# Source: https://github.com/Cadene/pretrained-models.pytorch/blob/master/pretrainedmodels/models/bninception.py (License: BSD-3-Clause)
# Pretrained: Yes
r"""
Implementation of BNInception as described in this `paper <https://arxiv.org/pdf/1502.03167.pdf>`_.
"""
import torch
import torch.nn as nn
import torch.nn.functional as F
import torch.utils.model_zoo as model_zoo
__all__ = ['BNInception', 'bninception']
pretrained_settings = {
'bninception': {
'imagenet': {
# Was ported using python2 (may trigger warning)
'url': 'http://data.lip6.fr/cadene/pretrainedmodels/bn_inception-52deb4733.pth',
# 'url': 'http://yjxiong.me/others/bn_inception-9f5701afb96c8044.pth',
'input_space': 'BGR',
'input_size': [3, 224, 224],
'input_range': [0, 255],
'mean': [104, 117, 128],
'std': [1, 1, 1],
'num_classes': 1000
}
}
}
[docs]class BNInception(nn.Module):
def __init__(self, num_classes=1000):
super(BNInception, self).__init__()
inplace = True
self.conv1_7x7_s2 = nn.Conv2d(3, 64, kernel_size=(7, 7), stride=(2, 2), padding=(3, 3))
self.conv1_7x7_s2_bn = nn.BatchNorm2d(64, affine=True)
self.conv1_relu_7x7 = nn.ReLU (inplace)
self.pool1_3x3_s2 = nn.MaxPool2d ((3, 3), stride=(2, 2), dilation=(1, 1), ceil_mode=True)
self.conv2_3x3_reduce = nn.Conv2d(64, 64, kernel_size=(1, 1), stride=(1, 1))
self.conv2_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.conv2_relu_3x3_reduce = nn.ReLU (inplace)
self.conv2_3x3 = nn.Conv2d(64, 192, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.conv2_3x3_bn = nn.BatchNorm2d(192, affine=True)
self.conv2_relu_3x3 = nn.ReLU (inplace)
self.pool2_3x3_s2 = nn.MaxPool2d ((3, 3), stride=(2, 2), dilation=(1, 1), ceil_mode=True)
self.inception_3a_1x1 = nn.Conv2d(192, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3a_1x1_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3a_relu_1x1 = nn.ReLU (inplace)
self.inception_3a_3x3_reduce = nn.Conv2d(192, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3a_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3a_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_3a_3x3 = nn.Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3a_3x3_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3a_relu_3x3 = nn.ReLU (inplace)
self.inception_3a_double_3x3_reduce = nn.Conv2d(192, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3a_double_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3a_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_3a_double_3x3_1 = nn.Conv2d(64, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3a_double_3x3_1_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3a_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_3a_double_3x3_2 = nn.Conv2d(96, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3a_double_3x3_2_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3a_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_3a_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_3a_pool_proj = nn.Conv2d(192, 32, kernel_size=(1, 1), stride=(1, 1))
self.inception_3a_pool_proj_bn = nn.BatchNorm2d(32, affine=True)
self.inception_3a_relu_pool_proj = nn.ReLU (inplace)
self.inception_3b_1x1 = nn.Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3b_1x1_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3b_relu_1x1 = nn.ReLU (inplace)
self.inception_3b_3x3_reduce = nn.Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3b_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3b_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_3b_3x3 = nn.Conv2d(64, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3b_3x3_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3b_relu_3x3 = nn.ReLU (inplace)
self.inception_3b_double_3x3_reduce = nn.Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3b_double_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3b_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_3b_double_3x3_1 = nn.Conv2d(64, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3b_double_3x3_1_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3b_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_3b_double_3x3_2 = nn.Conv2d(96, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3b_double_3x3_2_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3b_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_3b_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_3b_pool_proj = nn.Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3b_pool_proj_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3b_relu_pool_proj = nn.ReLU (inplace)
self.inception_3c_3x3_reduce = nn.Conv2d(320, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_3c_3x3_reduce_bn = nn.BatchNorm2d(128, affine=True)
self.inception_3c_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_3c_3x3 = nn.Conv2d(128, 160, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1))
