Source code for torch_geometric.transforms.local_cartesian

from typing import Tuple

import torch

from torch_geometric.data import Data
from torch_geometric.data.datapipes import functional_transform
from torch_geometric.transforms import BaseTransform
from torch_geometric.utils import scatter


[docs]@functional_transform('local_cartesian') class LocalCartesian(BaseTransform): r"""Saves the relative Cartesian coordinates of linked nodes in its edge attributes (functional name: :obj:`local_cartesian`). Each coordinate gets *neighborhood-normalized* to a specified interval (:math:`[0, 1]` by default). Args: norm (bool, optional): If set to :obj:`False`, the output will not be normalized. (default: :obj:`True`) cat (bool, optional): If set to :obj:`False`, all existing edge attributes will be replaced. (default: :obj:`True`) interval ((float, float), optional): A tuple specifying the lower and upper bound for normalization. (default: :obj:`(0.0, 1.0)`) """ def __init__( self, norm: bool = True, cat: bool = True, interval: Tuple[float, float] = (0.0, 1.0), ): self.norm = norm self.cat = cat self.interval = interval def forward(self, data: Data) -> Data: assert data.pos is not None assert data.edge_index is not None (row, col), pos, pseudo = data.edge_index, data.pos, data.edge_attr cart = pos[row] - pos[col] cart = cart.view(-1, 1) if cart.dim() == 1 else cart if self.norm: max_value = scatter(cart.abs(), col, 0, pos.size(0), reduce='max') max_value = max_value.max(dim=-1, keepdim=True)[0] length = self.interval[1] - self.interval[0] center = (self.interval[0] + self.interval[1]) / 2 cart = length * cart / (2 * max_value[col]) + center if pseudo is not None and self.cat: pseudo = pseudo.view(-1, 1) if pseudo.dim() == 1 else pseudo data.edge_attr = torch.cat([pseudo, cart.type_as(pseudo)], dim=-1) else: data.edge_attr = cart return data