can be formalized in the form of an uncertainty principle by viewing a function and its Fourier
transform as conjugate variables with respect to the symplectic form on the time–frequency domain: from the point of
view of the linear canonical transformation, the
Fourier transform is rotation by 90° in the time–frequency domain, and
preserves the symplectic form.
Suppose ƒ(x) is an integrable
and square-integrable function. Without loss of generality,
assume that ƒ(x) is normalized:
It follows from the Plancherel theorem that ƒ̂(ξ) is also
normalized.
The spread around x = 0 may be measured by
the dispersion about zero (Pinsky 2002,
p. 131) defined by
In probability terms, this is the second moment of |ƒ(x)|2 about zero.
The Uncertainty principle states that,
if ƒ(x) is absolutely continuous and the functions x·ƒ(x) and ƒ′(x)
are square integrable, then
(Pinsky 2002).
The equality is attained only in the
case (hence
)
where σ > 0 is arbitrary and C1 is such that ƒ is L2–normalized (Pinsky 2002).
In other words, where ƒ is a (normalized) Gaussian
function with variance
σ2, centered at zero, and its Fourier transform is a Gaussian
function with variance 1/σ2.
In fact, this inequality implies that:
for any in R
(Stein &
Shakarchi 2003, p. 158).
In quantum
mechanics, the momentum and position wave functions are Fourier transform pairs, to within
a factor of Planck's constant. With this constant
properly taken into account, the inequality above becomes the statement of the Heisenberg uncertainty principle (Stein &
Shakarchi 2003, p. 158).
A stronger uncertainty principle is the Hirschman uncertainty principle which is expressed as:
where H(p) is the differential entropy of the probability density function p(x):
where the logarithms may be in any base
which is consistent. The equality is attained for a Gaussian, as in the
previous case.
Let the set of homogeneous harmonic polynomials of degree k on Rn be denoted by Ak. The set Ak consists of the solid spherical harmonics of degree k. The solid spherical
harmonics play a similar role in higher dimensions to the Hermite polynomials
in dimension one. Specifically, if ƒ(x) = e−π|x|2P(x)
for some P(x) in Ak, then . Let the set Hk be the closure in L2(Rn)
of linear combinations of functions of the form ƒ(|x|)P(x)
where P(x) is in Ak. The space L2(Rn)
is then a direct sum of the spaces Hk and the Fourier transform maps each
space Hk to itself and is possible to
characterize the action of the Fourier transform on each space Hk (Stein &
Weiss 1971). Let ƒ(x) = ƒ0(|x|)P(x)
(with P(x) in Ak), then
where
Here J(n + 2k − 2)/2 denotes the Bessel function of the first kind with order (n + 2k − 2)/2.
When k = 0 this
gives a useful formula for the Fourier transform of a radial function (Grafakos 2004).
In higher dimensions it becomes
interesting to study restriction
problems for the Fourier
transform. The Fourier transform of an integrable function is continuous and
the restriction of this function to any set is defined. But for a
square-integrable function the Fourier transform could be a general class of square integrable functions. As
such, the restriction of the Fourier transform of an L2(Rn)
function cannot be defined on sets of measure 0. It is still an active area of
study to understand restriction problems in Lp for 1 < p < 2.
Surprisingly, it is possible in some cases to define the restriction of a
Fourier transform to a set S,
provided S has non-zero curvature. The case when S is the unit sphere in Rn is of particular interest. In this
case the Tomas-Stein restriction
theorem states that the restriction of the Fourier transform to the unit sphere
in Rn is a bounded operator on Lpprovided 1 ≤ p ≤ (2n +
2) / (n + 3).
One notable difference between the
Fourier transform in 1 dimension versus higher dimensions concerns the partial
sum operator. Consider an increasing collection of measurable sets ER indexed by R ∈ (0,∞):
such as balls of radius R centered at the origin, or cubes of
side 2R. For a given integrable function ƒ, consider the function ƒR defined by:
Suppose in addition that ƒ ∈ Lp(Rn). For n = 1 and 1 < p < ∞,
if one takes ER = (−R, R), then ƒR converges to ƒ in Lp as R tends to infinity, by the boundedness
of the Hilbert
transform. Naively one may hope the same holds true for n > 1. In the case that ER is taken to be a cube with side length R, then convergence still
holds. Another natural candidate is the Euclidean ball ER =
{ξ : |ξ| < R}. In order for this partial sum
operator to converge, it is necessary that the multiplier for the unit ball be
bounded in Lp(Rn).
