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// Ceres Solver - A fast non-linear least squares minimizer
// Copyright 2023 Google Inc. All rights reserved.
// http://ceres-solver.org/
//
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// modification, are permitted provided that the following conditions are met:
//
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// AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
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// ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
// POSSIBILITY OF SUCH DAMAGE.
//
// Author: sameeragarwal@google.com (Sameer Agarwal)
//
// Test problems from the paper
//
// Testing Unconstrained Optimization Software
// Jorge J. More, Burton S. Garbow and Kenneth E. Hillstrom
// ACM Transactions on Mathematical Software, 7(1), pp. 17-41, 1981
//
// A subset of these problems were augmented with bounds and used for
// testing bounds constrained optimization algorithms by
//
// A Trust Region Approach to Linearly Constrained Optimization
// David M. Gay
// Numerical Analysis (Griffiths, D.F., ed.), pp. 72-105
// Lecture Notes in Mathematics 1066, Springer Verlag, 1984.
//
// The latter paper is behind a paywall. We obtained the bounds on the
// variables and the function values at the global minimums from
//
// http://www.mat.univie.ac.at/~neum/glopt/bounds.html
//
// A problem is considered solved if of the log relative error of its
// objective function is at least 4.
#include <cmath>
#include <iostream> // NOLINT
#include <sstream> // NOLINT
#include <string>
#include "ceres/ceres.h"
#include "gflags/gflags.h"
#include "glog/logging.h"
DEFINE_string(problem, "all", "Which problem to solve");
DEFINE_bool(use_numeric_diff,
false,
"Use numeric differentiation instead of automatic"
" differentiation.");
DEFINE_string(numeric_diff_method,
"ridders",
"When using numeric differentiation, selects algorithm. Options "
"are: central, forward, ridders.");
DEFINE_int32(ridders_extrapolations,
3,
"Maximal number of extrapolations in Ridders' method.");
namespace ceres::examples {
const double kDoubleMax = std::numeric_limits<double>::max();
static void SetNumericDiffOptions(ceres::NumericDiffOptions* options) {
options->max_num_ridders_extrapolations =
CERES_GET_FLAG(FLAGS_ridders_extrapolations);
}
#define BEGIN_MGH_PROBLEM(name, num_parameters, num_residuals) \
struct name { \
static constexpr int kNumParameters = num_parameters; \
static const double initial_x[kNumParameters]; \
static const double lower_bounds[kNumParameters]; \
static const double upper_bounds[kNumParameters]; \
static const double constrained_optimal_cost; \
static const double unconstrained_optimal_cost; \
static CostFunction* Create() { \
if (CERES_GET_FLAG(FLAGS_use_numeric_diff)) { \
ceres::NumericDiffOptions options; \
SetNumericDiffOptions(&options); \
if (CERES_GET_FLAG(FLAGS_numeric_diff_method) == "central") { \
return new NumericDiffCostFunction<name, \
ceres::CENTRAL, \
num_residuals, \
num_parameters>( \
new name, ceres::TAKE_OWNERSHIP, num_residuals, options); \
} else if (CERES_GET_FLAG(FLAGS_numeric_diff_method) == "forward") { \
return new NumericDiffCostFunction<name, \
ceres::FORWARD, \
num_residuals, \
num_parameters>( \
new name, ceres::TAKE_OWNERSHIP, num_residuals, options); \
} else if (CERES_GET_FLAG(FLAGS_numeric_diff_method) == "ridders") { \
return new NumericDiffCostFunction<name, \
ceres::RIDDERS, \
num_residuals, \
num_parameters>( \
new name, ceres::TAKE_OWNERSHIP, num_residuals, options); \
} else { \
LOG(ERROR) << "Invalid numeric diff method specified"; \
return nullptr; \
} \
} else { \
return new AutoDiffCostFunction<name, \
num_residuals, \
num_parameters>(); \
} \
} \
template <typename T> \
bool operator()(const T* const x, T* residual) const {
// clang-format off
#define END_MGH_PROBLEM return true; } }; // NOLINT
// Rosenbrock function.
BEGIN_MGH_PROBLEM(TestProblem1, 2, 2)
const T x1 = x[0];
const T x2 = x[1];
residual[0] = 10.0 * (x2 - x1 * x1);
residual[1] = 1.0 - x1;
END_MGH_PROBLEM;
const double TestProblem1::initial_x[] = {-1.2, 1.0};
const double TestProblem1::lower_bounds[] = {-kDoubleMax, -kDoubleMax};
const double TestProblem1::upper_bounds[] = {kDoubleMax, kDoubleMax};
const double TestProblem1::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem1::unconstrained_optimal_cost = 0.0;
// Freudenstein and Roth function.
