tamwaiban / Deep-Illuminator

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Deep Illuminator

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.

Example Augmentations

Usage

The simplest method to use this tool is through Docker Hub:

docker pull kartvel/deep-illuminator

Visualizer

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.

Generating Variants

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]

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

Buidling Docker image or running without a container

Please read the following for other options: instructions

Benchmarks

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%)

Acknowledgment

The developpement of the VAE for the visualizer was made possible by the PyTorch-VAE repository.

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