Forn ≥ 2 it is a celebrated theorem of Charles
Fefferman that the
multiplier for the unit ball is never bounded unless p = 2 (Duoandikoetxea
2001). In fact, when p ≠ 2, this shows that not only may ƒR fail to converge to ƒ in Lp, but for some
functions ƒ ∈ Lp(Rn), ƒR is not even an element of Lp.
The definition of the Fourier transform
by the integral formula
is valid for Lebesgue integrable
functions ƒ; that is, ƒ ∈ L1(R). The image of L1 a subset of the space C0(R) of
continuous functions that tend to zero at infinity (the Riemann–Lebesgue lemma), although it is
not the entire space. Indeed, there is no simple characterization of the image.
It is possible to extend the definition
of the Fourier transform to other spaces of functions. Since compactly
supported smooth functions are integrable and dense in L2(R), thePlancherel theorem allows us to extend the definition of
the Fourier transform to general functions in L2(R)
by continuity arguments. Further : L2(R)
→ L2(R)
is a unitary operator(Stein &
Weiss 1971, Thm. 2.3). In particular, the image of L2(R) is
itself under the Fourier transform. The Fourier transform in L2(R) is no
longer given by an ordinary Lebesgue integral, although it can be computed by
an improper
integral, here meaning that for an L2 function ƒ,
where the limit is taken in the L2 sense. Many of the properties of the
Fourier transform in L1 carry over to L2, by a suitable
limiting argument.
The definition of the Fourier transform
can be extended to functions in Lp(R)
for 1 ≤ p ≤ 2 by decomposing such
functions into a fat tail part in L2 plus a fat body part in L1. In each of these
spaces, the Fourier transform of a function in Lp(R) is in Lq(R), where is the Hölder conjugate of p. by the Hausdorff–Young inequality. However,
except for p = 2, the image is not easily
characterized. Further extensions become more technical. The Fourier transform
of functions in Lp for the range 2 < p < ∞ requires the study of
distributions (Katznelson 1976).
In fact, it can be shown that there are functions in Lp with p>2
so that the Fourier transform is not defined as a function (Stein &
Weiss 1971).
Main article: Tempered distributions
One might consider enlarging the domain
of the Fourier transform from L1+L2 by considering generalized functions, or distributions. A
distribution on R is a continuous linear functional on
the space Cc(R)
of compactly supported smooth functions, equipped with a suitable topology. The
strategy is then to consider the action of the Fourier transform onCc(R)
and pass to distributions by duality. The obstruction to do this is that the
Fourier transform does not map Cc(R)
to Cc(R).
In fact the Fourier transform of an element in Cc(R) can not
vanish on an open set; see the above discussion on the uncertainty principle.
The right space here is the slightly larger Schwartz
functions. The Fourier transform is an automorphism on the Schwartz
space, as a topological vector space, and thus induces an automorphism on its
dual, the space of tempered distributions(Stein &
Weiss 1971). The tempered distribution include all the integrable
functions mentioned above, as well as well-behaved functions of polynomial
growth and distributions of compact support.
For the definition of the Fourier
transform of a tempered distribution, let f and g be integrable functions, and let and
be their Fourier transforms
respectively. Then the Fourier transform obeys the following multiplication
formula (Stein &
Weiss 1971),
Every integrable function ƒ defines
(induces) a distribution Tƒ by the relation
for
all Schwartz functions φ.
So it makes sense to define Fourier
transform of Tƒ by
for
all Schwartz functions φ.
Extending this to all tempered
distributions T gives the general definition of the
Fourier transform.
Distributions can be differentiated and
the above mentioned compatibility of the Fourier transform with differentiation
and convolution remains true for tempered distributions.
The Fourier transform of a finite Borel
measure μ on Rn is given by (Pinsky 2002,
p. 256):
This transform continues to enjoy many
of the properties of the Fourier transform of integrable functions. One notable
difference is that the Riemann–Lebesgue lemma fails for measures (Katznelson 1976).
