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pytorch-image-models/timm/models/layers/create_norm_act.py

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""" NormAct (Normalizaiton + Activation Layer) Factory
Create norm + act combo modules that attempt to be backwards compatible with separate norm + act
isntances in models. Where these are used it will be possible to swap separate BN + act layers with
combined modules like IABN or EvoNorms.
Hacked together by / Copyright 2020 Ross Wightman
"""
import types
import functools
from .evo_norm import *
from .filter_response_norm import FilterResponseNormAct2d, FilterResponseNormTlu2d
from .norm_act import BatchNormAct2d, GroupNormAct
from .inplace_abn import InplaceAbn
_NORM_ACT_MAP = dict(
batchnorm=BatchNormAct2d,
groupnorm=GroupNormAct,
evonormb0=EvoNorm2dB0,
evonormb1=EvoNorm2dB1,
evonormb2=EvoNorm2dB2,
evonorms0=EvoNorm2dS0,
evonorms0a=EvoNorm2dS0a,
evonorms1=EvoNorm2dS1,
evonorms1a=EvoNorm2dS1a,
evonorms2=EvoNorm2dS2,
evonorms2a=EvoNorm2dS2a,
frn=FilterResponseNormAct2d,
frntlu=FilterResponseNormTlu2d,
inplaceabn=InplaceAbn,
iabn=InplaceAbn,
)
_NORM_ACT_TYPES = {m for n, m in _NORM_ACT_MAP.items()}
# has act_layer arg to define act type
_NORM_ACT_REQUIRES_ARG = {BatchNormAct2d, GroupNormAct, FilterResponseNormAct2d, InplaceAbn}
def get_norm_act_layer(layer_name):
layer_name = layer_name.replace('_', '').lower().split('-')[0]
layer = _NORM_ACT_MAP.get(layer_name, None)
assert layer is not None, "Invalid norm_act layer (%s)" % layer_name
return layer
def create_norm_act(layer_name, num_features, apply_act=True, jit=False, **kwargs):
layer_parts = layer_name.split('-') # e.g. batchnorm-leaky_relu
assert len(layer_parts) in (1, 2)
layer = get_norm_act_layer(layer_parts[0])
#activation_class = layer_parts[1].lower() if len(layer_parts) > 1 else '' # FIXME support string act selection?
layer_instance = layer(num_features, apply_act=apply_act, **kwargs)
if jit:
layer_instance = torch.jit.script(layer_instance)
return layer_instance
def convert_norm_act(norm_layer, act_layer):
assert isinstance(norm_layer, (type, str, types.FunctionType, functools.partial))
assert act_layer is None or isinstance(act_layer, (type, str, types.FunctionType, functools.partial))
norm_act_kwargs = {}
# unbind partial fn, so args can be rebound later
if isinstance(norm_layer, functools.partial):
norm_act_kwargs.update(norm_layer.keywords)
norm_layer = norm_layer.func
if isinstance(norm_layer, str):
norm_act_layer = get_norm_act_layer(norm_layer)
elif norm_layer in _NORM_ACT_TYPES:
norm_act_layer = norm_layer
elif isinstance(norm_layer, types.FunctionType):
# if function type, must be a lambda/fn that creates a norm_act layer
norm_act_layer = norm_layer
else:
type_name = norm_layer.__name__.lower()
if type_name.startswith('batchnorm'):
norm_act_layer = BatchNormAct2d
elif type_name.startswith('groupnorm'):
norm_act_layer = GroupNormAct
else:
assert False, f"No equivalent norm_act layer for {type_name}"
if norm_act_layer in _NORM_ACT_REQUIRES_ARG:
# pass `act_layer` through for backwards compat where `act_layer=None` implies no activation.
# In the future, may force use of `apply_act` with `act_layer` arg bound to relevant NormAct types
norm_act_kwargs.setdefault('act_layer', act_layer)
if norm_act_kwargs:
norm_act_layer = functools.partial(norm_act_layer, **norm_act_kwargs) # bind/rebind args
return norm_act_layer