#include "ceres/polynomial.h"
#include <cmath>
#include <cstddef>
#include <vector>
#include "Eigen/Dense"
#include "ceres/internal/port.h"
#include "ceres/stringprintf.h"
#include "glog/logging.h"
namespace ceres {
namespace internal {
using std::string;
using std::vector;
namespace {
void BalanceCompanionMatrix(Matrix* companion_matrix_ptr) {
CHECK_NOTNULL(companion_matrix_ptr);
Matrix& companion_matrix = *companion_matrix_ptr;
Matrix companion_matrix_offdiagonal = companion_matrix;
companion_matrix_offdiagonal.diagonal().setZero();
const int degree = companion_matrix.rows();
const double gamma = 0.9;
bool scaling_has_changed;
do {
scaling_has_changed = false;
for (int i = 0; i < degree; ++i) {
const double row_norm = companion_matrix_offdiagonal.row(i).lpNorm<1>();
const double col_norm = companion_matrix_offdiagonal.col(i).lpNorm<1>();
int exponent = 0;
std::frexp(row_norm / col_norm, &exponent);
exponent /= 2;
if (exponent != 0) {
const double scaled_col_norm = std::ldexp(col_norm, exponent);
const double scaled_row_norm = std::ldexp(row_norm, -exponent);
if (scaled_col_norm + scaled_row_norm < gamma * (col_norm + row_norm)) {
scaling_has_changed = true;
companion_matrix_offdiagonal.row(i) *= std::ldexp(1.0, -exponent);
companion_matrix_offdiagonal.col(i) *= std::ldexp(1.0, exponent);
}
}
}
} while (scaling_has_changed);
companion_matrix_offdiagonal.diagonal() = companion_matrix.diagonal();
companion_matrix = companion_matrix_offdiagonal;
VLOG(3) << "Balanced companion matrix is\n" << companion_matrix;
}
void BuildCompanionMatrix(const Vector& polynomial,
Matrix* companion_matrix_ptr) {
CHECK_NOTNULL(companion_matrix_ptr);
Matrix& companion_matrix = *companion_matrix_ptr;
const int degree = polynomial.size() - 1;
companion_matrix.resize(degree, degree);
companion_matrix.setZero();
companion_matrix.diagonal(-1).setOnes();
companion_matrix.col(degree - 1) = -polynomial.reverse().head(degree);
}
Vector RemoveLeadingZeros(const Vector& polynomial_in) {
int i = 0;
while (i < (polynomial_in.size() - 1) && polynomial_in(i) == 0.0) {
++i;
}
return polynomial_in.tail(polynomial_in.size() - i);
}
void FindLinearPolynomialRoots(const Vector& polynomial,
Vector* real,
Vector* imaginary) {
CHECK_EQ(polynomial.size(), 2);
if (real != NULL) {
real->resize(1);
(*real)(0) = -polynomial(1) / polynomial(0);
}
if (imaginary != NULL) {
imaginary->setZero(1);
}
}
void FindQuadraticPolynomialRoots(const Vector& polynomial,
Vector* real,
Vector* imaginary) {
CHECK_EQ(polynomial.size(), 3);
const double a = polynomial(0);
const double b = polynomial(1);
const double c = polynomial(2);
const double D = b * b - 4 * a * c;
const double sqrt_D = sqrt(fabs(D));
if (real != NULL) {
real->setZero(2);
}
if (imaginary != NULL) {
imaginary->setZero(2);
}
if (D >= 0) {
if (real != NULL) {
if (b >= 0) {
(*real)(0) = (-b - sqrt_D) / (2.0 * a);
(*real)(1) = (2.0 * c) / (-b - sqrt_D);
} else {
(*real)(0) = (2.0 * c) / (-b + sqrt_D);
(*real)(1) = (-b + sqrt_D) / (2.0 * a);
}
}
return;
}
if (real != NULL) {
(*real)(0) = -b / (2.0 * a);
(*real)(1) = -b / (2.0 * a);
}
if (imaginary != NULL) {
(*imaginary)(0) = sqrt_D / (2.0 * a);
(*imaginary)(1) = -sqrt_D / (2.0 * a);
}
}
}
bool FindPolynomialRoots(const Vector& polynomial_in,
Vector* real,
Vector* imaginary) {
if (polynomial_in.size() == 0) {
LOG(ERROR) << "Invalid polynomial of size 0 passed to FindPolynomialRoots";
return false;
}
Vector polynomial = RemoveLeadingZeros(polynomial_in);
const int degree = polynomial.size() - 1;
VLOG(3) << "Input polynomial: " << polynomial_in.transpose();
if (polynomial.size() != polynomial_in.size()) {
VLOG(3) << "Trimmed polynomial: " << polynomial.transpose();
}
if (degree == 0) {
LOG(WARNING) << "Trying to extract roots from a constant "
<< "polynomial in FindPolynomialRoots";
return true;
}
if (degree == 1) {
FindLinearPolynomialRoots(polynomial, real, imaginary);