self.inception_3c_3x3_bn = nn.BatchNorm2d(160, affine=True)
self.inception_3c_relu_3x3 = nn.ReLU (inplace)
self.inception_3c_double_3x3_reduce = nn.Conv2d(320, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_3c_double_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_3c_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_3c_double_3x3_1 = nn.Conv2d(64, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_3c_double_3x3_1_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3c_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_3c_double_3x3_2 = nn.Conv2d(96, 96, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1))
self.inception_3c_double_3x3_2_bn = nn.BatchNorm2d(96, affine=True)
self.inception_3c_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_3c_pool = nn.MaxPool2d ((3, 3), stride=(2, 2), dilation=(1, 1), ceil_mode=True)
self.inception_4a_1x1 = nn.Conv2d(576, 224, kernel_size=(1, 1), stride=(1, 1))
self.inception_4a_1x1_bn = nn.BatchNorm2d(224, affine=True)
self.inception_4a_relu_1x1 = nn.ReLU (inplace)
self.inception_4a_3x3_reduce = nn.Conv2d(576, 64, kernel_size=(1, 1), stride=(1, 1))
self.inception_4a_3x3_reduce_bn = nn.BatchNorm2d(64, affine=True)
self.inception_4a_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_4a_3x3 = nn.Conv2d(64, 96, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4a_3x3_bn = nn.BatchNorm2d(96, affine=True)
self.inception_4a_relu_3x3 = nn.ReLU (inplace)
self.inception_4a_double_3x3_reduce = nn.Conv2d(576, 96, kernel_size=(1, 1), stride=(1, 1))
self.inception_4a_double_3x3_reduce_bn = nn.BatchNorm2d(96, affine=True)
self.inception_4a_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_4a_double_3x3_1 = nn.Conv2d(96, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4a_double_3x3_1_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4a_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_4a_double_3x3_2 = nn.Conv2d(128, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4a_double_3x3_2_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4a_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_4a_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_4a_pool_proj = nn.Conv2d(576, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4a_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4a_relu_pool_proj = nn.ReLU (inplace)
self.inception_4b_1x1 = nn.Conv2d(576, 192, kernel_size=(1, 1), stride=(1, 1))
self.inception_4b_1x1_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4b_relu_1x1 = nn.ReLU (inplace)
self.inception_4b_3x3_reduce = nn.Conv2d(576, 96, kernel_size=(1, 1), stride=(1, 1))
self.inception_4b_3x3_reduce_bn = nn.BatchNorm2d(96, affine=True)
self.inception_4b_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_4b_3x3 = nn.Conv2d(96, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4b_3x3_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4b_relu_3x3 = nn.ReLU (inplace)
self.inception_4b_double_3x3_reduce = nn.Conv2d(576, 96, kernel_size=(1, 1), stride=(1, 1))
self.inception_4b_double_3x3_reduce_bn = nn.BatchNorm2d(96, affine=True)
self.inception_4b_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_4b_double_3x3_1 = nn.Conv2d(96, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4b_double_3x3_1_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4b_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_4b_double_3x3_2 = nn.Conv2d(128, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4b_double_3x3_2_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4b_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_4b_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_4b_pool_proj = nn.Conv2d(576, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4b_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4b_relu_pool_proj = nn.ReLU (inplace)
self.inception_4c_1x1 = nn.Conv2d(576, 160, kernel_size=(1, 1), stride=(1, 1))
self.inception_4c_1x1_bn = nn.BatchNorm2d(160, affine=True)
self.inception_4c_relu_1x1 = nn.ReLU (inplace)
self.inception_4c_3x3_reduce = nn.Conv2d(576, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4c_3x3_reduce_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4c_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_4c_3x3 = nn.Conv2d(128, 160, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4c_3x3_bn = nn.BatchNorm2d(160, affine=True)
self.inception_4c_relu_3x3 = nn.ReLU (inplace)
self.inception_4c_double_3x3_reduce = nn.Conv2d(576, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4c_double_3x3_reduce_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4c_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_4c_double_3x3_1 = nn.Conv2d(128, 160, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4c_double_3x3_1_bn = nn.BatchNorm2d(160, affine=True)