In the case that dμ= ƒ(x) dx,
then the formula above reduces to the usual definition for the Fourier
transform of ƒ. In the case that μ is the probability distribution
associated to a random variable X,
the Fourier-Stieltjes transform is closely related to the characteristic function,
but the typical conventions in probability theory takeeix·ξ instead of e−2πix·ξ (Pinsky 2002).
In the case when the distribution has a probability density function this definition reduces to the Fourier
transform applied to the probability density function, again with a different
choice of constants.
The Fourier transform may be used to
give a characterization of continuous measures. Bochner's theorem characterizes which functions may
arise as the Fourier–Stieltjes transform of a measure (Katznelson 1976).
Furthermore, the Dirac delta function is not a function but it is a finite Borel measure.
Its Fourier transform is a constant function (whose specific value depends upon
the form of the Fourier transform used).
Main article: Pontryagin duality
The Fourier transform may be
generalized to any locally compact abelian group. A locally compact abelian
group is an abelian group which is at the same time a locally compactHausdorff
topological space so
that the group operation is continuous. If G is a locally compact abelian group, it
has a translation invariant measure μ, called Haar measure.
For a locally compact abelian group G,
the set of irreducible, i.e. one-dimensional, unitary representations are
called its characters.
With its natural group structure and the topology of pointwise convergence, the
set of characters is itself a locally compact abelian
group, called the Pontryagin
dual of G. For a function ƒ in L1(G), its
Fourier transform is defined by (Katznelson 1976):
The Riemann-Lebesgue lemma holds in
this case; is
a function vanishing at infinity on
.
Main article: Gelfand representation
The Fourier transform is also a special
case of Gelfand
transform. In this particular context, it is closely related to the
Pontryagin duality map defined above.
Given an abelian locally compact Hausdorff topological
group G, as
before we consider space L1(G),
defined using a Haar measure. With convolution as multiplication, L1(G) is an
abelian Banach algebra.
It also has an involution * given by
Taking the completion with respect to
the largest possibly C*-norm gives its enveloping C*-algebra,
called the group C*-algebra C*(G) of G. (Any C*-norm on L1(G) is
bounded by the L1 norm, therefore their supremum
exists.)
Given any abelian C*-algebra A, the Gelfand transform gives
an isomorphism between A and C0(A^),
where A^ is the
multiplicative linear functionals, i.e. one-dimensional representations, on A with the weak-* topology. The map is
simply given by
It turns out that the multiplicative
linear functionals of C*(G), after suitable identification, are exactly the
characters of G, and the
Gelfand transform, when restricted to the dense subset L1(G) is the
Fourier-Pontryagin transform.
The Fourier transform can also be
defined for functions on a non-abelian group, provided that the group is compact.
Removing the assumption that the underlying group is abelian, irreducible
unitary representations need not always be one-dimensional. This means the
Fourier transform on a non-abelian group takes values as Hilbert space
operators (Hewitt &
Ross 1970, Chapter 8). The Fourier transform on compact groups is a
major tool in representation theory (Knapp 2001)
and non-commutative harmonic analysis.
Let G be a compact Hausdorff topological
group. Let Σ denote the collection of all isomorphism classes
of finite-dimensional irreducible unitary representations, along with a
definite choice of representation U(σ) on the Hilbert space Hσ of finite dimension dσ for each σ ∈ Σ. If μ is
a finite Borel measure on G,
then the Fourier–Stieltjes transform of μ is the operator on Hσ defined by
where is the complex-conjugate
representation of U(σ) acting on Hσ. If μ
is absolutely continuous with respect to the left-invariant
probability measure λ
on G, represented as
for some ƒ ∈ L1(λ), one
identifies the Fourier transform of ƒ with the Fourier–Stieltjes transform of
μ.
The mapping defines
an isomorphism between the Banach space M(G) of finite Borel
measures (see rca space)
and a closed subspace of the Banach space C∞(Σ)
consisting of all sequences E = (Eσ) indexed
by Σ of (bounded) linear operators Eσ: Hσ → Hσ for which the norm
is finite. The "convolution theorem" asserts that,
furthermore, this isomorphism of Banach spaces is in fact an isometric
isomorphism of C* algebras into a subspace of C∞(Σ).
