license: cc-by-4.0
task_categories:
- image-segmentation
- object-detection
task_ids:
- semantic-segmentation
- instance-segmentation
tags:
- automotive
- autonomous driving
- synthetic
- safe ai
- validation
- pedestrian detection
- 2d object-detection
- 3d object-detection
- semantic-segmentation
- instance-segmentation
pretty_name: VALERIE22
size_categories:
- 1K<n<10K
VALERIE22 - A photorealistic, richly metadata annotated dataset of urban environments
Dataset Description
- Paper: https://arxiv.org/abs/2308.09632
- Point of Contact: korbinian.hagn@intel.com
Dataset Summary
The VALERIE22 dataset was generated with the VALERIE procedural tools pipeline (see image below) providing a photorealistic sensor simulation rendered from automatically synthesized scenes. The dataset provides a uniquely rich set of metadata, allowing extraction of specific scene and semantic features (like pixel-accurate occlusion rates, positions in the scene and distance + angle to the camera). This enables a multitude of possible tests on the data and we hope to stimulate research on understanding performance of DNNs.
Each sequence of the dataset contains for each scene two rendered images. One is rendered with the default Blender tonemapping (/png) whereas the second is renderd with our photorealistic sensor simulation (see hagn2022optimized). The image below shows the difference of the two methods.
Following are some example images showing the unique characteristics of the different sequences.
Sequence0052 | Sequence0054 | Sequence0057 | Sequence0058 |
---|---|---|---|
Sequence0059 | Sequence0060 | Sequence0062 |
---|---|---|
Supported Tasks
- pedestrian detection
- 2d object-detection
- 3d object-detection
- semantic-segmentation
- instance-segmentation
- ai-validation
Dataset Structure
VALERIE22
ββββintel_results_sequence_0050
β ββββground-truth
β β ββββ2d-bounding-box_json
β β β ββββcar-camera000-0000-{UUID}-0000.json
β β ββββ3d-bounding-box_json
β β β ββββcar-camera000-0000-{UUID}-0000.json
β β ββββclass-id_png
β β β ββββcar-camera000-0000-{UUID}-0000.png
β β ββββgeneral-globally-per-frame-analysis_json
β β β ββββcar-camera000-0000-{UUID}-0000.json
β β β ββββcar-camera000-0000-{UUID}-0000.csv
β β ββββsemantic-group-segmentation_png
β β β ββββcar-camera000-0000-{UUID}-0000.png
β β ββββsemantic-instance-segmentation_png
β β β ββββcar-camera000-0000-{UUID}-0000.png
β β β ββββcar-camera000-0000-{UUID}-0000
β β β β ββββ{Entity-ID}
β ββββsensor
β β ββββcamera
β β β ββββleft
β β β β ββββpng
β β β β β ββββcar-camera000-0000-{UUID}-0000.png
β β β β ββββpng_distorted
β β β β β ββββcar-camera000-0000-{UUID}-0000.png
ββββintel_results_sequence_0052
ββββintel_results_sequence_0054
ββββintel_results_sequence_0057
ββββintel_results_sequence_0058
ββββintel_results_sequence_0059
ββββintel_results_sequence_0060
ββββintel_results_sequence_0062
Data Splits
Train/Validation/Test splits are provided
Licensing Information
CC BY 4.0
Citation Information
Relevant publications:
@misc{grau2023valerie22,
title={VALERIE22 -- A photorealistic, richly metadata annotated dataset of urban environments},
author={Oliver Grau and Korbinian Hagn},
year={2023},
eprint={2308.09632},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
@inproceedings{hagn2022increasing,
title={Increasing pedestrian detection performance through weighting of detection impairing factors},
author={Hagn, Korbinian and Grau, Oliver},
booktitle={Proceedings of the 6th ACM Computer Science in Cars Symposium},
pages={1--10},
year={2022}
}
@inproceedings{hagn2022validation,
title={Validation of Pedestrian Detectors by Classification of Visual Detection Impairing Factors},
author={Hagn, Korbinian and Grau, Oliver},
booktitle={European Conference on Computer Vision},
pages={476--491},
year={2022},
organization={Springer}
}
@incollection{grau2022variational,
title={A variational deep synthesis approach for perception validation},
author={Grau, Oliver and Hagn, Korbinian and Syed Sha, Qutub},
booktitle={Deep Neural Networks and Data for Automated Driving: Robustness, Uncertainty Quantification, and Insights Towards Safety},
pages={359--381},
year={2022},
publisher={Springer International Publishing Cham}
}
@incollection{hagn2022optimized,
title={Optimized data synthesis for DNN training and validation by sensor artifact simulation},
author={Hagn, Korbinian and Grau, Oliver},
booktitle={Deep Neural Networks and Data for Automated Driving: Robustness, Uncertainty Quantification, and Insights Towards Safety},
pages={127--147},
year={2022},
publisher={Springer International Publishing Cham}
}
@inproceedings{syed2020dnn,
title={DNN analysis through synthetic data variation},
author={Syed Sha, Qutub and Grau, Oliver and Hagn, Korbinian},
booktitle={Proceedings of the 4th ACM Computer Science in Cars Symposium},
pages={1--10},
year={2020}
}