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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2009 Thomas Capricelli <orzel@freehackers.org>
// Copyright (C) 2012 Desire Nuentsa <desire.nuentsa_wakam@inria.fr>
//
// The algorithm of this class initially comes from MINPACK whose original authors are:
// Copyright Jorge More - Argonne National Laboratory
// Copyright Burt Garbow - Argonne National Laboratory
// Copyright Ken Hillstrom - Argonne National Laboratory
//
// This Source Code Form is subject to the terms of the Minpack license
// (a BSD-like license) described in the campaigned CopyrightMINPACK.txt file.
//
// This Source Code Form is subject to the terms of the Mozilla
// Public License v. 2.0. If a copy of the MPL was not distributed
// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
#ifndef EIGEN_LEVENBERGMARQUARDT_H
#define EIGEN_LEVENBERGMARQUARDT_H
namespace Eigen {
namespace LevenbergMarquardtSpace {
enum Status {
NotStarted = -2,
Running = -1,
ImproperInputParameters = 0,
RelativeReductionTooSmall = 1,
RelativeErrorTooSmall = 2,
RelativeErrorAndReductionTooSmall = 3,
CosinusTooSmall = 4,
TooManyFunctionEvaluation = 5,
FtolTooSmall = 6,
XtolTooSmall = 7,
GtolTooSmall = 8,
UserAsked = 9
};
}
template <typename _Scalar, int NX=Dynamic, int NY=Dynamic>
struct DenseFunctor
{
typedef _Scalar Scalar;
enum {
InputsAtCompileTime = NX,
ValuesAtCompileTime = NY
};
typedef Matrix<Scalar,InputsAtCompileTime,1> InputType;
typedef Matrix<Scalar,ValuesAtCompileTime,1> ValueType;
typedef Matrix<Scalar,ValuesAtCompileTime,InputsAtCompileTime> JacobianType;
typedef ColPivHouseholderQR<JacobianType> QRSolver;
const int m_inputs, m_values;
DenseFunctor() : m_inputs(InputsAtCompileTime), m_values(ValuesAtCompileTime) {}
DenseFunctor(int inputs, int values) : m_inputs(inputs), m_values(values) {}
int inputs() const { return m_inputs; }
int values() const { return m_values; }
//int operator()(const InputType &x, ValueType& fvec) { }
// should be defined in derived classes
//int df(const InputType &x, JacobianType& fjac) { }
// should be defined in derived classes
};
template <typename _Scalar, typename _Index>
struct SparseFunctor
{
typedef _Scalar Scalar;
typedef _Index Index;
typedef Matrix<Scalar,Dynamic,1> InputType;
typedef Matrix<Scalar,Dynamic,1> ValueType;
typedef SparseMatrix<Scalar, ColMajor, Index> JacobianType;
typedef SparseQR<JacobianType, COLAMDOrdering<int> > QRSolver;
enum {
InputsAtCompileTime = Dynamic,
ValuesAtCompileTime = Dynamic
};
SparseFunctor(int inputs, int values) : m_inputs(inputs), m_values(values) {}
int inputs() const { return m_inputs; }
int values() const { return m_values; }
const int m_inputs, m_values;
//int operator()(const InputType &x, ValueType& fvec) { }
// to be defined in the functor
//int df(const InputType &x, JacobianType& fjac) { }
// to be defined in the functor if no automatic differentiation
};
namespace internal {
template <typename QRSolver, typename VectorType>
void lmpar2(const QRSolver &qr, const VectorType &diag, const VectorType &qtb,
typename VectorType::Scalar m_delta, typename VectorType::Scalar &par,
VectorType &x);
}
/**
* \ingroup NonLinearOptimization_Module
* \brief Performs non linear optimization over a non-linear function,
* using a variant of the Levenberg Marquardt algorithm.
*
* Check wikipedia for more information.
