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The Eigen library can map existing memory into Eigen matrices.

float array[3];
Map<Vector3f>(array, 3).fill(10);
int data[4] = 1, 2, 3, 4;
Matrix2i mat2x2(data);
MatrixXi mat2x2 = Map<Matrix2i>(data);
MatrixXi mat2x2 = Map<MatrixXi>(data, 2, 2);

My question is, how can we get c array (e.g. float[] a) from eigen matrix (e.g. Matrix3f m)? What it the real layout of eigen matrix? Is the real data stored as in normal c array?

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These aren't standard datatypes. Is "Eigen" the name of the library, or a reference to the mathematical underpinnings? If the latter what library are the types from? Also, C doesn't have template types. Since matrices are 2-dimensional, what exactly do you want in the plain array? A particular row or column, or the entire matrix reshaped to one dimension? – outis Dec 9 '11 at 9:20
@outis Eigen refers to a library. – Christian Rau Dec 9 '11 at 11:47
@ChristianRau: it can, but I want to make absolutely sure that that's what lil is referring to. – outis Dec 9 '11 at 11:51
@ChristianRau yes, I refer to – lil Dec 13 '11 at 7:05
up vote 25 down vote accepted

You can use the data() member function of the Eigen Matrix class. The layout by default is column-major, not row-major as a multidimensional C array (the layout can be chosen when creating a Matrix object). For sparse matrices the preceding sentence obviously doesn't apply.

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To convert normal data type to eigen matrix type

  double *X; // non-NULL pointer to some data

You can create an nRows x nCols size double matrix using the Map functionality like this:

  MatrixXd eigenX = Map<MatrixXd>( X, nRows, nCols );

To convert eigen matrix type into normal data type

  MatrixXd resultEigen;   // Eigen matrix with some result (non NULL!)

  double *resultC;                // NULL pointer

  Map<MatrixXd>( resultC, resultEigen.rows(), resultEigen.cols() ) =   resultEigen;

In this way you can get in and out from eigen matrix. Full credits goes to

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You need to use the Map function again. Please see the example here:

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ComplexEigenSolver < MyMatrix > es;
complex<double> *eseig;
eseig=(complex<double> *)es.eigenvalues().data();
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