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mathematics Mathematics is an area of knowledge that includes the topics of numbers, formulas and related structures, shapes and the spaces in which they are contained, and quantities and their changes. These topics are represented in modern mathematics ...
, the total variation identifies several slightly different concepts, related to the ( local or global) structure of the codomain of a function or a
measure Measure may refer to: * Measurement, the assignment of a number to a characteristic of an object or event Law * Ballot measure, proposed legislation in the United States * Church of England Measure, legislation of the Church of England * Mea ...
. For a real-valued
continuous function In mathematics, a continuous function is a function such that a continuous variation (that is a change without jump) of the argument induces a continuous variation of the value of the function. This means that there are no abrupt changes in value ...
''f'', defined on an interval 'a'', ''b''⊂ R, its total variation on the interval of definition is a measure of the one-dimensional arclength of the curve with parametric equation ''x'' ↦ ''f''(''x''), for ''x'' ∈ 'a'', ''b'' Functions whose total variation is finite are called functions of bounded variation.


Historical note

The concept of total variation for functions of one real variable was first introduced by Camille Jordan in the paper . He used the new concept in order to prove a convergence theorem for
Fourier series A Fourier series () is a summation of harmonically related sinusoidal functions, also known as components or harmonics. The result of the summation is a periodic function whose functional form is determined by the choices of cycle length (or ''p ...
of discontinuous periodic functions whose variation is
bounded Boundedness or bounded may refer to: Economics * Bounded rationality, the idea that human rationality in decision-making is bounded by the available information, the cognitive limitations, and the time available to make the decision * Bounded e ...
. The extension of the concept to functions of more than one variable however is not simple for various reasons.


Definitions


Total variation for functions of one real variable

The total variation of a real-valued (or more generally complex-valued) function f, defined on an interval , b\subset \mathbb is the quantity : V_a^b(f)=\sup_ \sum_^ , f(x_)-f(x_i) , , where the
supremum In mathematics, the infimum (abbreviated inf; plural infima) of a subset S of a partially ordered set P is a greatest element in P that is less than or equal to each element of S, if such an element exists. Consequently, the term ''greatest l ...
runs over the
set Set, The Set, SET or SETS may refer to: Science, technology, and mathematics Mathematics *Set (mathematics), a collection of elements *Category of sets, the category whose objects and morphisms are sets and total functions, respectively Electro ...
of all
partitions Partition may refer to: Computing Hardware * Disk partitioning, the division of a hard disk drive * Memory partition, a subdivision of a computer's memory, usually for use by a single job Software * Partition (database), the division of a ...
\mathcal = \left\ of the given interval.


Total variation for functions of ''n'' > 1 real variables

Let Ω be an
open subset In mathematics, open sets are a generalization of open intervals in the real line. In a metric space (a set along with a distance defined between any two points), open sets are the sets that, with every point , contain all points that are suff ...
of R''n''. Given a function ''f'' belonging to ''L''1(Ω), the total variation of ''f'' in Ω is defined as : V(f,\Omega):=\sup\left\, where * C_c^1(\Omega,\mathbb^n) is the
set Set, The Set, SET or SETS may refer to: Science, technology, and mathematics Mathematics *Set (mathematics), a collection of elements *Category of sets, the category whose objects and morphisms are sets and total functions, respectively Electro ...
of
continuously differentiable In mathematics, a differentiable function of one real variable is a function whose derivative exists at each point in its domain. In other words, the graph of a differentiable function has a non-vertical tangent line at each interior point in its ...
vector functions of
compact support In mathematics, the support of a real-valued function f is the subset of the function domain containing the elements which 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 ...
contained in \Omega, * \Vert\;\Vert_ is the essential supremum
norm Naturally occurring radioactive materials (NORM) and technologically enhanced naturally occurring radioactive materials (TENORM) consist of materials, usually industrial wastes or by-products enriched with radioactive elements found in the envir ...
, and * \operatorname is the divergence operator. This definition ''does not require'' that the
domain Domain may refer to: Mathematics *Domain of a function, the set of input values for which the (total) function is defined **Domain of definition of a partial function **Natural domain of a partial function **Domain of holomorphy of a function * Do ...
\Omega \subseteq \mathbb^n of the given function be a
bounded set :''"Bounded" and "boundary" are distinct concepts; for the latter see boundary (topology). A circle in isolation is a boundaryless bounded set, while the half plane is unbounded yet has a boundary. In mathematical analysis and related areas of mat ...
.