BEGIN_MGH_PROBLEM(TestProblem2, 2, 2)
const T x1 = x[0];
const T x2 = x[1];
residual[0] = -13.0 + x1 + ((5.0 - x2) * x2 - 2.0) * x2;
residual[1] = -29.0 + x1 + ((x2 + 1.0) * x2 - 14.0) * x2;
END_MGH_PROBLEM;
const double TestProblem2::initial_x[] = {0.5, -2.0};
const double TestProblem2::lower_bounds[] = {-kDoubleMax, -kDoubleMax};
const double TestProblem2::upper_bounds[] = {kDoubleMax, kDoubleMax};
const double TestProblem2::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem2::unconstrained_optimal_cost = 0.0;
// Powell badly scaled function.
BEGIN_MGH_PROBLEM(TestProblem3, 2, 2)
const T x1 = x[0];
const T x2 = x[1];
residual[0] = 10000.0 * x1 * x2 - 1.0;
residual[1] = exp(-x1) + exp(-x2) - 1.0001;
END_MGH_PROBLEM;
const double TestProblem3::initial_x[] = {0.0, 1.0};
const double TestProblem3::lower_bounds[] = {0.0, 1.0};
const double TestProblem3::upper_bounds[] = {1.0, 9.0};
const double TestProblem3::constrained_optimal_cost = 0.15125900e-9;
const double TestProblem3::unconstrained_optimal_cost = 0.0;
// Brown badly scaled function.
BEGIN_MGH_PROBLEM(TestProblem4, 2, 3)
const T x1 = x[0];
const T x2 = x[1];
residual[0] = x1 - 1000000.0;
residual[1] = x2 - 0.000002;
residual[2] = x1 * x2 - 2.0;
END_MGH_PROBLEM;
const double TestProblem4::initial_x[] = {1.0, 1.0};
const double TestProblem4::lower_bounds[] = {0.0, 0.00003};
const double TestProblem4::upper_bounds[] = {1000000.0, 100.0};
const double TestProblem4::constrained_optimal_cost = 0.78400000e3;
const double TestProblem4::unconstrained_optimal_cost = 0.0;
// Beale function.
BEGIN_MGH_PROBLEM(TestProblem5, 2, 3)
const T x1 = x[0];
const T x2 = x[1];
residual[0] = 1.5 - x1 * (1.0 - x2);
residual[1] = 2.25 - x1 * (1.0 - x2 * x2);
residual[2] = 2.625 - x1 * (1.0 - x2 * x2 * x2);
END_MGH_PROBLEM;
const double TestProblem5::initial_x[] = {1.0, 1.0};
const double TestProblem5::lower_bounds[] = {0.6, 0.5};
const double TestProblem5::upper_bounds[] = {10.0, 100.0};
const double TestProblem5::constrained_optimal_cost = 0.0;
const double TestProblem5::unconstrained_optimal_cost = 0.0;
// Jennrich and Sampson function.
BEGIN_MGH_PROBLEM(TestProblem6, 2, 10)
const T x1 = x[0];
const T x2 = x[1];
for (int i = 1; i <= 10; ++i) {
residual[i - 1] = 2.0 + 2.0 * i -
(exp(static_cast<double>(i) * x1) +
exp(static_cast<double>(i) * x2));
}
END_MGH_PROBLEM;
const double TestProblem6::initial_x[] = {1.0, 1.0};
const double TestProblem6::lower_bounds[] = {-kDoubleMax, -kDoubleMax};
const double TestProblem6::upper_bounds[] = {kDoubleMax, kDoubleMax};
const double TestProblem6::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem6::unconstrained_optimal_cost = 124.362;
// Helical valley function.
