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cv::SVD Class Reference

Singular Value Decomposition. More...

#include <opencv2/core.hpp>

Collaboration diagram for cv::SVD:

Public Types

enum  Flags {
  MODIFY_A = 1,
  NO_UV = 2,
  FULL_UV = 4
}
 

Public Member Functions

 SVD ()
 the default constructor More...
 
 SVD (InputArray src, int flags=0)
 This is an overloaded member function, provided for convenience. It differs from the above function only in what argument(s) it accepts. initializes an empty SVD structure and then calls SVD::operator() More...
 
void backSubst (InputArray rhs, OutputArray dst) const
 performs a singular value back substitution. More...
 
SVDoperator() (InputArray src, int flags=0)
 the operator that performs SVD. More...
 

Static Public Member Functions

static void backSubst (InputArray w, InputArray u, InputArray vt, InputArray rhs, OutputArray dst)
 performs back substitution More...
 
template<typename _Tp , int m, int n, int nm, int nb>
static void backSubst (const Matx< _Tp, nm, 1 > &w, const Matx< _Tp, m, nm > &u, const Matx< _Tp, n, nm > &vt, const Matx< _Tp, m, nb > &rhs, Matx< _Tp, n, nb > &dst)
 
static void compute (InputArray src, OutputArray w, OutputArray u, OutputArray vt, int flags=0)
 decomposes matrix and stores the results to user-provided matrices More...
 
static void compute (InputArray src, OutputArray w, int flags=0)
 This is an overloaded member function, provided for convenience. It differs from the above function only in what argument(s) it accepts. computes singular values of a matrix. More...
 
template<typename _Tp , int m, int n, int nm>
static void compute (const Matx< _Tp, m, n > &a, Matx< _Tp, nm, 1 > &w, Matx< _Tp, m, nm > &u, Matx< _Tp, n, nm > &vt)
 
template<typename _Tp , int m, int n, int nm>
static void compute (const Matx< _Tp, m, n > &a, Matx< _Tp, nm, 1 > &w)
 
static void solveZ (InputArray src, OutputArray dst)
 solves an under-determined singular linear system More...
 

Public Attributes

Mat u
 
Mat vt
 
Mat w
 

Detailed Description

Singular Value Decomposition.

Class for computing Singular Value Decomposition of a floating-point matrix. The Singular Value Decomposition is used to solve least-square problems, under-determined linear systems, invert matrices, compute condition numbers, and so on.

If you want to compute a condition number of a matrix or an absolute value of its determinant, you do not need u and vt. You can pass flags=SVD::NO_UV|... . Another flag SVD::FULL_UV indicates that full-size u and vt must be computed, which is not necessary most of the time.

See also
invert, solve, eigen, determinant

Member Enumeration Documentation

◆ Flags

Enumerator
MODIFY_A 

allow the algorithm to modify the decomposed matrix; it can save space and speed up processing.

currently ignored.

NO_UV 

indicates that only a vector of singular values w is to be processed, while u and vt will be set to empty matrices

FULL_UV 

when the matrix is not square, by default the algorithm produces u and vt matrices of sufficiently large size for the further A reconstruction; if, however, FULL_UV flag is specified, u and vt will be full-size square orthogonal matrices.

Constructor & Destructor Documentation

◆ SVD() [1/2]

cv::SVD::SVD ( )

the default constructor

initializes an empty SVD structure

◆ SVD() [2/2]

cv::SVD::SVD ( InputArray  src,
int  flags = 0 
)

This is an overloaded member function, provided for convenience. It differs from the above function only in what argument(s) it accepts. initializes an empty SVD structure and then calls SVD::operator()

Parameters
srcdecomposed matrix. The depth has to be CV_32F or CV_64F.
flagsoperation flags (SVD::Flags)

Member Function Documentation

◆ backSubst() [1/3]

static void cv::SVD::backSubst ( InputArray  w,
InputArray  u,
InputArray  vt,
InputArray  rhs,
OutputArray  dst 
)
static

performs back substitution

◆ backSubst() [2/3]

void cv::SVD::backSubst ( InputArray  rhs,
OutputArray  dst 
) const

performs a singular value back substitution.