Total variation in measure theory


Classical total variation definition

Following , consider a signed measure \mu on a measurable space (X,\Sigma): then it is possible to define two set functions \overline(\mu,\cdot) and \underline(\mu,\cdot), respectively called upper variation and lower variation, as follows :\overline(\mu,E)=\sup\left\\qquad\forall E\in\Sigma :\underline(\mu,E)=\inf\left\\qquad\forall E\in\Sigma clearly :\overline(\mu,E)\geq 0 \geq \underline(\mu,E)\qquad\forall E\in\Sigma The variation (also called absolute variation) of the signed measure \mu is the set function :, \mu, (E)=\overline(\mu,E)+\left, \underline(\mu,E)\\qquad\forall E\in\Sigma and its total variation is defined as the value of this measure on the whole space of definition, i.e. :\, \mu\, =, \mu, (X)


Modern definition of total variation norm

uses upper and lower variations to prove the Hahn–Jordan decomposition: according to his version of this theorem, the upper and lower variation are respectively a non-negative and a
non-positive In mathematics, the sign of a real number is its property of being either positive, negative, or zero. Depending on local conventions, zero may be considered as being neither positive nor negative (having no sign or a unique third sign), or it ...
measure Measure may refer to: * Measurement, the assignment of a number to a characteristic of an object or event Law * Ballot measure, proposed legislation in the United States * Church of England Measure, legislation of the Church of England * Mea ...
. Using a more modern notation, define :\mu^+(\cdot)=\overline(\mu,\cdot)\,, :\mu^-(\cdot)=-\underline(\mu,\cdot)\,, Then \mu^+ and \mu^- are two non-negative
measure Measure may refer to: * Measurement, the assignment of a number to a characteristic of an object or event Law * Ballot measure, proposed legislation in the United States * Church of England Measure, legislation of the Church of England * Mea ...
s such that :\mu=\mu^+-\mu^- :, \mu, =\mu^++\mu^- The last measure is sometimes called, by abuse of notation, total variation measure.


Total variation norm of complex measures

If the measure \mu is
complex-valued In mathematics, a complex number is an element of a number system that extends the real numbers with a specific element denoted , called the imaginary unit and satisfying the equation i^= -1; every complex number can be expressed in the form ...
i.e. is a
complex measure In mathematics, specifically measure theory, a complex measure generalizes the concept of measure by letting it have complex values. In other words, one allows for sets whose size (length, area, volume) is a complex number. Definition Formal ...
, its upper and lower variation cannot be defined and the Hahn–Jordan decomposition theorem can only be applied to its real and imaginary parts. However, it is possible to follow and define the total variation of the complex-valued measure \mu as follows The variation of the complex-valued measure \mu is the set function :, \mu, (E)=\sup_\pi \sum_ , \mu(A), \qquad\forall E\in\Sigma where the
supremum In mathematics, the infimum (abbreviated inf; plural infima) of a subset S of a partially ordered set P is a greatest element in P that is less than or equal to each element of S, if such an element exists. Consequently, the term ''greatest l ...
is taken over all partitions \pi of a
measurable set In mathematics, the concept of a measure is a generalization and formalization of geometrical measures (length, area, volume) and other common notions, such as mass and probability of events. These seemingly distinct concepts have many simila ...
E into a countable number of disjoint measurable subsets. This definition coincides with the above definition , \mu, =\mu^++\mu^- for the case of real-valued signed measures.


