[Project] [Youtube] [Paper]
A research prototype developed by UC Berkeley and Adobe CTL.
iGAN (aka. interactive GAN) is the author's implementation of interactive image generation interface described in:
"Generative Visual Manipulation on the Natural Image Manifold"
Jun-Yan Zhu, Philipp Krähenbühl, Eli Shechtman, Alexei A. Efros
In European Conference on Computer Vision (ECCV) 2016
Given a few user strokes, our system could produce photo-realistic samples that best satisfy the user edits at real-time. Our system is based on deep generative models such as Generative Adversarial Networks (GAN) and DCGAN. The system serves the following two purposes:
- An intelligent drawing interface for automatically generating images inspired by the color and shape of the brush strokes.
- An interactive visual debugging tool for understanding and visualizing deep generative models. By interacting with the generative model, a developer can understand what visual content the model can produce, as well as the limitation of the model.
We are working on supporting more generative models (e.g. variational autoencoder) and more deep learning frameworks (e.g. Tensorflow). You are welcome to propose new changes or contribute new features (e.g. Tensorflow branch) via pull requests. Please cite our paper if you find this code useful in your research.
Contact: Jun-Yan Zhu (junyanz@berkeley.edu)
- Install the python libraries. (See
Requirements
). - Download the code from GitHub:
git clone https://github.com/junyanz/iGAN
cd iGAN
- Download the model. (See
Model Zoo
for details):
bash ./models/scripts/download_dcgan_model.sh outdoor_64
- Run the python script:
THEANO_FLAGS='device=gpu0, floatX=float32, nvcc.fastmath=True' python iGAN_main.py --model_name outdoor_64
The code is written in Python2 and requires the following 3rd party libraries:
- numpy
- OpenCV
sudo apt-get install python-opencv
sudo pip install --upgrade --no-deps git+git://github.com/Theano/Theano.git
sudo apt-get install python-qt4
sudo pip install qdarkstyle
sudo pip install dominate
- GPU + CUDA + cuDNN: The code is tested on GTX Titan X + CUDA 7.5 + cuDNN 5. Here are the tutorials on how to install CUDA and cuDNN. A decent GPU is required to run the system at real-time. [Warning] If you run the program on a gpu server, you need to use a remote desktop software (e.g. VNC), which may introduce display artifacts and latency problem.
For Python3
users, you need to replace pip
with pip3
:
- PyQt4 with Python3:
sudo apt-get install python3-pyqt4
- OpenCV3 with Python3: see the installation instruction.
See [Youtube] at 2:18s for the interactive image generation demos.
- Drawing Pad: This is the main window of our interface. A user can apply different edits via our brush tools and the system will display the generated image. Check/Uncheck
Edits
button to display/hide user edits. - Candidate Results: a display showing thumbnails of all the candidate results (e.g. different modes) that fits the user edits. A user can click a mode (highlighted by a green rectangle), and the drawing pad will show this result.
- Brush Tools:
Coloring Brush
for changing the color of a specific region;Sketching brush
for outlining the shape.Warping brush
for modifying the shape more explicitly. - Slider Bar: drag the slider bar to explore the interpolation sequence between the initial result (i.e. random generated image) and the current result (e.g. image that satisfies the user edits).
- Control Panel:
Play
: play the interpolation sequence;Fix
: use the current result as additional constraints for further editingRestart
: restart the system;Save
: save the result to a webpage.Edits
: Check the box if you would like to show the edits on top of the generated image.
Coloring Brush
: right click to select a color; hold left click to paint; scroll the mouse wheel to adjust the width of the brush.Sketching Brush
: hold left click to sketch the shape.Warping Brush
: We recommend you first use coloring and sketching before the warping brush. Right click to select a square region; hold left click to drag the region; scroll the mouse wheel to adjust the size of the square region.- Shortcuts: P for
Play
, F forFix
, R forRestart
; S forSave
; E forEdits
; Q for quitting the program. - Tooltips: when you move the cursor over a button , the system will display the tooltip of the button.
Download the theano DCGAN model (e.g. outdoor_64). Before using our system, please check out the random real images vs. DCGAN generated samples to see which kind of images that a model can produce.
bash ./models/scripts/download_dcgan_model.sh outdoor_64
- ourdoor_64.dcgan_theano (64x64): trained on 150K landscape images from MIT Places dataset [Real vs. DCGAN].
