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    Estimate alpha from an input image and an input trimap using Learning Based Digital Matting as proposed by :cite:`grady2005random`.

    Parameters
    ----------
    image: numpy.ndarray
        Image with shape :math:`h \times  w \times d` for which the alpha matte should be estimated
    trimap: numpy.ndarray
        Trimap with shape :math:`h \times  w` of the image
    preconditioner: function or scipy.sparse.linalg.LinearOperator
        Function or sparse matrix that applies the preconditioner to a vector (default: jacobi)
    laplacian_kwargs: dictionary
        Arguments passed to the :code:`rw_laplacian` function
    cg_kwargs: dictionary
        Arguments passed to the :code:`cg` solver

    Returns
    -------
    alpha: numpy.ndarray
        Estimated alpha matte

    Example
    -------
    >>> from pymatting import *
    >>> image = load_image("data/lemur/lemur.png", "RGB")
    >>> trimap = load_image("data/lemur/lemur_trimap.png", "GRAY")
    >>> alpha = estimate_alpha_rw(
    ....    image,
    ...     trimap,
    ...     laplacian_kwargs={"sigma": 0.03},
    ...     cg_kwargs={"maxiter":2000})

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