LSST Applications  21.0.0-147-g0e635eb1+1acddb5be5,22.0.0+052faf71bd,22.0.0+1ea9a8b2b2,22.0.0+6312710a6c,22.0.0+729191ecac,22.0.0+7589c3a021,22.0.0+9f079a9461,22.0.1-1-g7d6de66+b8044ec9de,22.0.1-1-g87000a6+536b1ee016,22.0.1-1-g8e32f31+6312710a6c,22.0.1-10-gd060f87+016f7cdc03,22.0.1-12-g9c3108e+df145f6f68,22.0.1-16-g314fa6d+c825727ab8,22.0.1-19-g93a5c75+d23f2fb6d8,22.0.1-19-gb93eaa13+aab3ef7709,22.0.1-2-g8ef0a89+b8044ec9de,22.0.1-2-g92698f7+9f079a9461,22.0.1-2-ga9b0f51+052faf71bd,22.0.1-2-gac51dbf+052faf71bd,22.0.1-2-gb66926d+6312710a6c,22.0.1-2-gcb770ba+09e3807989,22.0.1-20-g32debb5+b8044ec9de,22.0.1-23-gc2439a9a+fb0756638e,22.0.1-3-g496fd5d+09117f784f,22.0.1-3-g59f966b+1e6ba2c031,22.0.1-3-g849a1b8+f8b568069f,22.0.1-3-gaaec9c0+c5c846a8b1,22.0.1-32-g5ddfab5d3+60ce4897b0,22.0.1-4-g037fbe1+64e601228d,22.0.1-4-g8623105+b8044ec9de,22.0.1-5-g096abc9+d18c45d440,22.0.1-5-g15c806e+57f5c03693,22.0.1-7-gba73697+57f5c03693,master-g6e05de7fdc+c1283a92b8,master-g72cdda8301+729191ecac,w.2021.39
LSST Data Management Base Package
LeastSqFitter1d.h
Go to the documentation of this file.
1 // -*- LSST-C++ -*-
2 
3 /*
4  * LSST Data Management System
5  * Copyright 2008, 2009, 2010 LSST Corporation.
6  *
7  * This product includes software developed by the
8  * LSST Project (http://www.lsst.org/).
9  *
10  * This program is free software: you can redistribute it and/or modify
11  * it under the terms of the GNU General Public License as published by
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18  * GNU General Public License for more details.
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24 
25 #ifndef LEAST_SQ_FITTER_1D
26 #define LEAST_SQ_FITTER_1D
27 
28 #include <cstdio>
29 #include <memory>
30 #include <vector>
31 
32 #include "Eigen/Core"
33 #include "Eigen/SVD"
34 
37 
38 namespace lsst {
39 namespace meas {
40 namespace astrom {
41 namespace sip {
42 
63 template <class FittingFunc>
65 public:
67  int order);
68 
69  Eigen::VectorXd getParams();
70  Eigen::VectorXd getErrors();
71  FittingFunc getBestFitFunction();
72  double valueAt(double x);
74 
75  double getChiSq();
76  double getReducedChiSq();
77 
78 private:
79  void initFunctions();
80 
81  double func1d(double value, int exponent);
82 
83  std::vector<double> _x, _y, _s;
84  int _order; // Degree of polynomial to fit, e.g 4=> cubic
85  int _nData; // Number of data points, == _x.size()
86 
87  Eigen::JacobiSVD<Eigen::MatrixXd> _svd;
88  Eigen::VectorXd _par;
89 
91 };
92 
93 // The .cc part
94 
103 template <class FittingFunc>
105  const std::vector<double> &s, int order)
106  : _x(x), _y(y), _s(s), _order(order) {
107  if (order == 0) {
108  throw LSST_EXCEPT(pex::exceptions::RuntimeError, "Fit order must be >= 1");
109  }
110 
111  _nData = _x.size();
112  if (_nData != static_cast<int>(_y.size())) {
113  throw LSST_EXCEPT(pex::exceptions::RuntimeError, "x and y vectors of different lengths");
114  }
115  if (_nData != static_cast<int>(_s.size())) {
116  throw LSST_EXCEPT(pex::exceptions::RuntimeError, "x and s vectors of different lengths");
117  }
118 
119  if (_nData < _order) {
120  throw LSST_EXCEPT(pex::exceptions::RuntimeError, "Fewer data points than parameters");
121  }
122 
123  initFunctions();
124 
125  Eigen::MatrixXd design(_nData, _order);
126  Eigen::VectorXd rhs(_nData);
127  for (int i = 0; i < _nData; ++i) {
128  rhs[i] = y[i] / _s[i];
129  for (int j = 0; j < _order; ++j) {
130  design(i, j) = func1d(_x[i], j) / _s[i];
131  }
132  }
133  _svd.compute(design, Eigen::ComputeThinU | Eigen::ComputeThinV);
134  _par = _svd.solve(rhs);
135 }
136 
138 template <class FittingFunc>
140  Eigen::VectorXd vec = Eigen::VectorXd::Zero(_order);
141  for (int i = 0; i < _order; ++i) {
142  vec(i) = _par(i);
143  }
144  return vec;
145 }
146 
148 template <class FittingFunc>
150  Eigen::ArrayXd variance(_order);
151  for (int i = 0; i < _order; ++i) {
152  variance[i] = _svd.matrixV().row(i).dot(
153  (_svd.singularValues().array().inverse().square() * _svd.matrixV().col(i).array()).matrix());
154  }
155  return variance.sqrt().matrix();
156 }
157 
159 template <class FittingFunc>
161  // FittingFunc and LeastSqFitter disagree on the definition of order of a function.