Total variation norm of vector-valued measures

The variation so defined is a
positive measure In mathematics, the concept of a measure is a generalization and formalization of geometrical measures (length, area, volume) and other common notions, such as mass and probability of events. These seemingly distinct concepts have many simila ...
(see ) and coincides with the one defined by when \mu is a signed measure: its total variation is defined as above. This definition works also if \mu is a
vector measure In mathematics, a vector measure is a function defined on a family of sets and taking vector values satisfying certain properties. It is a generalization of the concept of finite measure, which takes nonnegative real values only. Definitions and ...
: the variation is then defined by the following formula :, \mu, (E) = \sup_\pi \sum_ \, \mu(A)\, \qquad\forall E\in\Sigma where the supremum is as above. This definition is slightly more general than the one given by since it requires only to consider ''finite partitions'' of the space X: this implies that it can be used also to define the total variation on finite-additive measures.


Total variation of probability measures

The total variation of any
probability measure In mathematics, a probability measure is a real-valued function defined on a set of events in a probability space that satisfies measure properties such as ''countable additivity''. The difference between a probability measure and the more gener ...
is exactly one, therefore it is not interesting as a means of investigating the properties of such measures. However, when μ and ν are
probability measure In mathematics, a probability measure is a real-valued function defined on a set of events in a probability space that satisfies measure properties such as ''countable additivity''. The difference between a probability measure and the more gener ...
s, the
total variation distance of probability measures In probability theory, the total variation distance is a distance measure for probability distributions. It is an example of a statistical distance metric, and is sometimes called the statistical distance, statistical difference or variational dist ...
can be defined as \, \mu - \nu \, where the norm is the total variation norm of signed measures. Using the property that (\mu-\nu)(X)=0, we eventually arrive at the equivalent definition :\, \mu-\nu\, = , \mu-\nu, (X)=2 \sup\left\ and its values are non-trivial. The factor 2 above is usually dropped (as is the convention in the article
total variation distance of probability measures In probability theory, the total variation distance is a distance measure for probability distributions. It is an example of a statistical distance metric, and is sometimes called the statistical distance, statistical difference or variational dist ...
). Informally, this is the largest possible difference between the probabilities that the two
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon i ...
s can assign to the same event. For a categorical distribution it is possible to write the total variation distance as follows :\delta(\mu,\nu) = \sum_x \left, \mu(x) - \nu(x) \\;. It may also be normalized to values in
, 1 The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline (t ...
/math> by halving the previous definition as follows :\delta(\mu,\nu) = \frac\sum_x \left, \mu(x) - \nu(x) \


Basic properties


Total variation of differentiable functions

The total variation of a C^1(\overline) function f can be expressed as an integral involving the given function instead of as the
supremum In mathematics, the infimum (abbreviated inf; plural infima) of a subset S of a partially ordered set P is a greatest element in P that is less than or equal to each element of S, if such an element exists. Consequently, the term ''greatest l ...
of the
functional Functional may refer to: * Movements in architecture: ** Functionalism (architecture) ** Form follows function * Functional group, combination of atoms within molecules * Medical conditions without currently visible organic basis: ** Functional sy ...
s of definitions and .


The form of the total variation of a differentiable function of one variable

The total variation of a differentiable function f, defined on an interval , b\subset \mathbb, has the following expression if f' is Riemann integrable : V_a^b(f) = \int _a^b , f'(x), \mathrmx


The form of the total variation of a differentiable function of several variables

Given a C^1(\overline) function f defined on a
bounded Boundedness or bounded may refer to: Economics * Bounded rationality, the idea that human rationality in decision-making is bounded by the available information, the cognitive limitations, and the time available to make the decision * Bounded e ...
open set \Omega \subseteq \mathbb^n, with \partial \Omega of class C^1, the total variation of f has the following expression :V(f,\Omega) = \int_\Omega \left, \nabla f(x) \ \mathrmx .


=Proof

= The first step in the proof is to first prove an equality which follows from the Gauss–Ostrogradsky theorem.


