Deep Illuminator is a data augmentation tool designed for image relighting. It can be used to easily and efficiently generate a wide range of illumination variants of a single image. It has been tested with several datasets and models and has been shown to succesfully improve performance. It has a built in visualizer created with Streamlit to preview how the target image can be relit. This tool has an accompanying paper.
The simplest method to use this tool is through Docker Hub:
docker pull kartvel/deep-illuminator
Once you have the Deep Illuminator image run the following command to launch the visualizer:
docker run -it --rm --gpus all \
-p 8501:8501 --entrypoint streamlit \
kartvel/deep-illuminator run streamlit/streamlit_app.py
You will be able to interact with it on localhost:8501
.
Note: If you do not have NVIDIA gpu support enabled for docker simply remove the --gpus all
option.
It is possible to quickly generate multiple variants for images contained in a directory by using the following command:
docker run -it --rm --gpus all \ ─╯
-v /path/to/input/images:/app/probe_relighting/originals \
-v /path/to/save/directory:/app/probe_relighting/output \
kartvel/deep-illuminator --[options]
Option | Values | Description |
---|---|---|
mode | ['synthetic', 'mid'] | Selecting the style of probes used as a relighting guide. |
step | int | Increment for the granularity of relighted images. max mid: 24, max synthetic: 360 |
Please read the following for other options: instructions
Improved performance of R2D2 for MMA@3 on HPatches
Training Dataset | Overall | Viewpoint | Illumination |
---|---|---|---|
COCO - Original | 71.0 | 65.4 | 77.1 |
COCO - Augmented | 72.2 (+1.7%) | 65.7 (+0.4%) | 79.2 (+2.7%) |
VIDIT - Original | 66.7 | 60.5 | 73.4 |
VIDIT - Augmented | 69.2 (+3.8%) | 60.9 (+0.6%) | 78.1 (+6.4%) |
Aachen - Original | 69.4 | 64.1 | 75.0 |
Aachen - Augmented | 72.6 (+4.6%) | 66.1 (+3.1%) | 79.6 (+6.1%) |
Improved performance of R2D2 for the Long-Term Visual Localization challenge on Aachen v1.1
Training Dataset | 0.25m, 2° | 0.5m, 5° | 5m, 10° |
---|---|---|---|
COCO - Original | 62.3 | 77.0 | 79.5 |
COCO - Augmented | 65.4 (+5.0%) | 83.8 (+8.8%) | 92.7 (+16%) |
VIDIT - Original | 40.8 | 53.4 | 61.3 |
VIDIT - Augmented | 53.9 (+32%) | 71.2 (+33%) | 83.2(+36%) |
Aachen - Original | 60.7 | 72.8 | 83.8 |
Aachen - Augmented | 63.4 (+4.4%) | 81.7 (+12%) | 92.1 (+9.9%) |
The developpement of the VAE for the visualizer was made possible by the PyTorch-VAE repository.
If you use this code in your project, please consider citing the following paper:
@misc{chogovadze2021controllable,
title={Controllable Data Augmentation Through Deep Relighting},
author={George Chogovadze and Rémi Pautrat and Marc Pollefeys},
year={2021},
eprint={2110.13996},
archivePrefix={arXiv},
primaryClass={cs.CV}
}