LazyInstanceNorm2d¶
-
class
torch.nn.
LazyInstanceNorm2d
(eps=1e-05, momentum=0.1, affine=True, track_running_stats=True, device=None, dtype=None)[source]¶ A
torch.nn.InstanceNorm2d
module with lazy initialization of thenum_features
argument of theInstanceNorm2d
that is inferred from theinput.size(1)
. The attributes that will be lazily initialized are weight, bias, running_mean and running_var.Check the
torch.nn.modules.lazy.LazyModuleMixin
for further documentation on lazy modules and their limitations.- Parameters
num_features – from an expected input of size or
eps – a value added to the denominator for numerical stability. Default: 1e-5
momentum – the value used for the running_mean and running_var computation. Default: 0.1
affine – a boolean value that when set to
True
, this module has learnable affine parameters, initialized the same way as done for batch normalization. Default:False
.track_running_stats – a boolean value that when set to
True
, this module tracks the running mean and variance, and when set toFalse
, this module does not track such statistics and always uses batch statistics in both training and eval modes. Default:False
- Shape:
Input: or
Output: or (same shape as input)
-
cls_to_become
¶ alias of
torch.nn.modules.instancenorm.InstanceNorm2d