=Lemma

= Under the conditions of the theorem, the following equality holds: : \int_\Omega f\operatorname\varphi = -\int_\Omega\nabla f\cdot\varphi


Proof of the lemma

From the Gauss–Ostrogradsky theorem: : \int_\Omega \operatorname\mathbf R = \int_\mathbf R\cdot \mathbf n by substituting \mathbf R:= f\mathbf\varphi, we have: : \int_\Omega\operatorname\left(f\mathbf\varphi\right) = \int_\left(f\mathbf\varphi\right)\cdot\mathbf n where \mathbf\varphi is zero on the border of \Omega by definition: : \int_\Omega\operatorname\left(f\mathbf\varphi\right)=0 : \int_\Omega \partial_ \left(f\mathbf\varphi_i\right)=0 : \int_\Omega \mathbf\varphi_i\partial_ f + f\partial_\mathbf\varphi_i=0 : \int_\Omega f\partial_\mathbf\varphi_i = - \int_\Omega \mathbf\varphi_i\partial_ f : \int_\Omega f\operatorname \mathbf\varphi = - \int_\Omega \mathbf\varphi\cdot\nabla f


=Proof of the equality

= Under the conditions of the theorem, from the lemma we have: : \int_\Omega f\operatorname \mathbf\varphi = - \int_\Omega \mathbf\varphi\cdot\nabla f \leq \left, \int_\Omega \mathbf\varphi\cdot\nabla f \ \leq \int_\Omega \left, \mathbf\varphi\\cdot\left, \nabla f\ \leq \int_\Omega \left, \nabla f\ in the last part \mathbf\varphi could be omitted, because by definition its essential supremum is at most one. On the other hand, we consider \theta_N:=-\mathbb I_\mathbb I_\frac and \theta^*_N which is the up to \varepsilon approximation of \theta_N in C^1_c with the same integral. We can do this since C^1_c is dense in L^1 . Now again substituting into the lemma: :\begin &\lim_\int_\Omega f\operatorname\theta^*_N \\ pt&= \lim_\int_\mathbb I_\nabla f\cdot\frac \\ pt&= \lim_\int_ \nabla f\cdot\frac \\ pt&= \int_\Omega\left, \nabla f\ \end This means we have a convergent sequence of \int_\Omega f \operatorname \mathbf\varphi that tends to \int_\Omega\left, \nabla f\ as well as we know that \int_\Omega f\operatorname\mathbf\varphi \leq \int_\Omega\left, \nabla f\ .
Q.E.D. Q.E.D. or QED is an initialism of the Latin phrase , meaning "which was to be demonstrated". Literally it states "what was to be shown". Traditionally, the abbreviation is placed at the end of mathematical proofs and philosophical arguments in pri ...
It can be seen from the proof that the supremum is attained when : \varphi\to \frac. The function f is said to be of bounded variation precisely if its total variation is finite.


Total variation of a measure

The total variation is a
norm Naturally occurring radioactive materials (NORM) and technologically enhanced naturally occurring radioactive materials (TENORM) consist of materials, usually industrial wastes or by-products enriched with radioactive elements found in the envir ...
defined on the space of measures of bounded variation. The space of measures on a σ-algebra of sets is a
Banach space In mathematics, more specifically in functional analysis, a Banach space (pronounced ) 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 vector ...
, called the ca space, relative to this norm. It is contained in the larger Banach space, called the ba space, consisting of '' finitely additive'' (as opposed to countably additive) measures, also with the same norm. The
distance function In mathematics, a metric space is a set together with a notion of ''distance'' between its elements, usually called points. The distance is measured by a function called a metric or distance function. Metric spaces are the most general settin ...
associated to the norm gives rise to the total variation distance between two measures ''μ'' and ''ν''. For finite measures on R, the link between the total variation of a measure ''μ'' and the total variation of a function, as described above, goes as follows. Given ''μ'', define a function \varphi\colon \mathbb\to \mathbb by :\varphi(t) = \mu((-\infty,t])~. Then, the total variation of the signed measure ''μ'' is equal to the total variation, in the above sense, of the function \varphi. In general, the total variation of a signed measure can be defined using Hahn decomposition theorem, Jordan's decomposition theorem by :\, \mu\, _ = \mu_+(X) + \mu_-(X)~, for any signed measure ''μ'' on a measurable space (X,\Sigma).