self.inception_4c_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_4c_double_3x3_2 = nn.Conv2d(160, 160, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4c_double_3x3_2_bn = nn.BatchNorm2d(160, affine=True)
self.inception_4c_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_4c_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_4c_pool_proj = nn.Conv2d(576, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4c_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4c_relu_pool_proj = nn.ReLU (inplace)
self.inception_4d_1x1 = nn.Conv2d(608, 96, kernel_size=(1, 1), stride=(1, 1))
self.inception_4d_1x1_bn = nn.BatchNorm2d(96, affine=True)
self.inception_4d_relu_1x1 = nn.ReLU (inplace)
self.inception_4d_3x3_reduce = nn.Conv2d(608, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4d_3x3_reduce_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4d_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_4d_3x3 = nn.Conv2d(128, 192, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4d_3x3_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4d_relu_3x3 = nn.ReLU (inplace)
self.inception_4d_double_3x3_reduce = nn.Conv2d(608, 160, kernel_size=(1, 1), stride=(1, 1))
self.inception_4d_double_3x3_reduce_bn = nn.BatchNorm2d(160, affine=True)
self.inception_4d_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_4d_double_3x3_1 = nn.Conv2d(160, 192, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4d_double_3x3_1_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4d_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_4d_double_3x3_2 = nn.Conv2d(192, 192, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4d_double_3x3_2_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4d_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_4d_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_4d_pool_proj = nn.Conv2d(608, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4d_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4d_relu_pool_proj = nn.ReLU (inplace)
self.inception_4e_3x3_reduce = nn.Conv2d(608, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_4e_3x3_reduce_bn = nn.BatchNorm2d(128, affine=True)
self.inception_4e_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_4e_3x3 = nn.Conv2d(128, 192, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1))
self.inception_4e_3x3_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4e_relu_3x3 = nn.ReLU (inplace)
self.inception_4e_double_3x3_reduce = nn.Conv2d(608, 192, kernel_size=(1, 1), stride=(1, 1))
self.inception_4e_double_3x3_reduce_bn = nn.BatchNorm2d(192, affine=True)
self.inception_4e_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_4e_double_3x3_1 = nn.Conv2d(192, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_4e_double_3x3_1_bn = nn.BatchNorm2d(256, affine=True)
self.inception_4e_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_4e_double_3x3_2 = nn.Conv2d(256, 256, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1))
self.inception_4e_double_3x3_2_bn = nn.BatchNorm2d(256, affine=True)
self.inception_4e_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_4e_pool = nn.MaxPool2d ((3, 3), stride=(2, 2), dilation=(1, 1), ceil_mode=True)
self.inception_5a_1x1 = nn.Conv2d(1056, 352, kernel_size=(1, 1), stride=(1, 1))
self.inception_5a_1x1_bn = nn.BatchNorm2d(352, affine=True)
self.inception_5a_relu_1x1 = nn.ReLU (inplace)
self.inception_5a_3x3_reduce = nn.Conv2d(1056, 192, kernel_size=(1, 1), stride=(1, 1))
self.inception_5a_3x3_reduce_bn = nn.BatchNorm2d(192, affine=True)
self.inception_5a_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_5a_3x3 = nn.Conv2d(192, 320, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5a_3x3_bn = nn.BatchNorm2d(320, affine=True)
self.inception_5a_relu_3x3 = nn.ReLU (inplace)
self.inception_5a_double_3x3_reduce = nn.Conv2d(1056, 160, kernel_size=(1, 1), stride=(1, 1))
self.inception_5a_double_3x3_reduce_bn = nn.BatchNorm2d(160, affine=True)
self.inception_5a_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_5a_double_3x3_1 = nn.Conv2d(160, 224, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5a_double_3x3_1_bn = nn.BatchNorm2d(224, affine=True)
self.inception_5a_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_5a_double_3x3_2 = nn.Conv2d(224, 224, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5a_double_3x3_2_bn = nn.BatchNorm2d(224, affine=True)
self.inception_5a_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_5a_pool = nn.AvgPool2d (3, stride=1, padding=1, ceil_mode=True, count_include_pad=True)
self.inception_5a_pool_proj = nn.Conv2d(1056, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_5a_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_5a_relu_pool_proj = nn.ReLU (inplace)
self.inception_5b_1x1 = nn.Conv2d(1024, 352, kernel_size=(1, 1), stride=(1, 1))
self.inception_5b_1x1_bn = nn.BatchNorm2d(352, affine=True)
self.inception_5b_relu_1x1 = nn.ReLU (inplace)
self.inception_5b_3x3_reduce = nn.Conv2d(1024, 192, kernel_size=(1, 1), stride=(1, 1))
self.inception_5b_3x3_reduce_bn = nn.BatchNorm2d(192, affine=True)
self.inception_5b_relu_3x3_reduce = nn.ReLU (inplace)
self.inception_5b_3x3 = nn.Conv2d(192, 320, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5b_3x3_bn = nn.BatchNorm2d(320, affine=True)
self.inception_5b_relu_3x3 = nn.ReLU (inplace)
self.inception_5b_double_3x3_reduce = nn.Conv2d(1024, 192, kernel_size=(1, 1), stride=(1, 1))
self.inception_5b_double_3x3_reduce_bn = nn.BatchNorm2d(192, affine=True)
self.inception_5b_relu_double_3x3_reduce = nn.ReLU (inplace)
self.inception_5b_double_3x3_1 = nn.Conv2d(192, 224, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5b_double_3x3_1_bn = nn.BatchNorm2d(224, affine=True)
self.inception_5b_relu_double_3x3_1 = nn.ReLU (inplace)
self.inception_5b_double_3x3_2 = nn.Conv2d(224, 224, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1))
self.inception_5b_double_3x3_2_bn = nn.BatchNorm2d(224, affine=True)
self.inception_5b_relu_double_3x3_2 = nn.ReLU (inplace)
self.inception_5b_pool = nn.MaxPool2d ((3, 3), stride=(1, 1), padding=(1, 1), dilation=(1, 1), ceil_mode=True)
self.inception_5b_pool_proj = nn.Conv2d(1024, 128, kernel_size=(1, 1), stride=(1, 1))
self.inception_5b_pool_proj_bn = nn.BatchNorm2d(128, affine=True)
self.inception_5b_relu_pool_proj = nn.ReLU (inplace)
self.last_linear = nn.Linear (1024, num_classes)
def features(self, input_):
conv1_7x7_s2_out = self.conv1_7x7_s2(input_)
conv1_7x7_s2_bn_out = self.conv1_7x7_s2_bn(conv1_7x7_s2_out)
conv1_relu_7x7_out = self.conv1_relu_7x7(conv1_7x7_s2_bn_out)
pool1_3x3_s2_out = self.pool1_3x3_s2(conv1_relu_7x7_out)
conv2_3x3_reduce_out = self.conv2_3x3_reduce(pool1_3x3_s2_out)
conv2_3x3_reduce_bn_out = self.conv2_3x3_reduce_bn(conv2_3x3_reduce_out)
conv2_relu_3x3_reduce_out = self.conv2_relu_3x3_reduce(conv2_3x3_reduce_bn_out)
conv2_3x3_out = self.conv2_3x3(conv2_relu_3x3_reduce_out)
conv2_3x3_bn_out = self.conv2_3x3_bn(conv2_3x3_out)
conv2_relu_3x3_out = self.conv2_relu_3x3(conv2_3x3_bn_out)
pool2_3x3_s2_out = self.pool2_3x3_s2(conv2_relu_3x3_out)
inception_3a_1x1_out = self.inception_3a_1x1(pool2_3x3_s2_out)
inception_3a_1x1_bn_out = self.inception_3a_1x1_bn(inception_3a_1x1_out)
inception_3a_relu_1x1_out = self.inception_3a_relu_1x1(inception_3a_1x1_bn_out)
inception_3a_3x3_reduce_out = self.inception_3a_3x3_reduce(pool2_3x3_s2_out)
inception_3a_3x3_reduce_bn_out = self.inception_3a_3x3_reduce_bn(inception_3a_3x3_reduce_out)
inception_3a_relu_3x3_reduce_out = self.inception_3a_relu_3x3_reduce(inception_3a_3x3_reduce_bn_out)
inception_3a_3x3_out = self.inception_3a_3x3(inception_3a_relu_3x3_reduce_out)
inception_3a_3x3_bn_out = self.inception_3a_3x3_bn(inception_3a_3x3_out)
inception_3a_relu_3x3_out = self.inception_3a_relu_3x3(inception_3a_3x3_bn_out)
inception_3a_double_3x3_reduce_out = self.inception_3a_double_3x3_reduce(pool2_3x3_s2_out)
inception_3a_double_3x3_reduce_bn_out = self.inception_3a_double_3x3_reduce_bn(inception_3a_double_3x3_reduce_out)
inception_3a_relu_double_3x3_reduce_out = self.inception_3a_relu_double_3x3_reduce(inception_3a_double_3x3_reduce_bn_out)
inception_3a_double_3x3_1_out = self.inception_3a_double_3x3_1(inception_3a_relu_double_3x3_reduce_out)
inception_3a_double_3x3_1_bn_out = self.inception_3a_double_3x3_1_bn(inception_3a_double_3x3_1_out)
inception_3a_relu_double_3x3_1_out = self.inception_3a_relu_double_3x3_1(inception_3a_double_3x3_1_bn_out)
inception_3a_double_3x3_2_out = self.inception_3a_double_3x3_2(inception_3a_relu_double_3x3_1_out)
inception_3a_double_3x3_2_bn_out = self.inception_3a_double_3x3_2_bn(inception_3a_double_3x3_2_out)
inception_3a_relu_double_3x3_2_out = self.inception_3a_relu_double_3x3_2(inception_3a_double_3x3_2_bn_out)
inception_3a_pool_out = self.inception_3a_pool(pool2_3x3_s2_out)
inception_3a_pool_proj_out = self.inception_3a_pool_proj(inception_3a_pool_out)
inception_3a_pool_proj_bn_out = self.inception_3a_pool_proj_bn(inception_3a_pool_proj_out)
inception_3a_relu_pool_proj_out = self.inception_3a_relu_pool_proj(inception_3a_pool_proj_bn_out)
inception_3a_output_out = torch.cat([inception_3a_relu_1x1_out,inception_3a_relu_3x3_out,inception_3a_relu_double_3x3_2_out ,inception_3a_relu_pool_proj_out], 1)
inception_3b_1x1_out = self.inception_3b_1x1(inception_3a_output_out)
inception_3b_1x1_bn_out = self.inception_3b_1x1_bn(inception_3b_1x1_out)
inception_3b_relu_1x1_out = self.inception_3b_relu_1x1(inception_3b_1x1_bn_out)
inception_3b_3x3_reduce_out = self.inception_3b_3x3_reduce(inception_3a_output_out)
inception_3b_3x3_reduce_bn_out = self.inception_3b_3x3_reduce_bn(inception_3b_3x3_reduce_out)
inception_3b_relu_3x3_reduce_out = self.inception_3b_relu_3x3_reduce(inception_3b_3x3_reduce_bn_out)
inception_3b_3x3_out = self.inception_3b_3x3(inception_3b_relu_3x3_reduce_out)
inception_3b_3x3_bn_out = self.inception_3b_3x3_bn(inception_3b_3x3_out)
inception_3b_relu_3x3_out = self.inception_3b_relu_3x3(inception_3b_3x3_bn_out)
inception_3b_double_3x3_reduce_out = self.inception_3b_double_3x3_reduce(inception_3a_output_out)
inception_3b_double_3x3_reduce_bn_out = self.inception_3b_double_3x3_reduce_bn(inception_3b_double_3x3_reduce_out)
inception_3b_relu_double_3x3_reduce_out = self.inception_3b_relu_double_3x3_reduce(inception_3b_double_3x3_reduce_bn_out)
inception_3b_double_3x3_1_out = self.inception_3b_double_3x3_1(inception_3b_relu_double_3x3_reduce_out)
inception_3b_double_3x3_1_bn_out = self.inception_3b_double_3x3_1_bn(inception_3b_double_3x3_1_out)
inception_3b_relu_double_3x3_1_out = self.inception_3b_relu_double_3x3_1(inception_3b_double_3x3_1_bn_out)
inception_3b_double_3x3_2_out = self.inception_3b_double_3x3_2(inception_3b_relu_double_3x3_1_out)
inception_3b_double_3x3_2_bn_out = self.inception_3b_double_3x3_2_bn(inception_3b_double_3x3_2_out)
inception_3b_relu_double_3x3_2_out = self.inception_3b_relu_double_3x3_2(inception_3b_double_3x3_2_bn_out)
inception_3b_pool_out = self.inception_3b_pool(inception_3a_output_out)
inception_3b_pool_proj_out = self.inception_3b_pool_proj(inception_3b_pool_out)
inception_3b_pool_proj_bn_out = self.inception_3b_pool_proj_bn(inception_3b_pool_proj_out)
inception_3b_relu_pool_proj_out = self.inception_3b_relu_pool_proj(inception_3b_pool_proj_bn_out)
inception_3b_output_out = torch.cat([inception_3b_relu_1x1_out,inception_3b_relu_3x3_out,inception_3b_relu_double_3x3_2_out,inception_3b_relu_pool_proj_out], 1)
inception_3c_3x3_reduce_out = self.inception_3c_3x3_reduce(inception_3b_output_out)
inception_3c_3x3_reduce_bn_out = self.inception_3c_3x3_reduce_bn(inception_3c_3x3_reduce_out)
inception_3c_relu_3x3_reduce_out = self.inception_3c_relu_3x3_reduce(inception_3c_3x3_reduce_bn_out)
inception_3c_3x3_out = self.inception_3c_3x3(inception_3c_relu_3x3_reduce_out)
inception_3c_3x3_bn_out = self.inception_3c_3x3_bn(inception_3c_3x3_out)
inception_3c_relu_3x3_out = self.inception_3c_relu_3x3(inception_3c_3x3_bn_out)
inception_3c_double_3x3_reduce_out = self.inception_3c_double_3x3_reduce(inception_3b_output_out)
inception_3c_double_3x3_reduce_bn_out = self.inception_3c_double_3x3_reduce_bn(inception_3c_double_3x3_reduce_out)
inception_3c_relu_double_3x3_reduce_out = self.inception_3c_relu_double_3x3_reduce(inception_3c_double_3x3_reduce_bn_out)
inception_3c_double_3x3_1_out = self.inception_3c_double_3x3_1(inception_3c_relu_double_3x3_reduce_out)
inception_3c_double_3x3_1_bn_out = self.inception_3c_double_3x3_1_bn(inception_3c_double_3x3_1_out)
inception_3c_relu_double_3x3_1_out = self.inception_3c_relu_double_3x3_1(inception_3c_double_3x3_1_bn_out)
inception_3c_double_3x3_2_out = self.inception_3c_double_3x3_2(inception_3c_relu_double_3x3_1_out)
inception_3c_double_3x3_2_bn_out = self.inception_3c_double_3x3_2_bn(inception_3c_double_3x3_2_out)
inception_3c_relu_double_3x3_2_out = self.inception_3c_relu_double_3x3_2(inception_3c_double_3x3_2_bn_out)
inception_3c_pool_out = self.inception_3c_pool(inception_3b_output_out)
inception_3c_output_out = torch.cat([inception_3c_relu_3x3_out,inception_3c_relu_double_3x3_2_out,inception_3c_pool_out], 1)
inception_4a_1x1_out = self.inception_4a_1x1(inception_3c_output_out)
inception_4a_1x1_bn_out = self.inception_4a_1x1_bn(inception_4a_1x1_out)
inception_4a_relu_1x1_out = self.inception_4a_relu_1x1(inception_4a_1x1_bn_out)
inception_4a_3x3_reduce_out = self.inception_4a_3x3_reduce(inception_3c_output_out)
inception_4a_3x3_reduce_bn_out = self.inception_4a_3x3_reduce_bn(inception_4a_3x3_reduce_out)
inception_4a_relu_3x3_reduce_out = self.inception_4a_relu_3x3_reduce(inception_4a_3x3_reduce_bn_out)
inception_4a_3x3_out = self.inception_4a_3x3(inception_4a_relu_3x3_reduce_out)
inception_4a_3x3_bn_out = self.inception_4a_3x3_bn(inception_4a_3x3_out)
inception_4a_relu_3x3_out = self.inception_4a_relu_3x3(inception_4a_3x3_bn_out)
inception_4a_double_3x3_reduce_out = self.inception_4a_double_3x3_reduce(inception_3c_output_out)
inception_4a_double_3x3_reduce_bn_out = self.inception_4a_double_3x3_reduce_bn(inception_4a_double_3x3_reduce_out)
inception_4a_relu_double_3x3_reduce_out = self.inception_4a_relu_double_3x3_reduce(inception_4a_double_3x3_reduce_bn_out)
inception_4a_double_3x3_1_out = self.inception_4a_double_3x3_1(inception_4a_relu_double_3x3_reduce_out)
inception_4a_double_3x3_1_bn_out = self.inception_4a_double_3x3_1_bn(inception_4a_double_3x3_1_out)
inception_4a_relu_double_3x3_1_out = self.inception_4a_relu_double_3x3_1(inception_4a_double_3x3_1_bn_out)
inception_4a_double_3x3_2_out = self.inception_4a_double_3x3_2(inception_4a_relu_double_3x3_1_out)
inception_4a_double_3x3_2_bn_out = self.inception_4a_double_3x3_2_bn(inception_4a_double_3x3_2_out)
inception_4a_relu_double_3x3_2_out = self.inception_4a_relu_double_3x3_2(inception_4a_double_3x3_2_bn_out)
inception_4a_pool_out = self.inception_4a_pool(inception_3c_output_out)
inception_4a_pool_proj_out = self.inception_4a_pool_proj(inception_4a_pool_out)
inception_4a_pool_proj_bn_out = self.inception_4a_pool_proj_bn(inception_4a_pool_proj_out)
inception_4a_relu_pool_proj_out = self.inception_4a_relu_pool_proj(inception_4a_pool_proj_bn_out)
inception_4a_output_out = torch.cat([inception_4a_relu_1x1_out,inception_4a_relu_3x3_out,inception_4a_relu_double_3x3_2_out,inception_4a_relu_pool_proj_out], 1)
inception_4b_1x1_out = self.inception_4b_1x1(inception_4a_output_out)
inception_4b_1x1_bn_out = self.inception_4b_1x1_bn(inception_4b_1x1_out)
inception_4b_relu_1x1_out = self.inception_4b_relu_1x1(inception_4b_1x1_bn_out)
inception_4b_3x3_reduce_out = self.inception_4b_3x3_reduce(inception_4a_output_out)
inception_4b_3x3_reduce_bn_out = self.inception_4b_3x3_reduce_bn(inception_4b_3x3_reduce_out)
inception_4b_relu_3x3_reduce_out = self.inception_4b_relu_3x3_reduce(inception_4b_3x3_reduce_bn_out)
inception_4b_3x3_out = self.inception_4b_3x3(inception_4b_relu_3x3_reduce_out)
inception_4b_3x3_bn_out = self.inception_4b_3x3_bn(inception_4b_3x3_out)
inception_4b_relu_3x3_out = self.inception_4b_relu_3x3(inception_4b_3x3_bn_out)
inception_4b_double_3x3_reduce_out = self.inception_4b_double_3x3_reduce(inception_4a_output_out)
inception_4b_double_3x3_reduce_bn_out = self.inception_4b_double_3x3_reduce_bn(inception_4b_double_3x3_reduce_out)
inception_4b_relu_double_3x3_reduce_out = self.inception_4b_relu_double_3x3_reduce(inception_4b_double_3x3_reduce_bn_out)
inception_4b_double_3x3_1_out = self.inception_4b_double_3x3_1(inception_4b_relu_double_3x3_reduce_out)
inception_4b_double_3x3_1_bn_out = self.inception_4b_double_3x3_1_bn(inception_4b_double_3x3_1_out)
inception_4b_relu_double_3x3_1_out = self.inception_4b_relu_double_3x3_1(inception_4b_double_3x3_1_bn_out)
inception_4b_double_3x3_2_out = self.inception_4b_double_3x3_2(inception_4b_relu_double_3x3_1_out)
inception_4b_double_3x3_2_bn_out = self.inception_4b_double_3x3_2_bn(inception_4b_double_3x3_2_out)
inception_4b_relu_double_3x3_2_out = self.inception_4b_relu_double_3x3_2(inception_4b_double_3x3_2_bn_out)
inception_4b_pool_out = self.inception_4b_pool(inception_4a_output_out)
inception_4b_pool_proj_out = self.inception_4b_pool_proj(inception_4b_pool_out)
inception_4b_pool_proj_bn_out = self.inception_4b_pool_proj_bn(inception_4b_pool_proj_out)
inception_4b_relu_pool_proj_out = self.inception_4b_relu_pool_proj(inception_4b_pool_proj_bn_out)
inception_4b_output_out = torch.cat([inception_4b_relu_1x1_out,inception_4b_relu_3x3_out,inception_4b_relu_double_3x3_2_out,inception_4b_relu_pool_proj_out], 1)
inception_4c_1x1_out = self.inception_4c_1x1(inception_4b_output_out)
inception_4c_1x1_bn_out = self.inception_4c_1x1_bn(inception_4c_1x1_out)
inception_4c_relu_1x1_out = self.inception_4c_relu_1x1(inception_4c_1x1_bn_out)
inception_4c_3x3_reduce_out = self.inception_4c_3x3_reduce(inception_4b_output_out)
inception_4c_3x3_reduce_bn_out = self.inception_4c_3x3_reduce_bn(inception_4c_3x3_reduce_out)
inception_4c_relu_3x3_reduce_out = self.inception_4c_relu_3x3_reduce(inception_4c_3x3_reduce_bn_out)
inception_4c_3x3_out = self.inception_4c_3x3(inception_4c_relu_3x3_reduce_out)
inception_4c_3x3_bn_out = self.inception_4c_3x3_bn(inception_4c_3x3_out)
inception_4c_relu_3x3_out = self.inception_4c_relu_3x3(inception_4c_3x3_bn_out)
inception_4c_double_3x3_reduce_out = self.inception_4c_double_3x3_reduce(inception_4b_output_out)
inception_4c_double_3x3_reduce_bn_out = self.inception_4c_double_3x3_reduce_bn(inception_4c_double_3x3_reduce_out)
inception_4c_relu_double_3x3_reduce_out = self.inception_4c_relu_double_3x3_reduce(inception_4c_double_3x3_reduce_bn_out)
inception_4c_double_3x3_1_out = self.inception_4c_double_3x3_1(inception_4c_relu_double_3x3_reduce_out)
inception_4c_double_3x3_1_bn_out = self.inception_4c_double_3x3_1_bn(inception_4c_double_3x3_1_out)
inception_4c_relu_double_3x3_1_out = self.inception_4c_relu_double_3x3_1(inception_4c_double_3x3_1_bn_out)
inception_4c_double_3x3_2_out = self.inception_4c_double_3x3_2(inception_4c_relu_double_3x3_1_out)
inception_4c_double_3x3_2_bn_out = self.inception_4c_double_3x3_2_bn(inception_4c_double_3x3_2_out)
inception_4c_relu_double_3x3_2_out = self.inception_4c_relu_double_3x3_2(inception_4c_double_3x3_2_bn_out)
inception_4c_pool_out = self.inception_4c_pool(inception_4b_output_out)
inception_4c_pool_proj_out = self.inception_4c_pool_proj(inception_4c_pool_out)
inception_4c_pool_proj_bn_out = self.inception_4c_pool_proj_bn(inception_4c_pool_proj_out)
inception_4c_relu_pool_proj_out = self.inception_4c_relu_pool_proj(inception_4c_pool_proj_bn_out)
inception_4c_output_out = torch.cat([inception_4c_relu_1x1_out,inception_4c_relu_3x3_out,inception_4c_relu_double_3x3_2_out,inception_4c_relu_pool_proj_out], 1)
inception_4d_1x1_out = self.inception_4d_1x1(inception_4c_output_out)
inception_4d_1x1_bn_out = self.inception_4d_1x1_bn(inception_4d_1x1_out)
inception_4d_relu_1x1_out = self.inception_4d_relu_1x1(inception_4d_1x1_bn_out)
inception_4d_3x3_reduce_out = self.inception_4d_3x3_reduce(inception_4c_output_out)
inception_4d_3x3_reduce_bn_out = self.inception_4d_3x3_reduce_bn(inception_4d_3x3_reduce_out)
inception_4d_relu_3x3_reduce_out = self.inception_4d_relu_3x3_reduce(inception_4d_3x3_reduce_bn_out)
inception_4d_3x3_out = self.inception_4d_3x3(inception_4d_relu_3x3_reduce_out)
inception_4d_3x3_bn_out = self.inception_4d_3x3_bn(inception_4d_3x3_out)
inception_4d_relu_3x3_out = self.inception_4d_relu_3x3(inception_4d_3x3_bn_out)
inception_4d_double_3x3_reduce_out = self.inception_4d_double_3x3_reduce(inception_4c_output_out)
inception_4d_double_3x3_reduce_bn_out = self.inception_4d_double_3x3_reduce_bn(inception_4d_double_3x3_reduce_out)
inception_4d_relu_double_3x3_reduce_out = self.inception_4d_relu_double_3x3_reduce(inception_4d_double_3x3_reduce_bn_out)
inception_4d_double_3x3_1_out = self.inception_4d_double_3x3_1(inception_4d_relu_double_3x3_reduce_out)
inception_4d_double_3x3_1_bn_out = self.inception_4d_double_3x3_1_bn(inception_4d_double_3x3_1_out)
inception_4d_relu_double_3x3_1_out = self.inception_4d_relu_double_3x3_1(inception_4d_double_3x3_1_bn_out)
inception_4d_double_3x3_2_out = self.inception_4d_double_3x3_2(inception_4d_relu_double_3x3_1_out)
inception_4d_double_3x3_2_bn_out = self.inception_4d_double_3x3_2_bn(inception_4d_double_3x3_2_out)
inception_4d_relu_double_3x3_2_out = self.inception_4d_relu_double_3x3_2(inception_4d_double_3x3_2_bn_out)
inception_4d_pool_out = self.inception_4d_pool(inception_4c_output_out)
inception_4d_pool_proj_out = self.inception_4d_pool_proj(inception_4d_pool_out)
inception_4d_pool_proj_bn_out = self.inception_4d_pool_proj_bn(inception_4d_pool_proj_out)
inception_4d_relu_pool_proj_out = self.inception_4d_relu_pool_proj(inception_4d_pool_proj_bn_out)
inception_4d_output_out = torch.cat([inception_4d_relu_1x1_out,inception_4d_relu_3x3_out,inception_4d_relu_double_3x3_2_out,inception_4d_relu_pool_proj_out], 1)
inception_4e_3x3_reduce_out = self.inception_4e_3x3_reduce(inception_4d_output_out)
inception_4e_3x3_reduce_bn_out = self.inception_4e_3x3_reduce_bn(inception_4e_3x3_reduce_out)
inception_4e_relu_3x3_reduce_out = self.inception_4e_relu_3x3_reduce(inception_4e_3x3_reduce_bn_out)
inception_4e_3x3_out = self.inception_4e_3x3(inception_4e_relu_3x3_reduce_out)
inception_4e_3x3_bn_out = self.inception_4e_3x3_bn(inception_4e_3x3_out)
inception_4e_relu_3x3_out = self.inception_4e_relu_3x3(inception_4e_3x3_bn_out)
inception_4e_double_3x3_reduce_out = self.inception_4e_double_3x3_reduce(inception_4d_output_out)
inception_4e_double_3x3_reduce_bn_out = self.inception_4e_double_3x3_reduce_bn(inception_4e_double_3x3_reduce_out)
inception_4e_relu_double_3x3_reduce_out = self.inception_4e_relu_double_3x3_reduce(inception_4e_double_3x3_reduce_bn_out)
inception_4e_double_3x3_1_out = self.inception_4e_double_3x3_1(inception_4e_relu_double_3x3_reduce_out)
inception_4e_double_3x3_1_bn_out = self.inception_4e_double_3x3_1_bn(inception_4e_double_3x3_1_out)
inception_4e_relu_double_3x3_1_out = self.inception_4e_relu_double_3x3_1(inception_4e_double_3x3_1_bn_out)
inception_4e_double_3x3_2_out = self.inception_4e_double_3x3_2(inception_4e_relu_double_3x3_1_out)
inception_4e_double_3x3_2_bn_out = self.inception_4e_double_3x3_2_bn(inception_4e_double_3x3_2_out)
inception_4e_relu_double_3x3_2_out = self.inception_4e_relu_double_3x3_2(inception_4e_double_3x3_2_bn_out)
inception_4e_pool_out = self.inception_4e_pool(inception_4d_output_out)
inception_4e_output_out = torch.cat([inception_4e_relu_3x3_out,inception_4e_relu_double_3x3_2_out,inception_4e_pool_out], 1)
inception_5a_1x1_out = self.inception_5a_1x1(inception_4e_output_out)
inception_5a_1x1_bn_out = self.inception_5a_1x1_bn(inception_5a_1x1_out)
inception_5a_relu_1x1_out = self.inception_5a_relu_1x1(inception_5a_1x1_bn_out)
inception_5a_3x3_reduce_out = self.inception_5a_3x3_reduce(inception_4e_output_out)
inception_5a_3x3_reduce_bn_out = self.inception_5a_3x3_reduce_bn(inception_5a_3x3_reduce_out)
inception_5a_relu_3x3_reduce_out = self.inception_5a_relu_3x3_reduce(inception_5a_3x3_reduce_bn_out)
inception_5a_3x3_out = self.inception_5a_3x3(inception_5a_relu_3x3_reduce_out)
inception_5a_3x3_bn_out = self.inception_5a_3x3_bn(inception_5a_3x3_out)
inception_5a_relu_3x3_out = self.inception_5a_relu_3x3(inception_5a_3x3_bn_out)
inception_5a_double_3x3_reduce_out = self.inception_5a_double_3x3_reduce(inception_4e_output_out)
inception_5a_double_3x3_reduce_bn_out = self.inception_5a_double_3x3_reduce_bn(inception_5a_double_3x3_reduce_out)
inception_5a_relu_double_3x3_reduce_out = self.inception_5a_relu_double_3x3_reduce(inception_5a_double_3x3_reduce_bn_out)
inception_5a_double_3x3_1_out = self.inception_5a_double_3x3_1(inception_5a_relu_double_3x3_reduce_out)
inception_5a_double_3x3_1_bn_out = self.inception_5a_double_3x3_1_bn(inception_5a_double_3x3_1_out)
inception_5a_relu_double_3x3_1_out = self.inception_5a_relu_double_3x3_1(inception_5a_double_3x3_1_bn_out)
inception_5a_double_3x3_2_out = self.inception_5a_double_3x3_2(inception_5a_relu_double_3x3_1_out)
inception_5a_double_3x3_2_bn_out = self.inception_5a_double_3x3_2_bn(inception_5a_double_3x3_2_out)
inception_5a_relu_double_3x3_2_out = self.inception_5a_relu_double_3x3_2(inception_5a_double_3x3_2_bn_out)
inception_5a_pool_out = self.inception_5a_pool(inception_4e_output_out)
inception_5a_pool_proj_out = self.inception_5a_pool_proj(inception_5a_pool_out)
inception_5a_pool_proj_bn_out = self.inception_5a_pool_proj_bn(inception_5a_pool_proj_out)
inception_5a_relu_pool_proj_out = self.inception_5a_relu_pool_proj(inception_5a_pool_proj_bn_out)
inception_5a_output_out = torch.cat([inception_5a_relu_1x1_out,inception_5a_relu_3x3_out,inception_5a_relu_double_3x3_2_out,inception_5a_relu_pool_proj_out], 1)
inception_5b_1x1_out = self.inception_5b_1x1(inception_5a_output_out)
inception_5b_1x1_bn_out = self.inception_5b_1x1_bn(inception_5b_1x1_out)
inception_5b_relu_1x1_out = self.inception_5b_relu_1x1(inception_5b_1x1_bn_out)
inception_5b_3x3_reduce_out = self.inception_5b_3x3_reduce(inception_5a_output_out)
inception_5b_3x3_reduce_bn_out = self.inception_5b_3x3_reduce_bn(inception_5b_3x3_reduce_out)
inception_5b_relu_3x3_reduce_out = self.inception_5b_relu_3x3_reduce(inception_5b_3x3_reduce_bn_out)
inception_5b_3x3_out = self.inception_5b_3x3(inception_5b_relu_3x3_reduce_out)
inception_5b_3x3_bn_out = self.inception_5b_3x3_bn(inception_5b_3x3_out)
inception_5b_relu_3x3_out = self.inception_5b_relu_3x3(inception_5b_3x3_bn_out)
inception_5b_double_3x3_reduce_out = self.inception_5b_double_3x3_reduce(inception_5a_output_out)
inception_5b_double_3x3_reduce_bn_out = self.inception_5b_double_3x3_reduce_bn(inception_5b_double_3x3_reduce_out)
inception_5b_relu_double_3x3_reduce_out = self.inception_5b_relu_double_3x3_reduce(inception_5b_double_3x3_reduce_bn_out)
inception_5b_double_3x3_1_out = self.inception_5b_double_3x3_1(inception_5b_relu_double_3x3_reduce_out)
inception_5b_double_3x3_1_bn_out = self.inception_5b_double_3x3_1_bn(inception_5b_double_3x3_1_out)
inception_5b_relu_double_3x3_1_out = self.inception_5b_relu_double_3x3_1(inception_5b_double_3x3_1_bn_out)
inception_5b_double_3x3_2_out = self.inception_5b_double_3x3_2(inception_5b_relu_double_3x3_1_out)
inception_5b_double_3x3_2_bn_out = self.inception_5b_double_3x3_2_bn(inception_5b_double_3x3_2_out)
inception_5b_relu_double_3x3_2_out = self.inception_5b_relu_double_3x3_2(inception_5b_double_3x3_2_bn_out)
inception_5b_pool_out = self.inception_5b_pool(inception_5a_output_out)
inception_5b_pool_proj_out = self.inception_5b_pool_proj(inception_5b_pool_out)
inception_5b_pool_proj_bn_out = self.inception_5b_pool_proj_bn(inception_5b_pool_proj_out)
inception_5b_relu_pool_proj_out = self.inception_5b_relu_pool_proj(inception_5b_pool_proj_bn_out)
inception_5b_output_out = torch.cat([inception_5b_relu_1x1_out,inception_5b_relu_3x3_out,inception_5b_relu_double_3x3_2_out,inception_5b_relu_pool_proj_out], 1)
return inception_5b_output_out
def logits(self, features):
adaptiveAvgPoolWidth = features.shape[2]
x = F.avg_pool2d(features, kernel_size=adaptiveAvgPoolWidth)
x = x.view(x.size(0), -1)
x = self.last_linear(x)
return x
def forward(self, input_):
x = self.features(input_)
x = self.logits(x)
return x
[docs]def bninception(pretrained='imagenet'):
r"""Pretrained BNInception
"""
model = BNInception()
if pretrained:
settings = pretrained_settings['bninception'][pretrained]
model.load_state_dict(model_zoo.load_url(settings['url']))
model.input_space = settings['input_space']
model.input_size = settings['input_size']
model.input_range = settings['input_range']
model.mean = settings['mean']
model.std = settings['std']
return model
if __name__ == '__main__':
model = bninception()