Source code for monai.networks.layers.utils

# Copyright (c) MONAI Consortium
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#     http://www.apache.org/licenses/LICENSE-2.0
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

from __future__ import annotations

import torch.nn

from monai.networks.layers.factories import Act, Dropout, Norm, Pool, split_args
from monai.utils import has_option

__all__ = ["get_norm_layer", "get_act_layer", "get_dropout_layer", "get_pool_layer"]


[docs] def get_norm_layer(name: tuple | str, spatial_dims: int | None = 1, channels: int | None = 1): """ Create a normalization layer instance. For example, to create normalization layers: .. code-block:: python from monai.networks.layers import get_norm_layer g_layer = get_norm_layer(name=("group", {"num_groups": 1})) n_layer = get_norm_layer(name="instance", spatial_dims=2) Args: name: a normalization type string or a tuple of type string and parameters. spatial_dims: number of spatial dimensions of the input. channels: number of features/channels when the normalization layer requires this parameter but it is not specified in the norm parameters. """ if name == "": return torch.nn.Identity() norm_name, norm_args = split_args(name) norm_type = Norm[norm_name, spatial_dims] kw_args = dict(norm_args) if has_option(norm_type, "num_features") and "num_features" not in kw_args: kw_args["num_features"] = channels if has_option(norm_type, "num_channels") and "num_channels" not in kw_args: kw_args["num_channels"] = channels return norm_type(**kw_args)
[docs] def get_act_layer(name: tuple | str): """ Create an activation layer instance. For example, to create activation layers: .. code-block:: python from monai.networks.layers import get_act_layer s_layer = get_act_layer(name="swish") p_layer = get_act_layer(name=("prelu", {"num_parameters": 1, "init": 0.25})) Args: name: an activation type string or a tuple of type string and parameters. """ if name == "": return torch.nn.Identity() act_name, act_args = split_args(name) act_type = Act[act_name] return act_type(**act_args)
[docs] def get_dropout_layer(name: tuple | str | float | int, dropout_dim: int | None = 1): """ Create a dropout layer instance. For example, to create dropout layers: .. code-block:: python from monai.networks.layers import get_dropout_layer d_layer = get_dropout_layer(name="dropout") a_layer = get_dropout_layer(name=("alphadropout", {"p": 0.25})) Args: name: a dropout ratio or a tuple of dropout type and parameters. dropout_dim: the spatial dimension of the dropout operation. """ if name == "": return torch.nn.Identity() if isinstance(name, (int, float)): # if dropout was specified simply as a p value, use default name and make a keyword map with the value drop_name = Dropout.DROPOUT drop_args = {"p": float(name)} else: drop_name, drop_args = split_args(name) drop_type = Dropout[drop_name, dropout_dim] return drop_type(**drop_args)
[docs] def get_pool_layer(name: tuple | str, spatial_dims: int | None = 1): """ Create a pooling layer instance. For example, to create adaptiveavg layer: .. code-block:: python from monai.networks.layers import get_pool_layer pool_layer = get_pool_layer(("adaptiveavg", {"output_size": (1, 1, 1)}), spatial_dims=3) Args: name: a pooling type string or a tuple of type string and parameters. spatial_dims: number of spatial dimensions of the input. """ if name == "": return torch.nn.Identity() pool_name, pool_args = split_args(name) pool_type = Pool[pool_name, spatial_dims] return pool_type(**pool_args)