An instance of the data type Aff_transformation_d<Kernel> is an affine transformation of d-dimensional space. It is specified by a square matrix M of dimension d + 1. All entries in the last row of M except the diagonal entry must be zero; the diagonal entry must be non-zero. A point p with homogeneous coordinates (p[0], , p[d]) can be transformed into the point p.transform(A) = Mp, where A is an affine transformation created from M by the constructors below.
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the linear algebra layer.
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the matrix type.
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introduces some
transformation.
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introduces the identity transformation in
d-dimensional space.
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introduces the
transformation of d-space specified by matrix M.
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introduces the transformation of d-space
specified by a diagonal matrix with entries set [start,end) on
the diagonal (a scaling of the space).
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introduces the translation by vector v.
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returns a scaling by a scale factor num/den.
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returns a planar rotation
with sine and cosine values sin_num/den and cos_num/den
in the plane spanned by the base vectors be1 and be2 in
d-space. Thus the default use delivers a planar rotation in the
x-y plane.
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returns a planar
rotation within a two-dimensional linear subspace. The subspace is
spanned by the base vectors be1 and be2 in d-space. The
rotation parameters are given by the 2-dimensional direction
dir, such that the difference between the sines and cosines of
the rotation given by dir and the approximated rotation are at
most num/den each.
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| the dimension of the underlying space | ||
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| returns the transformation matrix | ||
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returns the inverse
transformation.
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| composition of transformations. Note that transformations are not necessarily commutative. t*s is the transformation which transforms first by t and then by s. |
Affine Transformations are implemented by matrices of number type RT as a handle type. All operations like creation, initialization, input and output on a transformation t take time O(t.dimension()2). dimension() takes constant time. The operations for inversion and composition have the cubic costs of the used matrix operations. The space requirement is O(t.dimension()2).