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import numpy as np
# import scipy.sparse as sparse
import visualization.Animation as Animation


""" Family Functions """


def joints(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    joints : (J) ndarray
        Array of joint indices
    """
    return np.arange(len(parents), dtype=int)


def joints_list(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    joints : [ndarray]
        List of arrays of joint idices for
        each joint
    """
    return list(joints(parents)[:, np.newaxis])


def parents_list(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    parents : [ndarray]
        List of arrays of joint idices for
        the parents of each joint
    """
    return list(parents[:, np.newaxis])


def children_list(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    children : [ndarray]
        List of arrays of joint indices for
        the children of each joint
    """

    def joint_children(i):
        return [j for j, p in enumerate(parents) if p == i]

    return list(map(lambda j: np.array(joint_children(j)), joints(parents)))


def descendants_list(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    descendants : [ndarray]
        List of arrays of joint idices for
        the descendants of each joint
    """

    children = children_list(parents)

    def joint_descendants(i):
        return sum([joint_descendants(j) for j in children[i]], list(children[i]))

    return list(map(lambda j: np.array(joint_descendants(j)), joints(parents)))


def ancestors_list(parents):
    """
    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    ancestors : [ndarray]
        List of arrays of joint idices for
        the ancestors of each joint
    """

    decendants = descendants_list(parents)

    def joint_ancestors(i):
        return [j for j in joints(parents) if i in decendants[j]]

    return list(map(lambda j: np.array(joint_ancestors(j)), joints(parents)))


""" Mask Functions """


def mask(parents, filter):
    """
    Constructs a Mask for a give filter

    A mask is a (J, J) ndarray truth table for a given
    condition over J joints. For example there
    may be a mask specifying if a joint N is a
    child of another joint M.

    This could be constructed into a mask using
    `m = mask(parents, children_list)` and the condition
    of childhood tested using `m[N, M]`.

    Parameters
    ----------

    parents : (J) ndarray
        parents array

    filter : (J) ndarray -> [ndarray]
        function that outputs a list of arrays
        of joint indices for some condition

    Returns
    -------

    mask : (N, N) ndarray
        boolean truth table of given condition
    """
    m = np.zeros((len(parents), len(parents))).astype(bool)
    jnts = joints(parents)
    fltr = filter(parents)
    for i, f in enumerate(fltr): m[i, :] = np.any(jnts[:, np.newaxis] == f[np.newaxis, :], axis=1)
    return m


def joints_mask(parents): return np.eye(len(parents)).astype(bool)


def children_mask(parents): return mask(parents, children_list)


def parents_mask(parents): return mask(parents, parents_list)


def descendants_mask(parents): return mask(parents, descendants_list)


def ancestors_mask(parents): return mask(parents, ancestors_list)


""" Search Functions """


def joint_chain_ascend(parents, start, end):
    chain = []
    while start != end:
        chain.append(start)
        start = parents[start]
    chain.append(end)
    return np.array(chain, dtype=int)


""" Constraints """


def constraints(anim, **kwargs):
    """
    Constraint list for Animation

    This constraint list can be used in the
    VerletParticle solver to constrain
    a animation global joint positions.

    Parameters
    ----------

    anim : Animation
        Input animation

    masses : (F, J) ndarray
        Optional list of masses
        for joints J across frames F
        defaults to weighting by
        vertical height

    Returns
    -------

    constraints : [(int, int, (F, J) ndarray, (F, J) ndarray, (F, J) ndarray)]
        A list of constraints in the format:
        (Joint1, Joint2, Masses1, Masses2, Lengths)

    """

    masses = kwargs.pop('masses', None)

    children = children_list(anim.parents)
    constraints = []

    points_offsets = Animation.offsets_global(anim)
    points = Animation.positions_global(anim)

    if masses is None:
        masses = 1.0 / (0.1 + np.absolute(points_offsets[:, 1]))
        masses = masses[np.newaxis].repeat(len(anim), axis=0)

    for j in range(anim.shape[1]):

        """ Add constraints between all joints and their children """
        for c0 in children[j]:

            dists = np.sum((points[:, c0] - points[:, j]) ** 2.0, axis=1) ** 0.5
            constraints.append((c0, j, masses[:, c0], masses[:, j], dists))

            """ Add constraints between all children of joint """
            for c1 in children[j]:
                if c0 == c1: continue

                dists = np.sum((points[:, c0] - points[:, c1]) ** 2.0, axis=1) ** 0.5
                constraints.append((c0, c1, masses[:, c0], masses[:, c1], dists))

    return constraints


""" Graph Functions """


def graph(anim):
    """
    Generates a weighted adjacency matrix
    using local joint distances along
    the skeletal structure.

