Skip to content

CDNA and SV2P reimplementation and improvement for class project

Notifications You must be signed in to change notification settings

kkew3/cse291g-sv2p

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

13 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

SV2P reimplementation in pytorch

This project reimplements SV2P network and its depended sub-networks in PyTorch-1.0.0.

How to run

Denote the project home directory as $PROJ_HOME.

First of all, create an virtual environment named rt:

cd "$PROJ_HOME"
python3 -m virtualenv rt
. rt/bin/activate
pip install -r requirements.txt

Next, if you have direnv installed, cd to $PROJ_HOME should automatically brings out prompt to direnv allow the .envrc file, which prepares necessary environment variables. Otherwise, do . "$PROJ_HOME/.envrc".

Under $PROJ_HOME/experiments/cdna there's a main.py as a launcher for CDNA-Net training. By python main.py --help, it accepts an ini configuration file and an action. For example,

[dataset]
dataset_name=MovingMNIST
indices=(range(8000), range(8000, 9950), range(9950, 10000))
in_channels=1
cond_channels=0

[train]
n_masks=2
batch_size=16
lr=0.001
max_epoch=10
seqlen=20
criterion_name=DSSIM

[train_device]
device=cuda

The key names are one-to-one corresponding to the positional/keyword argument names of sv2p.cdna.CDNA.__init__. It should be fairly straightforward what each key means.

An example run:

python main.py my-run.ini train

will produces my-run.ini.log as log file and runs-${TODAY_DATETIME}/ as checkpoint/statistics/visualization base directory.

Dataset

To use dataset:

  • MovingMNIST: download MovingMNIST and put it under $PROJ_HOME/data/MovingMNIST/ (make directory if not exists)

About

CDNA and SV2P reimplementation and improvement for class project

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published