Skip to content

Instantly share code, notes, and snippets.

@weiliu89
Last active October 19, 2021 13:35
Show Gist options
  • Save weiliu89/2ed6e13bfd5b57cf81d6 to your computer and use it in GitHub Desktop.
Save weiliu89/2ed6e13bfd5b57cf81d6 to your computer and use it in GitHub Desktop.
Fully convolutional reduced VGGNet
name caffemodel caffemodel_url sha1 gist_id
Fully convolutional reduced VGGNet
VGG_ILSVRC_16_layers_fc_reduced.caffemodel
97eb7c469c5097f51a0f9a944f4a5731f470eee2

This is a model used in the paper

ParseNet: Looking Wider to See Better
Wei Liu, Andrew Rabinovich, Alexander C. Berg
arXiv:1506.04579

This is a network modified from VGGNet by making it fully convolutional and also by subsampling parameters from fc6 and fc7 layers. This is useful when using it to finetune for segmentation. For example, ParseNet shows how to use it to finetune for semantic segmentation task.

name: "VGG_ILSVRC_16_layers_fc_reduced"
input: "data"
input_dim: 10
input_dim: 3
input_dim: 500
input_dim: 500
layers {
bottom: "data"
top: "conv1_1"
name: "conv1_1"
type: CONVOLUTION
convolution_param {
num_output: 64
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv1_1"
top: "conv1_1"
name: "relu1_1"
type: RELU
}
layers {
bottom: "conv1_1"
top: "conv1_2"
name: "conv1_2"
type: CONVOLUTION
convolution_param {
num_output: 64
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv1_2"
top: "conv1_2"
name: "relu1_2"
type: RELU
}
layers {
bottom: "conv1_2"
top: "pool1"
name: "pool1"
type: POOLING
pooling_param {
pool: MAX
kernel_size: 2
stride: 2
}
}
layers {
bottom: "pool1"
top: "conv2_1"
name: "conv2_1"
type: CONVOLUTION
convolution_param {
num_output: 128
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv2_1"
top: "conv2_1"
name: "relu2_1"
type: RELU
}
layers {
bottom: "conv2_1"
top: "conv2_2"
name: "conv2_2"
type: CONVOLUTION
convolution_param {
num_output: 128
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv2_2"
top: "conv2_2"
name: "relu2_2"
type: RELU
}
layers {
bottom: "conv2_2"
top: "pool2"
name: "pool2"
type: POOLING
pooling_param {
pool: MAX
kernel_size: 2
stride: 2
}
}
layers {
bottom: "pool2"
top: "conv3_1"
name: "conv3_1"
type: CONVOLUTION
convolution_param {
num_output: 256
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv3_1"
top: "conv3_1"
name: "relu3_1"
type: RELU
}
layers {
bottom: "conv3_1"
top: "conv3_2"
name: "conv3_2"
type: CONVOLUTION
convolution_param {
num_output: 256
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv3_2"
top: "conv3_2"
name: "relu3_2"
type: RELU
}
layers {
bottom: "conv3_2"
top: "conv3_3"
name: "conv3_3"
type: CONVOLUTION
convolution_param {
num_output: 256
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv3_3"
top: "conv3_3"
name: "relu3_3"
type: RELU
}
layers {
bottom: "conv3_3"
top: "pool3"
name: "pool3"
type: POOLING
pooling_param {
pool: MAX
kernel_size: 2
stride: 2
}
}
layers {
bottom: "pool3"
top: "conv4_1"
name: "conv4_1"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv4_1"
top: "conv4_1"
name: "relu4_1"
type: RELU
}
layers {
bottom: "conv4_1"
top: "conv4_2"
name: "conv4_2"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv4_2"
top: "conv4_2"
name: "relu4_2"
type: RELU
}
layers {
bottom: "conv4_2"
top: "conv4_3"
name: "conv4_3"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv4_3"
top: "conv4_3"
name: "relu4_3"
type: RELU
}
layers {
bottom: "conv4_3"
top: "pool4"
name: "pool4"
type: POOLING
pooling_param {
pool: MAX
kernel_size: 2
stride: 2
}
}
layers {
bottom: "pool4"
top: "conv5_1"
name: "conv5_1"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv5_1"
top: "conv5_1"
name: "relu5_1"
type: RELU
}
layers {
bottom: "conv5_1"
top: "conv5_2"
name: "conv5_2"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv5_2"
top: "conv5_2"
name: "relu5_2"
type: RELU
}
layers {
bottom: "conv5_2"
top: "conv5_3"
name: "conv5_3"
type: CONVOLUTION
convolution_param {
num_output: 512
pad: 1
kernel_size: 3
}
}
layers {
bottom: "conv5_3"
top: "conv5_3"
name: "relu5_3"
type: RELU
}
layers {
bottom: "conv5_3"
top: "pool5"
name: "pool5"
type: POOLING
pooling_param {
pool: MAX
kernel_size: 2
stride: 2
}
}
layers {
bottom: "pool5"
top: "fc6"
name: "fc6"
type: CONVOLUTION
convolution_param {
num_output: 1024
kernel_size: 3
dilation: 3
pad: 3
}
}
layers {
bottom: "fc6"
top: "fc6"
name: "relu6"
type: RELU
}
layers {
bottom: "fc6"
top: "fc6"
name: "drop6"
type: DROPOUT
dropout_param {
dropout_ratio: 0.5
}
}
layers {
bottom: "fc6"
top: "fc7"
name: "fc7"
type: CONVOLUTION
convolution_param {
num_output: 1024
kernel_size: 1
}
}
layers {
bottom: "fc7"
top: "fc7"
name: "relu7"
type: RELU
}
layers {
bottom: "fc7"
top: "fc7"
name: "drop7"
type: DROPOUT
dropout_param {
dropout_ratio: 0.5
}
}
layers {
bottom: "fc7"
top: "fc8"
name: "fc8"
type: CONVOLUTION
convolution_param {
num_output: 1000
kernel_size: 1
}
}
layers {
bottom: "fc8"
top: "prob"
name: "prob"
type: SOFTMAX
}
@weiliu89
Copy link
Author