* http://en.wikipedia.org/wiki/Levenberg%E2%80%93Marquardt_algorithm
*/
template<typename _FunctorType>
class LevenbergMarquardt : internal::no_assignment_operator
{
public:
typedef _FunctorType FunctorType;
typedef typename FunctorType::QRSolver QRSolver;
typedef typename FunctorType::JacobianType JacobianType;
typedef typename JacobianType::Scalar Scalar;
typedef typename JacobianType::RealScalar RealScalar;
typedef typename QRSolver::StorageIndex PermIndex;
typedef Matrix<Scalar,Dynamic,1> FVectorType;
typedef PermutationMatrix<Dynamic,Dynamic,int> PermutationType;
public:
LevenbergMarquardt(FunctorType& functor)
: m_functor(functor),m_nfev(0),m_njev(0),m_fnorm(0.0),m_gnorm(0),
m_isInitialized(false),m_info(InvalidInput)
{
resetParameters();
m_useExternalScaling=false;
}
LevenbergMarquardtSpace::Status minimize(FVectorType &x);
LevenbergMarquardtSpace::Status minimizeInit(FVectorType &x);
LevenbergMarquardtSpace::Status minimizeOneStep(FVectorType &x);
LevenbergMarquardtSpace::Status lmder1(
FVectorType &x,
const Scalar tol = std::sqrt(NumTraits<Scalar>::epsilon())
);
static LevenbergMarquardtSpace::Status lmdif1(
FunctorType &functor,
FVectorType &x,
Index *nfev,
const Scalar tol = std::sqrt(NumTraits<Scalar>::epsilon())
);
/** Sets the default parameters */
void resetParameters()
{
using std::sqrt;
m_factor = 100.;
m_maxfev = 400;
m_ftol = sqrt(NumTraits<RealScalar>::epsilon());
m_xtol = sqrt(NumTraits<RealScalar>::epsilon());
m_gtol = 0. ;
m_epsfcn = 0. ;
}
/** Sets the tolerance for the norm of the solution vector*/
void setXtol(RealScalar xtol) { m_xtol = xtol; }
/** Sets the tolerance for the norm of the vector function*/
void setFtol(RealScalar ftol) { m_ftol = ftol; }
/** Sets the tolerance for the norm of the gradient of the error vector*/
void setGtol(RealScalar gtol) { m_gtol = gtol; }
/** Sets the step bound for the diagonal shift */
void setFactor(RealScalar factor) { m_factor = factor; }
/** Sets the error precision */
void setEpsilon (RealScalar epsfcn) { m_epsfcn = epsfcn; }
/** Sets the maximum number of function evaluation */
void setMaxfev(Index maxfev) {m_maxfev = maxfev; }
/** Use an external Scaling. If set to true, pass a nonzero diagonal to diag() */
void setExternalScaling(bool value) {m_useExternalScaling = value; }
/** \returns the tolerance for the norm of the solution vector */
RealScalar xtol() const {return m_xtol; }
/** \returns the tolerance for the norm of the vector function */
RealScalar ftol() const {return m_ftol; }
/** \returns the tolerance for the norm of the gradient of the error vector */
RealScalar gtol() const {return m_gtol; }
/** \returns the step bound for the diagonal shift */
RealScalar factor() const {return m_factor; }
/** \returns the error precision */
RealScalar epsilon() const {return m_epsfcn; }
/** \returns the maximum number of function evaluation */
Index maxfev() const {return m_maxfev; }
/** \returns a reference to the diagonal of the jacobian */
FVectorType& diag() {return m_diag; }
/** \returns the number of iterations performed */
Index iterations() { return m_iter; }
/** \returns the number of functions evaluation */
Index nfev() { return m_nfev; }
/** \returns the number of jacobian evaluation */
Index njev() { return m_njev; }
/** \returns the norm of current vector function */
RealScalar fnorm() {return m_fnorm; }
/** \returns the norm of the gradient of the error */
RealScalar gnorm() {return m_gnorm; }
/** \returns the LevenbergMarquardt parameter */
RealScalar lm_param(void) { return m_par; }
/** \returns a reference to the current vector function
*/
FVectorType& fvec() {return m_fvec; }
/** \returns a reference to the matrix where the current Jacobian matrix is stored
*/
JacobianType& jacobian() {return m_fjac; }
/** \returns a reference to the triangular matrix R from the QR of the jacobian matrix.
