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Chapter 2.nb
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Chapter 2.nb
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A Mathematica NURBS (Non-Uniform Rational B-Splines) Package and Its \
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Author: Liutong Zhou
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All the customized functions we showed here are included in the package \
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B-Spline Basis Function is calculate by MyBSplineBasis[U,i,p,u] in the \
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This is the same solution as that given in example 2.4.
Mathematica also has a built-in B-Spline Basis Function, which is more \
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