Multiplication on M(G)
is given by convolution of measures and the involution *
defined by
and C∞(Σ)
has a natural C*-algebra structure as Hilbert space operators.
The Peter-Weyl theorem holds, and a version of the Fourier
inversion formula (Plancherel's theorem) follows: if ƒ ∈ L2(G),
then
where the summation is understood as
convergent in the L2 sense.
The generalization of the Fourier
transform to the noncommutative situation has also in part contributed to the
development of noncommutative geometry.[citation
needed] In
this context, a categorical generalization of the Fourier transform to
noncommutative groups is Tannaka-Krein duality, which replaces the
group of characters with the category of representations. However, this loses
the connection with harmonic functions.
In signal
processing terms, a
function (of time) is a representation of a signal with perfect time resolution, but no frequency information, while
the Fourier transform has perfectfrequency resolution, but no time information: the magnitude
of the Fourier transform at a point is how much frequency content there is, but
location is only given by phase (argument of the Fourier transform at a point),
and standing waves are not localized in time – a sine wave continues out to
infinity, without decaying. This limits the usefulness of the Fourier transform
for analyzing signals that are localized in time, notably transients, or any signal of finite
extent.
As alternatives to the Fourier
transform, in time-frequency analysis, one uses
time-frequency transforms or time-frequency distributions to represent signals
in a form that has some time information and some frequency information – by
the uncertainty principle, there is a trade-off between these. These can be
generalizations of the Fourier transform, such as the short-time Fourier transform or fractional Fourier transform, or other
functions to represent signals, as in wavelet transforms and chirplet transforms, with the wavelet
analog of the (continuous) Fourier transform being the continuous wavelet transform. (Boashash 2003).
Fourier transforms and the closely
related Laplace
transforms are widely
used in solving differential equations. The Fourier
transform is compatible with differentiation in the following sense: if ƒ(x)
is a differentiable function with Fourier transform ƒ̂(ξ), then the
Fourier transform of its derivative is given by 2πiξ ƒ̂(ξ).
This can be used to transform differential equations into algebraic equations.
This technique only applies to problems whose domain is the whole set of real
numbers. By extending the Fourier transform to functions of several variables partial differential equations with domain Rn can also be translated into algebraic
equations.
Main article: Fourier transform spectroscopy
The Fourier transform is also used in nuclear magnetic resonance (NMR) and in other kinds of spectroscopy,
e.g. infrared (FTIR). In NMR an
exponentially shaped free induction decay (FID) signal is acquired in the time
domain and Fourier-transformed to a Lorentzian line-shape in the frequency
domain. The Fourier transform is also used in magnetic resonance imaging (MRI) and mass
spectrometry.
Other common notations for
ƒ̂(ξ) include:
Denoting the Fourier transform by a
capital letter corresponding to the letter of function being transformed (such
as ƒ(x) and F(ξ))
is especially common in the sciences and engineering. In electronics, the omega
(ω) is often used instead of ξ due to its interpretation as angular
frequency, sometimes it is written as F(jω),
where j is the imaginary unit,
to indicate its relationship with the Laplace
transform, and sometimes it is written informally as F(2πƒ) in order to use
ordinary frequency.
The interpretation of the complex
function ƒ̂(ξ) may be aided by expressing it in polar coordinate form
in terms of the two real functions A(ξ) and φ(ξ)
where:
is the amplitude and
is the phase (see arg function).
Then the inverse transform can be
written:
which is a recombination of all the frequency components of ƒ(x). Each component is a
complex sinusoid of the form e2πixξ
whose amplitude is A(ξ)
and whose initial phase angle (at x = 0)
is φ(ξ).
The Fourier transform may be thought of
as a mapping on function spaces. This mapping is here denoted and
is
used to denote the Fourier transform of the function ƒ. This mapping is linear,
which means that
can
also be seen as a linear transformation on the function space and implies that
the standard notation in linear algebra of applying a linear transformation to
a vector (here the function ƒ) can be used to write
instead
of
. Since the result of applying the Fourier
transform is again a function, we can be interested in the value of this
function evaluated at the value ξ for its variable, and this is denoted
either as
or
as
. Notice that in the former case,
it is implicitly understood that
is
applied first to ƒ and then the resulting function is evaluated at ξ, not
the other way around.