This is to make VGG faster and also implements the "atrous" algorithm described in DeepLab paper. Here is how the reduced VGG is configured for that: https://gist.github.com/weiliu89/45e9e8de2c13af6476ca#file-vgg_voc2012ext-prototxt-L385

@koki0702
Copy link

I missed the DeepLab paper -- sorry! ("atrous" algoritm is great!!)

@xiaohaoChen
Copy link

@weiliu89
How can I train this VGG_ILSVRC_16_layers_fc_reduced model?
Any examples or source codes?
Thank you!

@ck196
Copy link

ck196 commented May 25, 2016

Could you provide SSD train.prototxt, deploy.prototxt and solver.txt of InceptionV3?
Thank you.

@shesung
Copy link

shesung commented Oct 10, 2016

why the dilation = 3 in fc6?

@nian-liu
Copy link

nian-liu commented Nov 1, 2016

@shesung, dilation=3, then you can get a true convolutional kernel with size dilation_(kernel_size-1)+1=3_(3-1)+1=7, which is the same with the kernel_size of fc6 in the original VGGnet.

@tron19920125
Copy link

Can i treat dilation equal to the filter_stride in your code of caffe-fcn?

@dongzhuoyao
Copy link

@tron19920125, dilation is not filter_stride.dilation is the hole between your single convolution unit

@mjssat7
Copy link

mjssat7 commented Apr 6, 2017

@weiliu89,What dataset do you use to train ,then get this VGG_ILSVRC_16_layers_fc_reduced.model,because I don't see any data illustrations from VGG_ILSVRC_16_layers_fc_reduced_deploy.prototxt, thank you!

@cooliscool
Copy link

@mjssat7 , using ILSVRC dataset which has 1000 classes.

@idanusher
Copy link

@weiliu89, I'm trying to understand how do I parse the network output?
I'm using python and get dict with the prob inside. there is a (10,1000,16,16) array.
please any clue.. :)

@BOBrown
Copy link

BOBrown commented Mar 12, 2018

We fine-tune the basic reduced VGG on ImageNet-1000 dataset or VOC dataset? If ImageNet-1000, Could you report the result of the reduced VGG on ImageNet?

@Yrij-Zhavoronkov
Copy link

How to create custon dataSet and mark up in on caffe?

@zfjmike
Copy link

zfjmike commented Sep 6, 2018

@idanusher I guess an average global pooling is needed for the final probability. For 16 x 16 feature maps, avg. global pooling will average all entries in the feature map and return one single value. You can check this in the Caffe Pooling layer.

@robotgruntxd
Copy link

I can't download the .caffemodel.

@CorvusCorax
Copy link

CorvusCorax commented Mar 5, 2020

I still had a copy of the caffemodel running around. I uploaded it to
https://owncloud.gwdg.de/index.php/s/SjXmX0Uqh1zaYgI/download
checksum should match the one in the table above:
sha1: 97eb7c469c5097f51a0f9a944f4a5731f470eee2
md5: f544332b79d78c838978ce2782b0c196
size: 83 MB

@CorvusCorax
Copy link

I can't download the .caffemodel.
The URL given in the previous version of this document seems to work, too:

http://vision.cs.unc.edu/wliu/projects/ParseNet/VGG_ILSVRC_16_layers_fc_reduced.caffemodel

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment