2010-07-19 03:57:34 +08:00
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// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
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/*
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This example contains a detailed discussion of the template expression
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technique used to implement the matrix tools in the dlib C++ library.
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It also gives examples showing how a user can create their own custom
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matrix expressions.
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Note that you should be familiar with the dlib::matrix before reading
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this example. So if you haven't done so already you should read the
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matrix_ex.cpp example program.
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*/
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#include <iostream>
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2012-12-08 22:32:13 +08:00
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#include <dlib/matrix.h>
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2010-07-19 03:57:34 +08:00
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using namespace dlib;
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using namespace std;
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// ----------------------------------------------------------------------------------------
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void custom_matrix_expressions_example();
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// ----------------------------------------------------------------------------------------
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int main()
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{
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// Declare some variables used below
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matrix<double,3,1> y;
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matrix<double,3,3> M;
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matrix<double> x;
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// set all elements to 1
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y = 1;
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M = 1;
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// ------------------------- Template Expressions -----------------------------
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// Now I will discuss the "template expressions" technique and how it is
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// used in the matrix object. First consider the following expression:
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x = y + y;
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/*
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Normally this expression results in machine code that looks, at a high
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level, like the following:
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temp = y + y;
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x = temp
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Temp is a temporary matrix returned by the overloaded + operator.
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temp then contains the result of adding y to itself. The assignment
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operator copies the value of temp into x and temp is then destroyed while
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the blissful C++ user never sees any of this.
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This is, however, totally inefficient. In the process described above
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you have to pay for the cost of constructing a temporary matrix object
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and allocating its memory. Then you pay the additional cost of copying
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it over to x. It also gets worse when you have more complex expressions
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such as x = round(y + y + y + M*y) which would involve the creation and copying
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of 5 temporary matrices.
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All these inefficiencies are removed by using the template expressions
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technique. The basic idea is as follows, instead of having operators and
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functions return temporary matrix objects you return a special object that
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represents the expression you wish to perform.
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So consider the expression x = y + y again. With dlib::matrix what happens
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is the expression y+y returns a matrix_exp object instead of a temporary matrix.
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The construction of a matrix_exp does not allocate any memory or perform any
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computations. The matrix_exp however has an interface that looks just like a
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dlib::matrix object and when you ask it for the value of one of its elements
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it computes that value on the spot. Only in the assignment operator does
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someone ask the matrix_exp for these values so this avoids the use of any
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temporary matrices. Thus the statement x = y + y is equivalent to the following
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code:
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// loop over all elements in y matrix
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for (long r = 0; r < y.nr(); ++r)
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for (long c = 0; c < y.nc(); ++c)
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x(r,c) = y(r,c) + y(r,c);
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This technique works for expressions of arbitrary complexity. So if you
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typed x = round(y + y + y + M*y) it would involve no temporary matrices being
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created at all. Each operator takes and returns only matrix_exp objects.
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Thus, no computations are performed until the assignment operator requests
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the values from the matrix_exp it receives as input.
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There is, however, a slight complication in all of this. It is for statements
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that involve the multiplication of a complex matrix_exp such as the following:
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*/
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x = M*(M+M+M+M+M+M+M);
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/*
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According to the discussion above, this statement would compute the value of
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M*(M+M+M+M+M+M+M) totally without any temporary matrix objects. This sounds
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good but we should take a closer look. Consider that the + operator is
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invoked 6 times. This means we have something like this:
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x = M * (matrix_exp representing M+M+M+M+M+M+M);
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M is being multiplied with a quite complex matrix_exp. Now recall that when
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you ask a matrix_exp what the value of any of its elements are it computes
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their values *right then*.
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If you think on what is involved in performing a matrix multiply you will
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realize that each element of a matrix is accessed M.nr() times. In the
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case of our above expression the cost of accessing an element of the
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matrix_exp on the right hand side is the cost of doing 6 addition operations.
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Thus, it would be faster to assign M+M+M+M+M+M+M to a temporary matrix and then
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multiply that by M. This is exactly what the dlib::matrix does under the covers.
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This is because it is able to spot expressions where the introduction of a
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temporary is needed to speed up the computation and it will automatically do this
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for you.
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Another complication that is dealt with automatically is aliasing. All matrix
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expressions are said to "alias" their contents. For example, consider
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the following expressions:
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M + M
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M * M
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We say that the expressions (M + M) and (M * M) alias M. Additionally, we say that
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the expression (M * M) destructively aliases M.
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To understand why we say (M * M) destructively aliases M consider what would happen
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if we attempted to evaluate it without first assigning (M * M) to a temporary matrix.
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That is, if we attempted to perform the following:
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for (long r = 0; r < M.nr(); ++r)
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for (long c = 0; c < M.nc(); ++c)
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M(r,c) = rowm(M,r)*colm(M,c);
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It is clear that the result would be corrupted and M wouldn't end up with the right
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values in it. So in this case we must perform the following:
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temp = M*M;
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M = temp;
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This sort of interaction is what defines destructive aliasing. Whenever we are
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assigning a matrix expression to a destination that is destructively aliased by
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the expression we need to introduce a temporary. The dlib::matrix is capable of
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recognizing the two forms of aliasing and introduces temporary matrices only when
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necessary.
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*/
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// Next we discuss how to create custom matrix expressions. In what follows we
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// will define three different matrix expressions and show their use.
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custom_matrix_expressions_example();
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}
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// ----------------------------------------------------------------------------------------
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// ----------------------------------------------------------------------------------------
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// ----------------------------------------------------------------------------------------
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template <typename M>
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struct example_op_trans
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{
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/*!
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This object defines a matrix expression that represents a transposed matrix.
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As discussed above, constructing this object doesn't compute anything. It just
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holds a reference to a matrix and presents an interface which defines
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matrix transposition.
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!*/
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// Here we simply hold a reference to the matrix we are supposed to be the transpose of.
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example_op_trans( const M& m_) : m(m_){}
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const M& m;
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// The cost field is used by matrix multiplication code to decide if a temporary needs to
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// be introduced. It represents the computational cost of evaluating an element of the
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// matrix expression. In this case we say that the cost of obtaining an element of the
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// transposed matrix is the same as obtaining an element of the original matrix (since
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// transpose doesn't really compute anything).
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const static long cost = M::cost;
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// Here we define the matrix expression's compile-time known dimensions. Since this
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// is a transpose we define them to be the reverse of M's dimensions.
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const static long NR = M::NC;
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const static long NC = M::NR;
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// Define the type of element in this matrix expression. Also define the
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// memory manager type used and the layout. Usually we use the same types as the
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// input matrix.
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typedef typename M::type type;
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typedef typename M::mem_manager_type mem_manager_type;
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typedef typename M::layout_type layout_type;
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// This is where the action is. This function is what defines the value of an element of
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// this matrix expression. Here we are saying that m(c,r) == trans(m)(r,c) which is just
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// the definition of transposition. Note also that we must define the return type from this
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// function as a typedef. This typedef lets us either return our argument by value or by
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// reference. In this case we use the same type as the underlying m matrix. Later in this
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// example program you will see two other options.
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typedef typename M::const_ret_type const_ret_type;
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const_ret_type apply (long r, long c) const { return m(c,r); }
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// Define the run-time defined dimensions of this matrix.
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long nr () const { return m.nc(); }
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long nc () const { return m.nr(); }
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// Recall the discussion of aliasing. Each matrix expression needs to define what
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// kind of aliasing it introduces so that we know when to introduce temporaries. The
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// aliases() function indicates that the matrix transpose expression aliases item if
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// and only if the m matrix aliases item.
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template <typename U> bool aliases ( const matrix_exp<U>& item) const { return m.aliases(item); }
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// This next function indicates that the matrix transpose expression also destructively
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// aliases anything m aliases. I.e. transpose has destructive aliasing.
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template <typename U> bool destructively_aliases ( const matrix_exp<U>& item) const { return m.aliases(item); }
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};
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// Here we define a simple function that creates and returns transpose expressions. Note that the
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// matrix_op<> template is a matrix_exp object and exists solely to reduce the amount of boilerplate
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// you have to write to create a matrix expression.
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template < typename M >
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const matrix_op<example_op_trans<M> > example_trans (
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const matrix_exp<M>& m
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)
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{
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typedef example_op_trans<M> op;
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// m.ref() returns a reference to the object of type M contained in the matrix expression m.
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return matrix_op<op>(op(m.ref()));
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}
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// ----------------------------------------------------------------------------------------
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template <typename T>
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struct example_op_vector_to_matrix
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{
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/*!
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This object defines a matrix expression that holds a reference to a std::vector<T>
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and makes it look like a column vector. Thus it enables you to use a std::vector
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as if it was a dlib::matrix.
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!*/
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example_op_vector_to_matrix( const std::vector<T>& vect_) : vect(vect_){}
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const std::vector<T>& vect;
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// This expression wraps direct memory accesses so we use the lowest possible cost.
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const static long cost = 1;
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const static long NR = 0; // We don't know the length of the vector until runtime. So we put 0 here.
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const static long NC = 1; // We do know that it only has one column (since it's a vector)
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typedef T type;
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// Since the std::vector doesn't use a dlib memory manager we list the default one here.
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typedef memory_manager<char>::kernel_1a mem_manager_type;
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// The layout type also doesn't really matter in this case. So we list row_major_layout
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// since it is a good default.
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typedef row_major_layout layout_type;
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// Note that we define const_ret_type to be a reference type. This way we can
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// return the contents of the std::vector by reference.
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typedef const T& const_ret_type;
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const_ret_type apply (long r, long ) const { return vect[r]; }
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long nr () const { return vect.size(); }
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long nc () const { return 1; }
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// This expression never aliases anything since it doesn't contain any matrix expression (it
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// contains only a std::vector which doesn't count since you can't assign a matrix expression
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// to a std::vector object).
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template <typename U> bool aliases ( const matrix_exp<U>& ) const { return false; }
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template <typename U> bool destructively_aliases ( const matrix_exp<U>& ) const { return false; }
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};
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template < typename T >
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const matrix_op<example_op_vector_to_matrix<T> > example_vector_to_matrix (
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const std::vector<T>& vector
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)
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{
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typedef example_op_vector_to_matrix<T> op;
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return matrix_op<op>(op(vector));
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}
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// ----------------------------------------------------------------------------------------
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template <typename M, typename T>
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struct example_op_add_scalar
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{
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/*!
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This object defines a matrix expression that represents a matrix with a single
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scalar value added to all its elements.
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!*/
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example_op_add_scalar( const M& m_, const T& val_) : m(m_), val(val_){}
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// A reference to the matrix
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const M& m;
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// A copy of the scalar value that should be added to each element of m
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const T val;
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// This time we add 1 to the cost since evaluating an element of this
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// expression means performing 1 addition operation.
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const static long cost = M::cost + 1;
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const static long NR = M::NR;
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const static long NC = M::NC;
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typedef typename M::type type;
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typedef typename M::mem_manager_type mem_manager_type;
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typedef typename M::layout_type layout_type;
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// Note that we declare const_ret_type to be a non-reference type. This is important
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// since apply() computes a new temporary value and thus we can't return a reference
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// to it.
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typedef type const_ret_type;
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const_ret_type apply (long r, long c) const { return m(r,c) + val; }
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long nr () const { return m.nr(); }
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long nc () const { return m.nc(); }
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// This expression aliases anything m aliases.
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template <typename U> bool aliases ( const matrix_exp<U>& item) const { return m.aliases(item); }
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// Unlike the transpose expression. This expression only destructively aliases something if m does.
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// So this expression has the regular non-destructive kind of aliasing.
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template <typename U> bool destructively_aliases ( const matrix_exp<U>& item) const { return m.destructively_aliases(item); }
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};
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template < typename M, typename T >
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const matrix_op<example_op_add_scalar<M,T> > add_scalar (
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const matrix_exp<M>& m,
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T val
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)
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{
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typedef example_op_add_scalar<M,T> op;
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return matrix_op<op>(op(m.ref(), val));
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}
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// ----------------------------------------------------------------------------------------
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void custom_matrix_expressions_example(
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)
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{
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matrix<double> x(2,3);
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x = 1, 1, 1,
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2, 2, 2;
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cout << x << endl;
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// Finally, lets use the matrix expressions we defined above.
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// prints the transpose of x
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cout << example_trans(x) << endl;
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// prints this:
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// 11 11 11
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// 12 12 12
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cout << add_scalar(x, 10) << endl;
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// matrix expressions can be nested, even the user defined ones.
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// the following statement prints this:
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// 11 12
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// 11 12
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// 11 12
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cout << example_trans(add_scalar(x, 10)) << endl;
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// Since we setup the alias detection correctly we can even do this:
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x = example_trans(add_scalar(x, 10));
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cout << "new x:\n" << x << endl;
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cout << "Do some testing with the example_vector_to_matrix() function: " << endl;
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std::vector<float> vect;
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vect.push_back(1);
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vect.push_back(3);
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vect.push_back(5);
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// Now lets treat our std::vector like a matrix and print some things.
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cout << example_vector_to_matrix(vect) << endl;
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cout << add_scalar(example_vector_to_matrix(vect), 10) << endl;
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/*
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2010-11-18 11:14:51 +08:00
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As an aside, note that dlib contains functions equivalent to the ones we
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defined above. They are:
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2010-07-19 03:57:34 +08:00
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- dlib::trans()
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2012-12-23 22:25:22 +08:00
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- dlib::mat() (converts things into matrices)
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2010-11-18 11:14:51 +08:00
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- operator+ (e.g. you can say my_mat + 1)
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2010-07-19 03:57:34 +08:00
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Also, if you are going to be creating your own matrix expression you should also
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look through the matrix code in the dlib/matrix folder. There you will find
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many other examples of matrix expressions.
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*/
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}
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// ----------------------------------------------------------------------------------------
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