Applications

Total variation can be seen as a non-negative real-valued
functional Functional may refer to: * Movements in architecture: ** Functionalism (architecture) ** Form follows function * Functional group, combination of atoms within molecules * Medical conditions without currently visible organic basis: ** Functional sy ...
defined on the space of real-valued functions (for the case of functions of one variable) or on the space of integrable functions (for the case of functions of several variables). As a functional, total variation finds applications in several branches of mathematics and engineering, like
optimal control Optimal control theory is a branch of mathematical optimization that deals with finding a control for a dynamical system over a period of time such that an objective function is optimized. It has numerous applications in science, engineering and ...
, numerical analysis, and
calculus of variations The calculus of variations (or Variational Calculus) is a field of mathematical analysis that uses variations, which are small changes in functions and functionals, to find maxima and minima of functionals: mappings from a set of functions t ...
, where the solution to a certain problem has to minimize its value. As an example, use of the total variation functional is common in the following two kind of problems * Numerical analysis of differential equations: it is the science of finding approximate solutions to differential equations. Applications of total variation to these problems are detailed in the article "'' total variation diminishing''" * Image denoising: in
image processing An image is a visual representation of something. It can be two-dimensional, three-dimensional, or somehow otherwise feed into the visual system to convey information. An image can be an artifact, such as a photograph or other two-dimensiona ...
, denoising is a collection of methods used to reduce the noise in an
image An image is a visual representation of something. It can be two-dimensional, three-dimensional, or somehow otherwise feed into the visual system to convey information. An image can be an artifact, such as a photograph or other two-dimensiona ...
reconstructed from data obtained by electronic means, for example data transmission or sensing. "''
Total variation denoising In signal processing, particularly image processing, total variation denoising, also known as total variation regularization or total variation filtering, is a noise removal process (filter). It is based on the principle that signals with excessi ...
''" is the name for the application of total variation to image noise reduction; further details can be found in the papers of and . A sensible extension of this model to colour images, called Colour TV, can be found in .


See also

* Bounded variation *
p-variation In mathematical analysis, ''p''-variation is a collection of seminorms on functions from an ordered set to a metric space, indexed by a real number p\geq 1. ''p''-variation is a measure of the regularity or smoothness of a function. Specifically, ...
* Total variation diminishing *
Total variation denoising In signal processing, particularly image processing, total variation denoising, also known as total variation regularization or total variation filtering, is a noise removal process (filter). It is based on the principle that signals with excessi ...
* Quadratic variation *
Total variation distance of probability measures In probability theory, the total variation distance is a distance measure for probability distributions. It is an example of a statistical distance metric, and is sometimes called the statistical distance, statistical difference or variational dist ...
* Kolmogorov–Smirnov test * Anisotropic diffusion


Notes


Historical references

*. *. *. *. *. *. *. * * (available at Gallica). This is, according to Boris Golubov, the first paper on functions of bounded variation. *. * . The paper containing the first proof of
Vitali covering theorem In mathematics, the Vitali covering lemma is a combinatorial and geometric result commonly used in measure theory of Euclidean spaces. This lemma is an intermediate step, of independent interest, in the proof of the Vitali covering theorem. The ...
.


References

*. *. Available a
Numdam
*. *. (available at th
Polish Virtual Library of Science
. English translation from the original French by
Laurence Chisholm Young Laurence Chisholm Young (14 July 1905 – 24 December 2000) was a British mathematician known for his contributions to measure theory, the calculus of variations, optimal control theory, and potential theory. He was the son of William Henry You ...
, with two additional notes by Stefan Banach. *.


External links

One variable *
Total variation
on PlanetMath. One and more variables
Function of bounded variation
a
Encyclopedia of Mathematics
Measure theory *. *.
Jordan decomposition
a
Encyclopedia of Mathematics


Applications

* (a work dealing with total variation application in denoising problems for
image processing An image is a visual representation of something. It can be two-dimensional, three-dimensional, or somehow otherwise feed into the visual system to convey information. An image can be an artifact, such as a photograph or other two-dimensiona ...
). *. *. * Tony F. Chan and Jackie (Jianhong) Shen (2005)
''Image Processing and Analysis - Variational, PDE, Wavelet, and Stochastic Methods''
SIAM, (with in-depth coverage and extensive applications of Total Variations in modern image processing, as started by Rudin, Osher, and Fatemi). {{DEFAULTSORT:Total Variation Mathematical analysis