The method calculates a back substitution for the specified right-hand side:

\[\texttt{x} = \texttt{vt} ^T \cdot diag( \texttt{w} )^{-1} \cdot \texttt{u} ^T \cdot \texttt{rhs} \sim \texttt{A} ^{-1} \cdot \texttt{rhs}\]

Using this technique you can either get a very accurate solution of the convenient linear system, or the best (in the least-squares terms) pseudo-solution of an overdetermined linear system.

Parameters
rhsright-hand side of a linear system (u*w*v')*dst = rhs to be solved, where A has been previously decomposed.
dstfound solution of the system.
Note
Explicit SVD with the further back substitution only makes sense if you need to solve many linear systems with the same left-hand side (for example, src ). If all you need is to solve a single system (possibly with multiple rhs immediately available), simply call solve add pass DECOMP_SVD there. It does absolutely the same thing.

◆ backSubst() [3/3]

template<typename _Tp , int m, int n, int nm, int nb>
static void cv::SVD::backSubst ( const Matx< _Tp, nm, 1 > &  w,
const Matx< _Tp, m, nm > &  u,
const Matx< _Tp, n, nm > &  vt,
const Matx< _Tp, m, nb > &  rhs,
Matx< _Tp, n, nb > &  dst 
)
static
Todo:
document

◆ compute() [1/4]

static void cv::SVD::compute ( InputArray  src,
OutputArray  w,
OutputArray  u,
OutputArray  vt,
int  flags = 0 
)
static

decomposes matrix and stores the results to user-provided matrices

The methods/functions perform SVD of matrix. Unlike SVD::SVD constructor and SVD::operator(), they store the results to the user-provided matrices:

Mat A, w, u, vt;
SVD::compute(A, w, u, vt);
Parameters
srcdecomposed matrix. The depth has to be CV_32F or CV_64F.
wcalculated singular values
ucalculated left singular vectors
vttransposed matrix of right singular vectors
flagsoperation flags - see SVD::Flags.

◆ compute() [2/4]

static void cv::SVD::compute ( InputArray  src,
OutputArray  w,
int  flags = 0 
)
static

This is an overloaded member function, provided for convenience. It differs from the above function only in what argument(s) it accepts. computes singular values of a matrix.

Parameters
srcdecomposed matrix. The depth has to be CV_32F or CV_64F.
wcalculated singular values
flagsoperation flags - see SVD::Flags.

◆ compute() [3/4]

template<typename _Tp , int m, int n, int nm>
static void cv::SVD::compute ( const Matx< _Tp, m, n > &  a,
Matx< _Tp, nm, 1 > &  w,
Matx< _Tp, m, nm > &  u,
Matx< _Tp, n, nm > &  vt 
)
static
Todo:
document

◆ compute() [4/4]

template<typename _Tp , int m, int n, int nm>
static void cv::SVD::compute ( const Matx< _Tp, m, n > &  a,
Matx< _Tp, nm, 1 > &  w 
)
static
Todo:
document

◆ operator()()

SVD& cv::SVD::operator() ( InputArray  src,
int  flags = 0 
)

the operator that performs SVD.

The previously allocated u, w and vt are released.

The operator performs the singular value decomposition of the supplied matrix. The u,vt , and the vector of singular values w are stored in the structure. The same SVD structure can be reused many times with different matrices. Each time, if needed, the previous u,vt , and w are reclaimed and the new matrices are created, which is all handled by Mat::create.

Parameters
srcdecomposed matrix. The depth has to be CV_32F or CV_64F.
flagsoperation flags (SVD::Flags)

◆ solveZ()

static void cv::SVD::solveZ ( InputArray  src,
OutputArray  dst 
)
static

solves an under-determined singular linear system

The method finds a unit-length solution x of a singular linear system A*x = 0. Depending on the rank of A, there can be no solutions, a single solution or an infinite number of solutions. In general, the algorithm solves the following problem:

\[dst = \arg \min _{x: \| x \| =1} \| src \cdot x \|\]

Parameters
srcleft-hand-side matrix.
dstfound solution.

Member Data Documentation

◆ u

Mat cv::SVD::u

◆ vt

Mat cv::SVD::vt

◆ w

Mat cv::SVD::w

The documentation for this class was generated from the following file: