This code is the code used for the "Domain Separation Networks" paper by Bousmalis K., Trigeorgis G., et al. which was presented at NIPS 2016. The paper can be found here: https://arxiv.org/abs/1608.06019.
This code was open-sourced by Konstantinos Bousmalis ([email protected]).
You will need to have the following installed on your machine before trying out the DSN code.
- Tensorflow: https://www.tensorflow.org/install/
- Bazel: https://bazel.build/
Although we are making the code available, you are only able to use the MNIST provider for now. We will soon provide a script to download and convert MNIST-M as well. Check back here in a few weeks or wait for a relevant announcement from @bousmalis.
In order to run the MNIST to MNIST-M experiments with DANNs and/or DANNs with domain separation (DSNs) you will need to set the directory you used to download MNIST and MNIST-M:
$ export DSN_DATA_DIR=/your/dir
Add models and models/slim to your $PYTHONPATH
:
$ export PYTHONPATH=$PYTHONPATH:$PWD:$PWD/slim
Then you need to build the binaries with Bazel:
$ bazel build -c opt domain_adaptation/domain_separation/...
You can then train with the following command:
$ ./bazel-bin/domain_adaptation/domain_separation/dsn_train \
--similarity_loss=dann_loss \
--basic_tower=dann_mnist \
--source_dataset=mnist \
--target_dataset=mnist_m \
--learning_rate=0.0117249 \
--gamma_weight=0.251175 \
--weight_decay=1e-6 \
--layers_to_regularize=fc3 \
--nouse_separation \
--master="" \
--dataset_dir=${DSN_DATA_DIR} \
-v --use_logging
Evaluation can be invoked with the following command:
$ ./bazel-bin/domain_adaptation/domain_separation/dsn_eval \
-v --dataset mnist_m --split test --num_examples=9001 \
--dataset_dir=${DSN_DATA_DIR}