- church_64.dcgan_theano (64x64): trained on 126k church images from the LSUN challenge [Real vs. DCGAN].
- handbag_64.dcgan_theano (64x64): trained on 137K handbag images downloaded from Amazon [Real vs. DCGAN].
- shoes_64.dcgan_theano (64x64): trained on 50K shoes images collected by Yu and Grauman [Real vs. DCGAN].
- hed_shoes_64.dcgan_theano (64x64): trained on 50K shoes sketches (computed by HED) [Real vs. DCGAN]. (Use this model with
--shadow
flag)
We provide a simple script to generate samples from a pre-trained DCGAN model. You can run this script to test if Theano, CUDA, cuDNN are configured properly before running our interface.
THEANO_FLAGS='device=gpu0, floatX=float32, nvcc.fastmath=True' python generate_samples.py --model_name outdoor_64 --output_image outdoor_64_dcgan.png
Type python iGAN_main.py --help
for a complete list of the arguments. Here we discuss some important arguments:
--model_name
: the name of the model (e.g. outdoor_64, shoes_64, etc.)--model_type
: currently only supports dcgan_theano.--model_file
: the file that stores the generative model; If not specified,model_file='./models/%s.%s' % (model_name, model_type)
--top_k
: the number of the candidate results being displayed--average
: show average image in the main window. Inspired by AverageExplorer, average image is a weighted average of multiple generated results, with the weights reflecting user-indicated importance. You can switch between average mode and normal mode by pressA
.--shadow
: We build a sketching assistance system for guiding the freeform drawing of objects inspired by ShadowDraw To use the interface, download the modelhed_shoes_64
and run the following script
THEANO_FLAGS='device=gpu0, floatX=float32, nvcc.fastmath=True' python iGAN_main.py --model_name hed_shoes_64 --shadow --average
See more details here
We provide a script to project an image into latent space (i.e. x->z
):
- Download the pre-trained AlexNet model (
conv4
):
bash models/scripts/download_alexnet.sh conv4
- Run the following script with a model and an input image. (e.g. model:
shoes_64.dcgan_theano
, and input image./pics/shoes_test.png
)
THEANO_FLAGS='device=gpu0, floatX=float32, nvcc.fastmath=True' python iGAN_predict.py --model_name shoes_64 --input_image ./pics/shoes_test.png --solver cnn_opt
- Check the result saved in
./pics/shoes_test_cnn_opt.png
- We provide three methods:
opt
for optimization method;cnn
for feed-forward network method (fastest);cnn_opt
hybrid of the previous methods (default and best). Typepython iGAN_predict.py --help
for a complete list of the arguments.
We also provide a standalone script that should work without UI. Given user constraints (i.e. a color map, a color mask and an edge map), the script generates multiple images that mostly satisfy the user constraints. See python iGAN_script.py --help
for more details.
THEANO_FLAGS='device=gpu0, floatX=float32, nvcc.fastmath=True' python iGAN_script.py --model_name outdoor_64
Support Python3.Add image datasets.Support average image mode.Add the DCGAN model training script.Support sketch models for sketching guidance.Add the script for projecting an image to the latent vectorz
.Add a standalone script without UI.- Add 128x128 models.
- Support other deep learning frameworks (e.g. Tensorflow).
- Support other deep generative models (e.g. variational autoencoder).
- Support image morphing mode.
- Support image editing mode.
@inproceedings{zhu2016generative,
title={Generative Visual Manipulation on the Natural Image Manifold},
author={Zhu, Jun-Yan and Kr{\"a}henb{\"u}hl, Philipp and Shechtman, Eli and Efros, Alexei A.},
booktitle={Proceedings of European Conference on Computer Vision (ECCV)},
year={2016}
}
If you love cats, and love reading cool graphics, vision, and learning papers, please check out our Cat Paper Collection:
[Github] [Webpage]
- We modified the DCGAN code in our package. Thanks the authors for sharing the code. Please cite the original DCGAN paper if you use their models.
- This work was supported, in part, by funding from Adobe, eBay and Intel, as well as a hardware grant from NVIDIA. J.-Y. Zhu is supported by Facebook Graduate Fellowship.