In mathematics and various applied
sciences it is often necessary to distinguish between a function ƒ and the
value of ƒ when its variable equals x,
denoted ƒ(x). This means that a notation like formally
can be interpreted as the Fourier transform of the values of ƒ at x. Despite this flaw, the
previous notation appears frequently, often when a particular function or a
function of a particular variable is to be transformed.
For example, is sometimes used to express that the
Fourier transform of a rectangular function is a sinc function,
or is
used to express the shift property of the Fourier transform.
Notice, that the last example is only
correct under the assumption that the transformed function is a function of x, not of x0.
The Fourier transform can also be
written in terms of angular
frequency:
ω = 2πξ whose units are radians per second.
The substitution ξ =
ω/(2π) into the formulas above produces this convention:
Under this convention, the inverse
transform becomes:
Unlike the convention followed in this
article, when the Fourier transform is defined this way, it is no longer a unitary transformation on L2(Rn).
There is also less symmetry between the formulas for the Fourier transform and
its inverse.
Another convention is to split the
factor of (2π)n evenly
between the Fourier transform and its inverse, which leads to definitions:
Under this convention, the Fourier
transform is again a unitary transformation on L2(Rn).
It also restores the symmetry between the Fourier transform and its inverse.
Variations of all three conventions can
be created by conjugating the complex-exponential kernel of both the forward and the reverse
transform. The signs must be opposites. Other than that, the choice is (again)
a matter of convention.
Summary of
popular forms of the Fourier transform |
||
ordinary frequency ξ (hertz) |
unitary |
|
angular
frequency ω (rad/s) |
non-unitary |
|
unitary |
|
As discussed above, the characteristic function of a random variable is the same as
the Fourier–Stieltjes transform of its distribution measure, but in
this context it is typical to take a different convention for the constants.
Typically characteristic function is defined .
As in the case of the "non-unitary
angular frequency" convention above, there is no factor of 2π appearing in either of the integral,
or in the exponential. Unlike any of the conventions appearing above, this
convention takes the opposite sign in the exponential.
The following tables record some closed
form Fourier transforms. For functions ƒ(x), g(x) and h(x) denote their
Fourier transforms by ƒ̂, ,
and
respectively. Only the three most
common conventions are included. It may be useful to notice that entry 105
gives a relationship between the Fourier transform of a function and the
original function, which can be seen as relating the Fourier transform and its
inverse.
The Fourier transforms in this table
may be found in Erdélyi (1954)
or Kammler (2000,
appendix).
|
Function |
Fourier transform |
Fourier transform |
Fourier transform |
Remarks |
|
|
|
|
|
Definition |
101 |
|
|
|
|
Linearity |
102 |
|
|
|
|
Shift in time
domain |
103 |
|
|
|
|
Shift in frequency domain, dual of 102 |
104 |
|
|
|
|
Scaling in the time domain. If |
105 |
|
|
|
|
Duality. Here |
106 |
|
|
|
|
|
107 |
|
|
|
|
This is the dual of 106 |
108 |
|
|
|
|
The notation |
109 |
|
|
|
|
This is the dual of 108 |
110 |
For |
|
|
|
Hermitian symmetry. |
111 |
For |
|
|
||
112 |
For |
|
|
The Fourier transforms in this table
may be found in (Campbell &
Foster 1948), (Erdélyi 1954),
or the appendix of (Kammler 2000).
|
Function |
Fourier transform |
Fourier transform |
Fourier transform |
Remarks |
|
|
|
|
|
|
201 |
|
|
|
|
The rectangular
pulse and the normalized sinc function, here
defined as sinc(x) = sin(πx)/(πx) |
202 |
|
|
|
|
Dual of rule 201. The rectangular
function is an
ideal low-pass filter, and the sinc function is the non-causal impulse response
of such a filter. |
203 |
|
|
|
|
The function tri(x) is the triangular
function |
204 |
|
|
|
|
Dual of rule
203. |
205 |
|
|
|
|
The function u(x)
is the Heaviside
unit step function and a>0. |
206 |
|
|
|
|
This shows that, for the unitary Fourier transforms,
theGaussian
function exp(−αx2) is
its own Fourier transform for some choice of α. For this to be integrable we must have
Re(α)>0. |
207 |
|
|
|
|
For a>0.