162  // LSF says that a linear function is order 2 (two coefficients), FF says only 1
163  FittingFunc func(_order - 1);
164 
165  for (int i = 0; i < _order; ++i) {
166  func.setParameter(i, _par(i));
167  }
168  return func;
169 }
170 
172 template <class FittingFunc>
174  FittingFunc f = getBestFitFunction();
175 
176  return f(x);
177 }
178 
181 template <class FittingFunc>
184  out.reserve(_nData);
185 
186  FittingFunc f = getBestFitFunction();
187 
188  for (int i = 0; i < _nData; ++i) {
189  out.push_back(_y[i] - f(_x[i]));
190  }
191 
192  return out;
193 }
194 
198 template <class FittingFunc>
200  FittingFunc f = getBestFitFunction();
201 
202  double chisq = 0;
203  for (int i = 0; i < _nData; ++i) {
204  double val = _y[i] - f(_x[i]);
205  val /= _s[i];
206  chisq += pow(val, 2);
207  }
208 
209  return chisq;
210 }
211 
217 template <class FittingFunc>
219  return getChiSq() / (double)(_nData - _order);
220 }
221 
224 template <class FittingFunc>
226  _funcArray.reserve(_order);
227 
229  coeff.reserve(_order);
230 
231  coeff.push_back(1.0);
232  for (int i = 0; i < _order; ++i) {
233  std::shared_ptr<FittingFunc> p(new FittingFunc(coeff));
234  _funcArray.push_back(p);
235  coeff[i] = 0.0;
236  coeff.push_back(1.0); // coeff now looks like [0,0,...,0,1]
237  }
238 }
239 
240 template <class FittingFunc>
241 double LeastSqFitter1d<FittingFunc>::func1d(double value, int exponent) {
242  return (*_funcArray[exponent])(value);
243 }
244 
245 } // namespace sip
246 } // namespace astrom
247 } // namespace meas
248 } // namespace lsst
249 
250 #endif
double x
#define LSST_EXCEPT(type,...)
Create an exception with a given type.
Definition: Exception.h:48
afw::table::Key< afw::table::Array< VariancePixelT > > variance
int y
Definition: SpanSet.cc:48
Fit an lsst::afw::math::Function1 object to a set of data points in one dimension.
std::vector< double > residuals()
Return a vector of residuals of the fit (i.e the difference between the input y values,...
double getChiSq()
Return a measure of the goodness of fit.
Eigen::VectorXd getParams()
Return the best fit parameters as an Eigen::Matrix.
double getReducedChiSq()
Return a measure of the goodness of fit.
Eigen::VectorXd getErrors()
Return the 1 sigma uncertainties in the best fit parameters as an Eigen::Matrix.
FittingFunc getBestFitFunction()
Return the best fit polynomial as a lsst::afw::math::Function1 object.
LeastSqFitter1d(const std::vector< double > &x, const std::vector< double > &y, const std::vector< double > &s, int order)
Fit a 1d polynomial to a set of data points z(x, y)
double valueAt(double x)
Calculate the value of the function at a given point.
Reports errors that are due to events beyond the control of the program.
Definition: Runtime.h:104
A base class for image defects.
T push_back(T... args)
T reserve(T... args)
T size(T... args)
int exponent
Definition: orientation.cc:41
ImageT val
Definition: CR.cc:146
table::Key< table::Array< double > > coeff
Definition: PsfexPsf.cc:362
table::Key< int > order