* \sa jacobian()
*/
JacobianType& matrixR() {return m_rfactor; }
/** the permutation used in the QR factorization
*/
PermutationType permutation() {return m_permutation; }
/**
* \brief Reports whether the minimization was successful
* \returns \c Success if the minimization was successful,
* \c NumericalIssue if a numerical problem arises during the
* minimization process, for example during the QR factorization
* \c NoConvergence if the minimization did not converge after
* the maximum number of function evaluation allowed
* \c InvalidInput if the input matrix is invalid
*/
ComputationInfo info() const
{
return m_info;
}
private:
JacobianType m_fjac;
JacobianType m_rfactor; // The triangular matrix R from the QR of the jacobian matrix m_fjac
FunctorType &m_functor;
FVectorType m_fvec, m_qtf, m_diag;
Index n;
Index m;
Index m_nfev;
Index m_njev;
RealScalar m_fnorm; // Norm of the current vector function
RealScalar m_gnorm; //Norm of the gradient of the error
RealScalar m_factor; //
Index m_maxfev; // Maximum number of function evaluation
RealScalar m_ftol; //Tolerance in the norm of the vector function
RealScalar m_xtol; //
RealScalar m_gtol; //tolerance of the norm of the error gradient
RealScalar m_epsfcn; //
Index m_iter; // Number of iterations performed
RealScalar m_delta;
bool m_useExternalScaling;
PermutationType m_permutation;
FVectorType m_wa1, m_wa2, m_wa3, m_wa4; //Temporary vectors
RealScalar m_par;
bool m_isInitialized; // Check whether the minimization step has been called
ComputationInfo m_info;
};
template<typename FunctorType>
LevenbergMarquardtSpace::Status
LevenbergMarquardt<FunctorType>::minimize(FVectorType &x)
{
LevenbergMarquardtSpace::Status status = minimizeInit(x);
if (status==LevenbergMarquardtSpace::ImproperInputParameters) {
m_isInitialized = true;
return status;
}
do {
// std::cout << " uv " << x.transpose() << "\n";
status = minimizeOneStep(x);
} while (status==LevenbergMarquardtSpace::Running);
m_isInitialized = true;
return status;
}
template<typename FunctorType>
LevenbergMarquardtSpace::Status
LevenbergMarquardt<FunctorType>::minimizeInit(FVectorType &x)
{
n = x.size();
m = m_functor.values();
m_wa1.resize(n); m_wa2.resize(n); m_wa3.resize(n);
m_wa4.resize(m);
m_fvec.resize(m);
//FIXME Sparse Case : Allocate space for the jacobian
m_fjac.resize(m, n);
// m_fjac.reserve(VectorXi::Constant(n,5)); // FIXME Find a better alternative
if (!m_useExternalScaling)
m_diag.resize(n);
eigen_assert( (!m_useExternalScaling || m_diag.size()==n) && "When m_useExternalScaling is set, the caller must provide a valid 'm_diag'");
m_qtf.resize(n);
/* Function Body */
m_nfev = 0;
m_njev = 0;
/* check the input parameters for errors. */
if (n <= 0 || m < n || m_ftol < 0. || m_xtol < 0. || m_gtol < 0. || m_maxfev <= 0 || m_factor <= 0.){
m_info = InvalidInput;
return LevenbergMarquardtSpace::ImproperInputParameters;
}
if (m_useExternalScaling)
for (Index j = 0; j < n; ++j)
if (m_diag[j] <= 0.)
{
m_info = InvalidInput;
return LevenbergMarquardtSpace::ImproperInputParameters;
}
/* evaluate the function at the starting point */
/* and calculate its norm. */
m_nfev = 1;
if ( m_functor(x, m_fvec) < 0)
return LevenbergMarquardtSpace::UserAsked;
m_fnorm = m_fvec.stableNorm();
/* initialize levenberg-marquardt parameter and iteration counter. */
m_par = 0.;
m_iter = 1;
return LevenbergMarquardtSpace::NotStarted;
}
template<typename FunctorType>
LevenbergMarquardtSpace::Status
LevenbergMarquardt<FunctorType>::lmder1(
FVectorType &x,
const Scalar tol
)
{
n = x.size();
m = m_functor.values();
/* check the input parameters for errors. */
if (n <= 0 || m < n || tol < 0.)
return LevenbergMarquardtSpace::ImproperInputParameters;
resetParameters();
m_ftol = tol;
m_xtol = tol;
m_maxfev = 100*(n+1);
return minimize(x);
}
template<typename FunctorType>
LevenbergMarquardtSpace::Status
LevenbergMarquardt<FunctorType>::lmdif1(
FunctorType &functor,
FVectorType &x,
Index *nfev,
const Scalar tol
)
{
Index n = x.size();
Index m = functor.values();
/* check the input parameters for errors. */
if (n <= 0 || m < n || tol < 0.)
return LevenbergMarquardtSpace::ImproperInputParameters;
NumericalDiff<FunctorType> numDiff(functor);
// embedded LevenbergMarquardt
LevenbergMarquardt<NumericalDiff<FunctorType> > lm(numDiff);
lm.setFtol(tol);
lm.setXtol(tol);
lm.setMaxfev(200*(n+1));
LevenbergMarquardtSpace::Status info = LevenbergMarquardtSpace::Status(lm.minimize(x));
if (nfev)
* nfev = lm.nfev();
return info;
}
} // end namespace Eigen
#endif // EIGEN_LEVENBERGMARQUARDT_H