BEGIN_MGH_PROBLEM(TestProblem7, 3, 3)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T theta = (0.5 / constants::pi) * atan(x2 / x1) + (x1 > 0.0 ? 0.0 : 0.5);
residual[0] = 10.0 * (x3 - 10.0 * theta);
residual[1] = 10.0 * (sqrt(x1 * x1 + x2 * x2) - 1.0);
residual[2] = x3;
END_MGH_PROBLEM;
const double TestProblem7::initial_x[] = {-1.0, 0.0, 0.0};
const double TestProblem7::lower_bounds[] = {-100.0, -1.0, -1.0};
const double TestProblem7::upper_bounds[] = {0.8, 1.0, 1.0};
const double TestProblem7::constrained_optimal_cost = 0.99042212;
const double TestProblem7::unconstrained_optimal_cost = 0.0;
// Bard function
BEGIN_MGH_PROBLEM(TestProblem8, 3, 15)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
double y[] = {0.14, 0.18, 0.22, 0.25,
0.29, 0.32, 0.35, 0.39, 0.37, 0.58,
0.73, 0.96, 1.34, 2.10, 4.39};
for (int i = 1; i <=15; ++i) {
const double u = i;
const double v = 16 - i;
const double w = std::min(i, 16 - i);
residual[i - 1] = y[i - 1] - (x1 + u / (v * x2 + w * x3));
}
END_MGH_PROBLEM;
const double TestProblem8::initial_x[] = {1.0, 1.0, 1.0};
const double TestProblem8::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem8::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem8::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem8::unconstrained_optimal_cost = 8.21487e-3;
// Gaussian function.
BEGIN_MGH_PROBLEM(TestProblem9, 3, 15)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const double y[] = {0.0009, 0.0044, 0.0175, 0.0540, 0.1295, 0.2420, 0.3521,
0.3989,
0.3521, 0.2420, 0.1295, 0.0540, 0.0175, 0.0044, 0.0009};
for (int i = 0; i < 15; ++i) {
const double t_i = (8.0 - i - 1.0) / 2.0;
residual[i] = x1 * exp(-x2 * (t_i - x3) * (t_i - x3) / 2.0) - y[i];
}
END_MGH_PROBLEM;
const double TestProblem9::initial_x[] = {0.4, 1.0, 0.0};
const double TestProblem9::lower_bounds[] = {0.398, 1.0, -0.5};
const double TestProblem9::upper_bounds[] = {4.2, 2.0, 0.1};
const double TestProblem9::constrained_optimal_cost = 0.11279300e-7;
const double TestProblem9::unconstrained_optimal_cost = 0.112793e-7;
// Meyer function.
BEGIN_MGH_PROBLEM(TestProblem10, 3, 16)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const double y[] = {34780, 28610, 23650, 19630, 16370, 13720, 11540, 9744,
8261, 7030, 6005, 5147, 4427, 3820, 3307, 2872};
for (int i = 0; i < 16; ++i) {
const double ti = 45.0 + 5.0 * (i + 1);
residual[i] = x1 * exp(x2 / (ti + x3)) - y[i];
}
END_MGH_PROBLEM
const double TestProblem10::initial_x[] = {0.02, 4000, 250};
const double TestProblem10::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem10::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem10::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem10::unconstrained_optimal_cost = 87.9458;
// Gulf research and development function
BEGIN_MGH_PROBLEM(TestProblem11, 3, 100)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
for (int i = 1; i <= 100; ++i) {
const double ti = i / 100.0;
const double yi = 25.0 + pow(-50.0 * log(ti), 2.0 / 3.0);
residual[i - 1] = exp(-pow(abs((yi * 100.0 * i) * x2), x3) / x1) - ti;
}
END_MGH_PROBLEM
const double TestProblem11::initial_x[] = {5.0, 2.5, 0.15};
const double TestProblem11::lower_bounds[] = {1e-16, 0.0, 0.0};
const double TestProblem11::upper_bounds[] = {10.0, 10.0, 10.0};
const double TestProblem11::constrained_optimal_cost = 0.58281431e-4;
const double TestProblem11::unconstrained_optimal_cost = 0.0;
// Box three-dimensional function.
BEGIN_MGH_PROBLEM(TestProblem12, 3, 3)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const double t1 = 0.1;
const double t2 = 0.2;
const double t3 = 0.3;
residual[0] = exp(-t1 * x1) - exp(-t1 * x2) - x3 * (exp(-t1) - exp(-10.0 * t1));
residual[1] = exp(-t2 * x1) - exp(-t2 * x2) - x3 * (exp(-t2) - exp(-10.0 * t2));
residual[2] = exp(-t3 * x1) - exp(-t3 * x2) - x3 * (exp(-t3) - exp(-10.0 * t3));
END_MGH_PROBLEM
const double TestProblem12::initial_x[] = {0.0, 10.0, 20.0};
const double TestProblem12::lower_bounds[] = {0.0, 5.0, 0.0};
const double TestProblem12::upper_bounds[] = {2.0, 9.5, 20.0};
const double TestProblem12::constrained_optimal_cost = 0.30998153e-5;
const double TestProblem12::unconstrained_optimal_cost = 0.0;
// Powell Singular function.
BEGIN_MGH_PROBLEM(TestProblem13, 4, 4)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
residual[0] = x1 + 10.0 * x2;
residual[1] = sqrt(5.0) * (x3 - x4);
residual[2] = (x2 - 2.0 * x3) * (x2 - 2.0 * x3);
residual[3] = sqrt(10.0) * (x1 - x4) * (x1 - x4);
END_MGH_PROBLEM
const double TestProblem13::initial_x[] = {3.0, -1.0, 0.0, 1.0};
const double TestProblem13::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem13::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem13::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem13::unconstrained_optimal_cost = 0.0;
// Wood function.
BEGIN_MGH_PROBLEM(TestProblem14, 4, 6)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
residual[0] = 10.0 * (x2 - x1 * x1);
residual[1] = 1.0 - x1;
residual[2] = sqrt(90.0) * (x4 - x3 * x3);
residual[3] = 1.0 - x3;
residual[4] = sqrt(10.0) * (x2 + x4 - 2.0);
residual[5] = 1.0 / sqrt(10.0) * (x2 - x4);
END_MGH_PROBLEM;
const double TestProblem14::initial_x[] = {-3.0, -1.0, -3.0, -1.0};
const double TestProblem14::lower_bounds[] = {-100.0, -100.0, -100.0, -100.0};
const double TestProblem14::upper_bounds[] = {0.0, 10.0, 100.0, 100.0};
const double TestProblem14::constrained_optimal_cost = 0.15567008e1;
const double TestProblem14::unconstrained_optimal_cost = 0.0;
// Kowalik and Osborne function.
BEGIN_MGH_PROBLEM(TestProblem15, 4, 11)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
const double y[] = {0.1957, 0.1947, 0.1735, 0.1600, 0.0844, 0.0627,
0.0456, 0.0342, 0.0323, 0.0235, 0.0246};
const double u[] = {4.0, 2.0, 1.0, 0.5, 0.25, 0.167, 0.125, 0.1,
0.0833, 0.0714, 0.0625};
for (int i = 0; i < 11; ++i) {
residual[i] = y[i] - x1 * (u[i] * u[i] + u[i] * x2) /
(u[i] * u[i] + u[i] * x3 + x4);
}
END_MGH_PROBLEM;
const double TestProblem15::initial_x[] = {0.25, 0.39, 0.415, 0.39};
const double TestProblem15::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem15::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem15::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem15::unconstrained_optimal_cost = 3.07505e-4;
// Brown and Dennis function.
BEGIN_MGH_PROBLEM(TestProblem16, 4, 20)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
for (int i = 0; i < 20; ++i) {
const double ti = (i + 1) / 5.0;
residual[i] = (x1 + ti * x2 - exp(ti)) * (x1 + ti * x2 - exp(ti)) +
(x3 + x4 * sin(ti) - cos(ti)) * (x3 + x4 * sin(ti) - cos(ti));
}
END_MGH_PROBLEM;
const double TestProblem16::initial_x[] = {25.0, 5.0, -5.0, -1.0};
const double TestProblem16::lower_bounds[] = {-10.0, 0.0, -100.0, -20.0};
const double TestProblem16::upper_bounds[] = {100.0, 15.0, 0.0, 0.2};
const double TestProblem16::constrained_optimal_cost = 0.88860479e5;
const double TestProblem16::unconstrained_optimal_cost = 85822.2;
// Osborne 1 function.
BEGIN_MGH_PROBLEM(TestProblem17, 5, 33)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
const T x5 = x[4];
const double y[] = {0.844, 0.908, 0.932, 0.936, 0.925, 0.908, 0.881, 0.850, 0.818,
0.784, 0.751, 0.718, 0.685, 0.658, 0.628, 0.603, 0.580, 0.558,
0.538, 0.522, 0.506, 0.490, 0.478, 0.467, 0.457, 0.448, 0.438,
0.431, 0.424, 0.420, 0.414, 0.411, 0.406};
for (int i = 0; i < 33; ++i) {
const double ti = 10.0 * i;
residual[i] = y[i] - (x1 + x2 * exp(-ti * x4) + x3 * exp(-ti * x5));
}
END_MGH_PROBLEM;
const double TestProblem17::initial_x[] = {0.5, 1.5, -1.0, 0.01, 0.02};
const double TestProblem17::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem17::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem17::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem17::unconstrained_optimal_cost = 5.46489e-5;
// Biggs EXP6 function.