    Joints which are not connected
    are assigned the weight `0`.

    Joints which actually have zero distance
    between them, but are still connected, are
    perturbed by some minimal amount.

    The output of this routine can be used
    with the `scipy.sparse.csgraph`
    routines for graph analysis.

    Parameters
    ----------

    anim : Animation
        input animation

    Returns
    -------

    graph : (N, N) ndarray
        weight adjacency matrix using
        local distances along the
        skeletal structure from joint
        N to joint M. If joints are not
        directly connected are assigned
        the weight `0`.
    """

    graph = np.zeros(anim.shape[1], anim.shape[1])
    lengths = np.sum(anim.offsets ** 2.0, axis=1) ** 0.5 + 0.001

    for i, p in enumerate(anim.parents):
        if p == -1: continue
        graph[i, p] = lengths[p]
        graph[p, i] = lengths[p]

    return graph


def distances(anim):
    """
    Generates a distance matrix for
    pairwise joint distances along
    the skeletal structure

    Parameters
    ----------

    anim : Animation
        input animation

    Returns
    -------

    distances : (N, N) ndarray
        array of pairwise distances
        along skeletal structure
        from some joint N to some
        joint M
    """

    distances = np.zeros((anim.shape[1], anim.shape[1]))
    generated = distances.copy().astype(bool)

    joint_lengths = np.sum(anim.offsets ** 2.0, axis=1) ** 0.5
    joint_children = children_list(anim)
    joint_parents = parents_list(anim)

    def find_distance(distances, generated, prev, i, j):

        """ If root, identity, or already generated, return """
        if j == -1: return (0.0, True)
        if j == i: return (0.0, True)
        if generated[i, j]: return (distances[i, j], True)

        """ Find best distances along parents and children """
        par_dists = [(joint_lengths[j], find_distance(distances, generated, j, i, p)) for p in joint_parents[j] if
                     p != prev]
        out_dists = [(joint_lengths[c], find_distance(distances, generated, j, i, c)) for c in joint_children[j] if
                     c != prev]

        """ Check valid distance and not dead end """
        par_dists = [a + d for (a, (d, f)) in par_dists if f]
        out_dists = [a + d for (a, (d, f)) in out_dists if f]

        """ All dead ends """
        if (out_dists + par_dists) == []: return (0.0, False)

        """ Get minimum path """
        dist = min(out_dists + par_dists)
        distances[i, j] = dist;
        distances[j, i] = dist
        generated[i, j] = True;
        generated[j, i] = True

    for i in range(anim.shape[1]):
        for j in range(anim.shape[1]):
            find_distance(distances, generated, -1, i, j)

    return distances


def edges(parents):
    """
    Animation structure edges

    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    edges : (M, 2) ndarray
        array of pairs where each
        pair contains two indices of a joints
        which corrisponds to an edge in the
        joint structure going from parent to child.
    """

    return np.array(list(zip(parents, joints(parents)))[1:])


def incidence(parents):
    """
    Incidence Matrix

    Parameters
    ----------

    parents : (J) ndarray
        parents array

    Returns
    -------

    incidence : (N, M) ndarray

        Matrix of N joint positions by
        M edges which each entry is either
        1 or -1 and multiplication by the
        joint positions returns the an
        array of vectors along each edge
        of the structure
    """

    es = edges(parents)

    inc = np.zeros((len(parents) - 1, len(parents))).astype(np.int)
    for i, e in enumerate(es):
        inc[i, e[0]] = 1
        inc[i, e[1]] = -1

    return inc.T