return true;
}
if (degree == 2) {
FindQuadraticPolynomialRoots(polynomial, real, imaginary);
return true;
}
const double leading_term = polynomial(0);
polynomial /= leading_term;
Matrix companion_matrix(degree, degree);
BuildCompanionMatrix(polynomial, &companion_matrix);
BalanceCompanionMatrix(&companion_matrix);
Eigen::EigenSolver<Matrix> solver(companion_matrix, false);
if (solver.info() != Eigen::Success) {
LOG(ERROR) << "Failed to extract eigenvalues from companion matrix.";
return false;
}
if (real != NULL) {
*real = solver.eigenvalues().real();
} else {
LOG(WARNING) << "NULL pointer passed as real argument to "
<< "FindPolynomialRoots. Real parts of the roots will not "
<< "be returned.";
}
if (imaginary != NULL) {
*imaginary = solver.eigenvalues().imag();
}
return true;
}
Vector DifferentiatePolynomial(const Vector& polynomial) {
const int degree = polynomial.rows() - 1;
CHECK_GE(degree, 0);
if (degree == 0) {
return Eigen::VectorXd::Zero(1);
}
Vector derivative(degree);
for (int i = 0; i < degree; ++i) {
derivative(i) = (degree - i) * polynomial(i);
}
return derivative;
}
void MinimizePolynomial(const Vector& polynomial,
const double x_min,
const double x_max,
double* optimal_x,
double* optimal_value) {
*optimal_x = (x_min + x_max) / 2.0;
*optimal_value = EvaluatePolynomial(polynomial, *optimal_x);
const double x_min_value = EvaluatePolynomial(polynomial, x_min);
if (x_min_value < *optimal_value) {
*optimal_value = x_min_value;
*optimal_x = x_min;
}
const double x_max_value = EvaluatePolynomial(polynomial, x_max);
if (x_max_value < *optimal_value) {
*optimal_value = x_max_value;
*optimal_x = x_max;
}
if (polynomial.rows() <= 2) {
return;
}
const Vector derivative = DifferentiatePolynomial(polynomial);
Vector roots_real;
if (!FindPolynomialRoots(derivative, &roots_real, NULL)) {
LOG(WARNING) << "Unable to find the critical points of "
<< "the interpolating polynomial.";
return;
}
for (int i = 0; i < roots_real.rows(); ++i) {
const double root = roots_real(i);
if ((root < x_min) || (root > x_max)) {
continue;
}
const double value = EvaluatePolynomial(polynomial, root);
if (value < *optimal_value) {
*optimal_value = value;
*optimal_x = root;
}
}
}
string FunctionSample::ToDebugString() const {
return StringPrintf("[x: %.8e, value: %.8e, gradient: %.8e, "
"value_is_valid: %d, gradient_is_valid: %d]",
x, value, gradient, value_is_valid, gradient_is_valid);
}
Vector FindInterpolatingPolynomial(const vector<FunctionSample>& samples) {
const int num_samples = samples.size();
int num_constraints = 0;
for (int i = 0; i < num_samples; ++i) {
if (samples[i].value_is_valid) {
++num_constraints;
}
if (samples[i].gradient_is_valid) {
++num_constraints;
}
}
const int degree = num_constraints - 1;
Matrix lhs = Matrix::Zero(num_constraints, num_constraints);
Vector rhs = Vector::Zero(num_constraints);
int row = 0;
for (int i = 0; i < num_samples; ++i) {
const FunctionSample& sample = samples[i];
if (sample.value_is_valid) {
for (int j = 0; j <= degree; ++j) {
lhs(row, j) = pow(sample.x, degree - j);
}
rhs(row) = sample.value;
++row;
}
if (sample.gradient_is_valid) {
for (int j = 0; j < degree; ++j) {
lhs(row, j) = (degree - j) * pow(sample.x, degree - j - 1);
}
rhs(row) = sample.gradient;
++row;
}
}
return lhs.fullPivLu().solve(rhs);
}
void MinimizeInterpolatingPolynomial(const vector<FunctionSample>& samples,
double x_min,
double x_max,
double* optimal_x,
double* optimal_value) {
const Vector polynomial = FindInterpolatingPolynomial(samples);
MinimizePolynomial(polynomial, x_min, x_max, optimal_x, optimal_value);
for (int i = 0; i < samples.size(); ++i) {
const FunctionSample& sample = samples[i];
if ((sample.x < x_min) || (sample.x > x_max)) {
continue;
}
const double value = EvaluatePolynomial(polynomial, sample.x);
if (value < *optimal_value) {
*optimal_x = sample.x;
*optimal_value = value;
}
}
}
} }