Bridging the Gap between Label- and Reference based Synthesis(ICCV 2021)
Tensorflow implementation of Bridging the Gap between Label- and Reference-based Synthesis in Multi-attribute Image-to-Image Translation.
Overview architecture
Experiment Results
- CelebA
Preparation
- Prerequisites
- Tensorflow 1.15
- Python 2.x with matplotlib, numpy and scipy
- Dataset
- CelebA
- Images should be placed in ./data/CelebA/img_align_celeba
- tfrecords file should be placed in ./data/CelebA/celeba_tfrecords
Quick Start
Exemplar commands are listed here for a quick start.
dataset
-
prepare dataset to product tfrecords file
python data_noise_in.py
Training
-
To train with size of 128 X 128
python train_arch9.py --experiment_name "file_name" --gpu "gpu_num"
Testing
-
Example of test
python test_arch9.py --experiment_name "file_name" --gpu "gpu_num"
Citation
If this work is useful for your research, please consider citing: