You can do that as follows (see comments for description):
import torch
import torch.nn as nn
from torchvision import models
# 1. LOAD PRE-TRAINED VGG16
model = models.vgg16(pretrained=True)
# 2. GET CONV LAYERS
features = model.features
# 3. GET FULLY CONNECTED LAYERS
fcLayers = nn.Sequential(
# stop at last layer
*list(model.classifier.children())[:-1]
)
# 4. CONVERT FULLY CONNECTED LAYERS TO CONVOLUTIONAL LAYERS
### convert first fc layer to conv layer with 512x7x7 kernel
fc = fcLayers[0].state_dict()
in_ch = 512
out_ch = fc["weight"].size(0)
firstConv = nn.Conv2d(in_ch, out_ch, 7, 7)
### get the weights from the fc layer
firstConv.load_state_dict({"weight":fc["weight"].view(out_ch, in_ch, 7, 7),
"bias":fc["bias"]})
# CREATE A LIST OF CONVS
convList = [firstConv]
# Similarly convert the remaining linear layers to conv layers
for layer in enumerate(fcLayers[1:]):
if isinstance(module, nn.Linear):
# Convert the nn.Linear to nn.Conv
fc = module.state_dict()
in_ch = fc["weight"].size(1)
out_ch = fc["weight"].size(0)
conv = nn.Conv2d(in_ch, out_ch, 1, 1)
conv.load_state_dict({"weight":fc["weight"].view(out_ch, in_ch, 1, 1),
"bias":fc["bias"]})
convList += [conv]
else:
# Append other layers such as ReLU and Dropout
convList += [layer]
# Set the conv layers as a nn.Sequential module
convLayers = nn.Sequential(*convList)
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