That is, the Fourier transform of a decayingexponential
function is a Lorentzian
function. |
208 |
|
|
|
|
Hyperbolic
secant is its
own Fourier transform |
209 |
|
|
|
|
|
The Fourier transforms in this table
may be found in (Erdélyi 1954)
or the appendix of (Kammler 2000).
|
Function |
Fourier transform |
Fourier transform |
Fourier transform |
Remarks |
|
|
|
|
|
|
|
|
301 |
|
|
|
|
The distribution δ(ξ) denotes the Dirac delta
function. |
|
302 |
|
|
|
|
Dual of rule
301. |
|
303 |
|
|
|
|
This follows
from 103 and 301. |
|
304 |
|
|
|
|
This follows from rules 101 and 303 using Euler's
formula: |
|
305 |
|
|
|
|
This follows from 101 and 303 using |
|
306 |
|
|
|
|
|
|
307 |
|
|
|
|
|
|
308 |
|
|
|
|
Here, n is a natural numberand |
|
309 |
|
|
|
|
Here sgn(ξ) is the sign function. Note
that 1/x is not a
distribution. It is necessary to use theCauchy
principal value when
testing against Schwartz functions. This rule is useful in studying the Hilbert transform. |
|
310 |
|
|
|
|
1/xn is the homogeneous
distribution defined
by the distributional derivative |
|
311 |
|
|
|
|
This formula is valid for 0 > α > −1. For
α >
0 some singular terms arise at the origin that can be found by differentiating
318. If Re α >
−1, then |
|
312 |
|
|
|
|
The dual of rule 309. This time the Fourier
transforms need to be considered asCauchy
principal value. |
|
313 |
|
|
|
|
The function u(x)
is the Heaviside unit step
function; this follows from rules 101, 301, and 312. |
|
314 |
|
|
|
|
This function is known as the Dirac comb function. This
result can be derived from 302 and 102, together with the fact that
|
|
315 |
|
|
|
|
The function J0(x)
is the zeroth order Bessel functionof first kind. |
|
316 |
|
|
|
|
This is a generalization of 315. The function Jn(x) is
the n-th order Bessel
function of
first kind. The function Tn(x)
is theChebyshev
polynomial of the first kind. |
|
317 |
|
|
|
|
|
|
318 |
|
|
|
|
This formula is valid for 1 > α > 0. Use
differentiation to derive formula for higher exponents. |
|
|
Function |
Fourier transform |
Fourier transform |
Fourier transform |
400 |
|
|
|
|
401 |
|
|
|
|
402 |
|
|
|
|
Remarks
To 400: The
variables ξx, ξy, ωx, ωy, νx and νy are real numbers. The integrals are
taken over the entire plane.
To 401: Both
functions are Gaussians, which may not have unit volume.
To 402: The
function is defined by circ(r)=1 0≤r≤1, and is 0
otherwise. This is the Airy distribution, and is expressed using J1 (the order 1 Bessel function of the first kind). (Stein &
Weiss 1971, Thm. IV.3.3)
|
Function |
Fourier transform |
Fourier transform |
Fourier transform |
500 |
|
|
|
|
501 |
|
|
|
|
502 |
|
|
|
|
Remarks
To 501: The function χ[0,1] is
the indicator function of the interval [0, 1]. The
function Γ(x) is the gamma function. The function Jn/2 + δ is a Bessel function of the first
kind, with order n/2 + δ.
Taking n = 2 and δ = 0 produces
402. (Stein &
Weiss 1971, Thm. 4.15)
To 502: See Riesz potential.
The formula also holds for all α ≠ −n,
−n − 1, ... by analytic continuation, but
then the function and its Fourier transforms need to be understood as suitably
regularized tempered distributions. See homogeneous distribution.
§
Discrete-time Fourier transform
§
Fractional Fourier transform
§
Space-time Fourier transform
§
Short-time Fourier transform
§
Time Stretch Dispersive Fourier
Transform
§
NGC 4622, especially the
image NGC 4622 Fourier Transform m = 2.