BEGIN_MGH_PROBLEM(TestProblem18, 6, 13)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
const T x5 = x[4];
const T x6 = x[5];
for (int i = 0; i < 13; ++i) {
const double ti = 0.1 * (i + 1.0);
const double yi = exp(-ti) - 5.0 * exp(-10.0 * ti) + 3.0 * exp(-4.0 * ti);
residual[i] =
x3 * exp(-ti * x1) - x4 * exp(-ti * x2) + x6 * exp(-ti * x5) - yi;
}
END_MGH_PROBLEM
const double TestProblem18::initial_x[] = {1.0, 2.0, 1.0, 1.0, 1.0, 1.0};
const double TestProblem18::lower_bounds[] = {0.0, 0.0, 0.0, 1.0, 0.0, 0.0};
const double TestProblem18::upper_bounds[] = {2.0, 8.0, 1.0, 7.0, 5.0, 5.0};
const double TestProblem18::constrained_optimal_cost = 0.53209865e-3;
const double TestProblem18::unconstrained_optimal_cost = 0.0;
// Osborne 2 function.
BEGIN_MGH_PROBLEM(TestProblem19, 11, 65)
const T x1 = x[0];
const T x2 = x[1];
const T x3 = x[2];
const T x4 = x[3];
const T x5 = x[4];
const T x6 = x[5];
const T x7 = x[6];
const T x8 = x[7];
const T x9 = x[8];
const T x10 = x[9];
const T x11 = x[10];
const double y[] = {1.366, 1.191, 1.112, 1.013, 0.991,
0.885, 0.831, 0.847, 0.786, 0.725,
0.746, 0.679, 0.608, 0.655, 0.616,
0.606, 0.602, 0.626, 0.651, 0.724,
0.649, 0.649, 0.694, 0.644, 0.624,
0.661, 0.612, 0.558, 0.533, 0.495,
0.500, 0.423, 0.395, 0.375, 0.372,
0.391, 0.396, 0.405, 0.428, 0.429,
0.523, 0.562, 0.607, 0.653, 0.672,
0.708, 0.633, 0.668, 0.645, 0.632,
0.591, 0.559, 0.597, 0.625, 0.739,
0.710, 0.729, 0.720, 0.636, 0.581,
0.428, 0.292, 0.162, 0.098, 0.054};
for (int i = 0; i < 65; ++i) {
const double ti = i / 10.0;
residual[i] = y[i] - (x1 * exp(-(ti * x5)) +
x2 * exp(-(ti - x9) * (ti - x9) * x6) +
x3 * exp(-(ti - x10) * (ti - x10) * x7) +
x4 * exp(-(ti - x11) * (ti - x11) * x8));
}
END_MGH_PROBLEM;
const double TestProblem19::initial_x[] = {1.3, 0.65, 0.65, 0.7, 0.6,
3.0, 5.0, 7.0, 2.0, 4.5, 5.5};
const double TestProblem19::lower_bounds[] = {
-kDoubleMax, -kDoubleMax, -kDoubleMax, -kDoubleMax};
const double TestProblem19::upper_bounds[] = {
kDoubleMax, kDoubleMax, kDoubleMax, kDoubleMax};
const double TestProblem19::constrained_optimal_cost =
std::numeric_limits<double>::quiet_NaN();
const double TestProblem19::unconstrained_optimal_cost = 4.01377e-2;
#undef BEGIN_MGH_PROBLEM
#undef END_MGH_PROBLEM
// clang-format on
template <typename TestProblem>
bool Solve(bool is_constrained, int trial) {
double x[TestProblem::kNumParameters];
for (int i = 0; i < TestProblem::kNumParameters; ++i) {
x[i] = pow(10, trial) * TestProblem::initial_x[i];
}
Problem problem;
problem.AddResidualBlock(TestProblem::Create(), nullptr, x);
double optimal_cost = TestProblem::unconstrained_optimal_cost;
if (is_constrained) {
for (int i = 0; i < TestProblem::kNumParameters; ++i) {
problem.SetParameterLowerBound(x, i, TestProblem::lower_bounds[i]);
problem.SetParameterUpperBound(x, i, TestProblem::upper_bounds[i]);
}
optimal_cost = TestProblem::constrained_optimal_cost;
}
Solver::Options options;
