from torch.autograd import Function from .backend import _backend __all__ = ['nearest_neighbor_interpolate'] class NeighborInterpolation(Function): @staticmethod def forward(ctx, points_coords, centers_coords, centers_features): """ :param ctx: :param points_coords: coordinates of points, FloatTensor[B, 3, N] :param centers_coords: coordinates of centers, FloatTensor[B, 3, M] :param centers_features: features of centers, FloatTensor[B, C, M] :return: points_features: features of points, FloatTensor[B, C, N] """ centers_coords = centers_coords.contiguous() points_coords = points_coords.contiguous() centers_features = centers_features.contiguous() points_features, indices, weights = _backend.three_nearest_neighbors_interpolate_forward( points_coords, centers_coords, centers_features ) ctx.save_for_backward(indices, weights) ctx.num_centers = centers_coords.size(-1) return points_features @staticmethod def backward(ctx, grad_output): indices, weights = ctx.saved_tensors grad_centers_features = _backend.three_nearest_neighbors_interpolate_backward( grad_output.contiguous(), indices, weights, ctx.num_centers ) return None, None, grad_centers_features nearest_neighbor_interpolate = NeighborInterpolation.apply