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git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@870 d0cd1f9f-072b-0410-8dd7-cf729c803f20
135 lines
4.7 KiB
C++
135 lines
4.7 KiB
C++
/**********************************************************************
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* File: linlsq.h (Formerly llsq.h)
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* Description: Linear Least squares fitting code.
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* Author: Ray Smith
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* Created: Thu Sep 12 08:44:51 BST 1991
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*
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* (C) Copyright 1991, Hewlett-Packard Ltd.
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** Licensed under the Apache License, Version 2.0 (the "License");
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** you may not use this file except in compliance with the License.
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** You may obtain a copy of the License at
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** http://www.apache.org/licenses/LICENSE-2.0
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** Unless required by applicable law or agreed to in writing, software
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** distributed under the License is distributed on an "AS IS" BASIS,
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** WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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** See the License for the specific language governing permissions and
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** limitations under the License.
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*
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**********************************************************************/
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#ifndef TESSERACT_CCSTRUCT_LINLSQ_H_
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#define TESSERACT_CCSTRUCT_LINLSQ_H_
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#include "points.h"
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#include "params.h"
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class LLSQ {
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public:
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LLSQ() { // constructor
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clear(); // set to zeros
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}
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void clear(); // initialize
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// Adds an element with a weight of 1.
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void add(double x, double y);
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// Adds an element with a specified weight.
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void add(double x, double y, double weight);
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// Adds a whole LLSQ.
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void add(const LLSQ& other);
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// Deletes an element with a weight of 1.
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void remove(double x, double y);
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inT32 count() const { // no of elements
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return static_cast<int>(total_weight + 0.5);
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}
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double m() const; // get gradient
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double c(double m) const; // get constant
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double rms(double m, double c) const; // get error
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double pearson() const; // get correlation coefficient.
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// Returns the x,y means as an FCOORD.
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FCOORD mean_point() const;
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// Returns the average sum of squared perpendicular error from a line
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// through mean_point() in the direction dir.
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double rms_orth(const FCOORD &dir) const;
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// Returns the direction of the fitted line as a unit vector, using the
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// least mean squared perpendicular distance. The line runs through the
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// mean_point, i.e. a point p on the line is given by:
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// p = mean_point() + lambda * vector_fit() for some real number lambda.
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// Note that the result (0<=x<=1, -1<=y<=-1) is directionally ambiguous
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// and may be negated without changing its meaning, since a line is only
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// unique to a range of pi radians.
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// Modernists prefer to think of this as an Eigenvalue problem, but
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// Pearson had the simple solution in 1901.
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//
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// Note that this is equivalent to returning the Principal Component in PCA,
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// or the eigenvector corresponding to the largest eigenvalue in the
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// covariance matrix.
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FCOORD vector_fit() const;
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// Returns the covariance.
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double covariance() const {
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if (total_weight > 0.0)
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return (sigxy - sigx * sigy / total_weight) / total_weight;
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else
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return 0.0;
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}
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double x_variance() const {
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if (total_weight > 0.0)
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return (sigxx - sigx * sigx / total_weight) / total_weight;
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else
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return 0.0;
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}
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double y_variance() const {
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if (total_weight > 0.0)
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return (sigyy - sigy * sigy / total_weight) / total_weight;
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else
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return 0.0;
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}
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private:
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double total_weight; // no of elements or sum of weights.
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double sigx; // sum of x
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double sigy; // sum of y
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double sigxx; // sum x squared
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double sigxy; // sum of xy
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double sigyy; // sum y squared
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};
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// Returns the median value of the vector, given that the values are
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// circular, with the given modulus. Values may be signed or unsigned,
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// eg range from -pi to pi (modulus 2pi) or from 0 to 2pi (modulus 2pi).
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// NOTE that the array is shuffled, but the time taken is linear.
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// An assumption is made that most of the values are spread over no more than
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// half the range, but wrap-around is accounted for if the median is near
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// the wrap-around point.
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// Cannot be a member of GenericVector, as it makes heavy used of LLSQ.
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// T must be an integer or float/double type.
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template<typename T> T MedianOfCircularValues(T modulus, GenericVector<T>* v) {
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LLSQ stats;
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T halfrange = static_cast<T>(modulus / 2);
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int num_elements = v->size();
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for (int i = 0; i < num_elements; ++i) {
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stats.add((*v)[i], (*v)[i] + halfrange);
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}
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bool offset_needed = stats.y_variance() < stats.x_variance();
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if (offset_needed) {
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for (int i = 0; i < num_elements; ++i) {
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(*v)[i] += halfrange;
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}
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}
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int median_index = v->choose_nth_item(num_elements / 2);
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if (offset_needed) {
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for (int i = 0; i < num_elements; ++i) {
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(*v)[i] -= halfrange;
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}
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}
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return (*v)[median_index];
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}
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#endif // TESSERACT_CCSTRUCT_LINLSQ_H_
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