options.parameter_tolerance = 1e-18;
options.function_tolerance = 1e-18;
options.gradient_tolerance = 1e-18;
options.max_num_iterations = 1000;
options.linear_solver_type = DENSE_QR;
Solver::Summary summary;
Solve(options, &problem, &summary);
const double kMinLogRelativeError = 4.0;
const double log_relative_error =
-std::log10(std::abs(2.0 * summary.final_cost - optimal_cost) /
(optimal_cost > 0.0 ? optimal_cost : 1.0));
const bool success = log_relative_error >= kMinLogRelativeError;
LOG(INFO) << "Expected : " << optimal_cost
<< " actual: " << 2.0 * summary.final_cost << " " << success
<< " in " << summary.total_time_in_seconds << " seconds";
return success;
}
} // namespace ceres::examples
int main(int argc, char** argv) {
GFLAGS_NAMESPACE::ParseCommandLineFlags(&argc, &argv, true);
google::InitGoogleLogging(argv[0]);
using ceres::examples::Solve;
int unconstrained_problems = 0;
int unconstrained_successes = 0;
int constrained_problems = 0;
int constrained_successes = 0;
std::stringstream ss;
#define UNCONSTRAINED_SOLVE(n) \
ss << "Unconstrained Problem " << n << " : "; \
if (CERES_GET_FLAG(FLAGS_problem) == #n || \
CERES_GET_FLAG(FLAGS_problem) == "all") { \
unconstrained_problems += 3; \
if (Solve<ceres::examples::TestProblem##n>(false, 0)) { \
unconstrained_successes += 1; \
ss << "Yes "; \
} else { \
ss << "No "; \
} \
if (Solve<ceres::examples::TestProblem##n>(false, 1)) { \
unconstrained_successes += 1; \
ss << "Yes "; \
} else { \
ss << "No "; \
} \
if (Solve<ceres::examples::TestProblem##n>(false, 2)) { \
unconstrained_successes += 1; \
ss << "Yes "; \
} else { \
ss << "No "; \
} \
} \
ss << std::endl;
UNCONSTRAINED_SOLVE(1);
UNCONSTRAINED_SOLVE(2);
UNCONSTRAINED_SOLVE(3);
UNCONSTRAINED_SOLVE(4);
UNCONSTRAINED_SOLVE(5);
UNCONSTRAINED_SOLVE(6);
UNCONSTRAINED_SOLVE(7);
UNCONSTRAINED_SOLVE(8);
UNCONSTRAINED_SOLVE(9);
UNCONSTRAINED_SOLVE(10);
UNCONSTRAINED_SOLVE(11);
UNCONSTRAINED_SOLVE(12);
UNCONSTRAINED_SOLVE(13);
UNCONSTRAINED_SOLVE(14);
UNCONSTRAINED_SOLVE(15);
UNCONSTRAINED_SOLVE(16);
UNCONSTRAINED_SOLVE(17);
UNCONSTRAINED_SOLVE(18);
UNCONSTRAINED_SOLVE(19);
ss << "Unconstrained : " << unconstrained_successes << "/"
<< unconstrained_problems << std::endl;
#define CONSTRAINED_SOLVE(n) \
ss << "Constrained Problem " << n << " : "; \
if (CERES_GET_FLAG(FLAGS_problem) == #n || \
CERES_GET_FLAG(FLAGS_problem) == "all") { \
constrained_problems += 1; \
if (Solve<ceres::examples::TestProblem##n>(true, 0)) { \
constrained_successes += 1; \
ss << "Yes "; \
} else { \
ss << "No "; \
} \
} \
ss << std::endl;
CONSTRAINED_SOLVE(3);
CONSTRAINED_SOLVE(4);
CONSTRAINED_SOLVE(5);
CONSTRAINED_SOLVE(7);
CONSTRAINED_SOLVE(9);
CONSTRAINED_SOLVE(11);
CONSTRAINED_SOLVE(12);
CONSTRAINED_SOLVE(14);
CONSTRAINED_SOLVE(16);
CONSTRAINED_SOLVE(18);
ss << "Constrained : " << constrained_successes << "/" << constrained_problems
<< std::endl;
std::cout << ss.str();
return 0;
}