hpp-core  6.1.0
Implement basic classes for canonical path planning for kinematic chains.
quadratic-program.hh
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1 // Copyright (c) 2018, Joseph Mirabel
2 // Authors: Joseph Mirabel (joseph.mirabel@laas.fr)
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28 
29 #ifndef HPP_CORE_PATH_OPTIMIZATION_QUADRATIC_PROGRAM_HH
30 #define HPP_CORE_PATH_OPTIMIZATION_QUADRATIC_PROGRAM_HH
31 
32 #include <hpp/core/fwd.hh>
34 
35 namespace hpp {
36 namespace core {
39 namespace pathOptimization {
62  typedef Eigen::JacobiSVD<matrix_t> Decomposition_t;
63  typedef Eigen::LLT<matrix_t, Eigen::Lower> LLT_t;
64 
69  : H(inputSize, inputSize),
70  b(inputSize),
71  dec(inputSize, inputSize, Eigen::ComputeThinU | Eigen::ComputeThinV),
72  xStar(inputSize),
73  accuracy_(1e-4) {
74  H.setZero();
75  b.setZero();
76  bIsZero = true;
77  }
78 
84  : H(lc.PK.cols(), lc.PK.cols()),
85  b(lc.PK.cols()),
86  bIsZero(false),
87  dec(lc.PK.cols(), lc.PK.cols(),
88  Eigen::ComputeThinU | Eigen::ComputeThinV),
89  xStar(lc.PK.cols()),
90  accuracy_(1e-4) {
91  QP.reduced(lc, *this);
92  }
93 
95  : H(QP.H),
96  b(QP.b),
97  bIsZero(QP.bIsZero),
98  dec(QP.dec),
99  xStar(QP.xStar),
100  accuracy_(QP.accuracy_) {}
101 
103 
110  void accuracy(value_type acc) { accuracy_ = acc; }
116  value_type accuracy() const { return accuracy_; }
117  void addRows(const std::size_t& nbRows) {
118  H.conservativeResize(H.rows() + nbRows, H.cols());
119  b.conservativeResize(b.rows() + nbRows, b.cols());
120 
121  H.bottomRows(nbRows).setZero();
122  }
123 
126 
127  /*/ Compute the problem
128  * \f{eqnarray*}{
129  * \min & \frac{1}{2} * x^T H x + b^T x \\
130  * lc.J * x = lc.b
131  * \f}
132  **/
133  void reduced(const LinearConstraint& lc, QuadraticProgram& QPr) const {
134  matrix_t H_PK(H * lc.PK);
135  QPr.H.noalias() = lc.PK.transpose() * H_PK;
136  QPr.b.noalias() = H_PK.transpose() * lc.xStar;
137  if (!bIsZero) {
138  QPr.b.noalias() += lc.PK.transpose() * b;
139  }
140  QPr.bIsZero = false;
141  }
142 
143  void decompose();
144 
145  void solve() { xStar.noalias() = -dec.solve(b); }
146 
148 
151 
152  void computeLLT();
153 
161  double solve(const LinearConstraint& ce, const LinearConstraint& ci);
162 
164 
169  bool bIsZero;
171 
176  Eigen::VectorXi activeConstraint;
179 
186 };
187 } // namespace pathOptimization
188 } // namespace core
189 } // namespace hpp
190 
191 #endif // HPP_CORE_PATH_OPTIMIZATION_QUADRATIC_PROGRAM_HH
void solve()
Definition: quadratic-program.hh:145
vector_t xStar
Definition: quadratic-program.hh:183
void reduced(const LinearConstraint &lc, QuadraticProgram &QPr) const
Definition: quadratic-program.hh:133
Eigen::LLT< matrix_t, Eigen::Lower > LLT_t
Definition: quadratic-program.hh:63
double solve(const LinearConstraint &ce, const LinearConstraint &ci)
bool bIsZero
Definition: quadratic-program.hh:169
value_type trace
Definition: quadratic-program.hh:175
void accuracy(value_type acc)
Definition: quadratic-program.hh:110
Eigen::VectorXi activeConstraint
Definition: quadratic-program.hh:176
Eigen::JacobiSVD< matrix_t > Decomposition_t
Definition: quadratic-program.hh:62
QuadraticProgram(const QuadraticProgram &QP)
Definition: quadratic-program.hh:94
QuadraticProgram(const QuadraticProgram &QP, const LinearConstraint &lc)
Definition: quadratic-program.hh:83
Decomposition_t dec
Definition: quadratic-program.hh:182
QuadraticProgram(size_type inputSize)
Definition: quadratic-program.hh:68
value_type accuracy() const
Definition: quadratic-program.hh:116
vector_t b
Definition: quadratic-program.hh:168
value_type accuracy_
Definition: quadratic-program.hh:185
void addRows(const std::size_t &nbRows)
Definition: quadratic-program.hh:117
matrix_t H
Definition: quadratic-program.hh:167
int activeSetSize
Definition: quadratic-program.hh:177
LLT_t llt
Definition: quadratic-program.hh:174
pinocchio::value_type value_type
Definition: fwd.hh:174
pinocchio::vector_t vector_t
Definition: fwd.hh:220
pinocchio::size_type size_type
Definition: fwd.hh:173
pinocchio::matrix_t matrix_t
Definition: fwd.hh:162
A linear constraint .
Definition: linear-constraint.hh:39
matrix_t PK
Projector onto .
Definition: linear-constraint.hh:139
vector_t xStar
is a particular solution.
Definition: linear-constraint.hh:141
Definition: quadratic-program.hh:61