# Copyright CNRS/Inria/UNS # Contributor(s): Eric Debreuve (since 2019) # # eric.debreuve@cnrs.fr # # This software is governed by the CeCILL license under French law and # abiding by the rules of distribution of free software. You can use, # modify and/ or redistribute the software under the terms of the CeCILL # license as circulated by CEA, CNRS and INRIA at the following URL # "http://www.cecill.info". # # As a counterpart to the access to the source code and rights to copy, # modify and redistribute granted by the license, users are provided only # with a limited warranty and the software's author, the holder of the # economic rights, and the successive licensors have only limited # liability. # # In this respect, the user's attention is drawn to the risks associated # with loading, using, modifying and/or developing or reproducing the # software by the user in light of its specific status of free software, # that may mean that it is complicated to manipulate, and that also # therefore means that it is reserved for developers and experienced # professionals having in-depth computer knowledge. Users are therefore # encouraged to load and test the software's suitability as regards their # requirements in conditions enabling the security of their systems and/or # data to be ensured and, more generally, to use and operate it in the # same conditions as regards security. # # The fact that you are presently reading this means that you have had # knowledge of the CeCILL license and that you accept its terms. from type import array_t import numpy as np_ invalid_n_neighbors_c = 27 # Must be positive and higher (strictly) than # the max number of neighbors in a skeleton shifts_of_26_neighbors_c = tuple( (i, j, k) for i in (-1, 0, 1) for j in (-1, 0, 1) for k in (-1, 0, 1) if i != 0 or j != 0 or k != 0 ) def PartLMap(map_: array_t) -> array_t: # # The part mask is labeled as follows: # background=invalid_n_neighbors_c; Pixels of the skeleton=number of # neighboring pixels that belong to the skeleton (as expected, # isolated pixels receive 0). # result = np_.array(map_, dtype=np_.int8) result[result > 0] = 1 padded_sm = np_.pad(map_ > 0, 1, "constant") for shifts in shifts_of_26_neighbors_c: result += np_.roll(padded_sm, shifts, axis=(0, 1, 2))[1:-1, 1:-1, 1:-1] result[map_ == 0] = invalid_n_neighbors_c + 1 return result - 1