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HDMapNet
HDMapNet: An Online HD Map Construction and Evaluation Framework
ICRA 2022, CVPR 2021 Workshop best paper nominee
Qi Li, Yue Wang, Yilun Wang, Hang Zhao
[Paper] [Project Page] [5-min video]
Abstract: Estimating local semantics from sensory inputs is a central component for high-definition map constructions in autonomous driving. However, traditional pipelines require a vast amount of human efforts and resources in annotating and maintaining the semantics in the map, which limits its scalability. In this paper, we introduce the problem of local semantic map learning, which dynamically constructs the vectorized semantics based on onboard sensor observations. Meanwhile, we introduce a local semantic map learning method, dubbed HDMapNet. HDMapNet encodes image features from surrounding cameras and/or point clouds from LiDAR, and predicts vectorized map elements in the bird's-eye view. We benchmark HDMapNet on nuScenes dataset and show that in all settings, it performs better than baseline methods. Of note, our fusion-based HDMapNet outperforms existing methods by more than 50% in all metrics. In addition, we develop semantic-level and instance-level metrics to evaluate the map learning performance. Finally, we showcase our method is capable of predicting a locally consistent map. By introducing the method and metrics, we invite the community to study this novel map learning problem. Code and evaluation kit will be released to facilitate future development.
Questions/Requests: Please file an issue or email liqi17thu@gmail.com.
Preparation
-
Download nuScenes dataset and put it to
dataset/
folder. -
Install dependencies by running
pip install -r requirement.txt
-
Install pytorch from
https://pytorch.org/get-started/locally/
-
Install pytorch scatter from
https://pytorch-geometric.readthedocs.io/en/latest/notes/installation.html
Label
Run python vis_label.py
for demo of vectorized labels. The visualizations are in dataset/nuScenes/samples/GT
.
Training
Run python train.py --instance_seg --direction_pred --version [v1.0-trainval, v1.0-mini] --logdir [output place]
.
Evaluation
Before running the evaluation code, you should get the submission.json
file first, which can be generated by the following command.
python export_gt_to_json.py
Run python evaluate.py --result_path [submission file path]
for evaluation. The script accepts vectorized or rasterized maps as input. For vectorized map, We firstly rasterize the vectors to map to do evaluation. For rasterized map, you should make sure the line width=1.
Below is the format for vectorized submission:
vectorized_submission {
"meta": {
"use_camera": <bool> -- Whether this submission uses camera data as an input.
"use_lidar": <bool> -- Whether this submission uses lidar data as an input.
"use_radar": <bool> -- Whether this submission uses radar data as an input.
"use_external": <bool> -- Whether this submission uses external data as an input.
"vector": true -- Whether this submission uses vector format.
},
"results": {
sample_token <str>: List[vectorized_line] -- Maps each sample_token to a list of vectorized lines.
}
}
vectorized_line {
"pts": List[<float, 2>] -- Ordered points to define the vectorized line.
"pts_num": <int>, -- Number of points in this line.
"type": <0, 1, 2> -- Type of the line: 0: ped; 1: divider; 2: boundary
"confidence_level": <float> -- Confidence level for prediction (used by Average Precision)
}
For rasterized submission, the format is:
rasterized_submisson {
"meta": {
"use_camera": <bool> -- Whether this submission uses camera data as an input.
"use_lidar": <bool> -- Whether this submission uses lidar data as an input.
"use_radar": <bool> -- Whether this submission uses radar data as an input.
"use_external": <bool> -- Whether this submission uses external data as an input.
"vector": false -- Whether this submission uses vector format.
},
"results": {
sample_token <str>: { -- Maps each sample_token to a list of vectorized lines.
"map": [<float, (C, H, W)>], -- Raster map of prediction (C=0: ped; 1: divider 2: boundary). The value indicates the line idx (start from 1).
"confidence_level": Array[float], -- confidence_level[i] stands for confidence level for i^th line (start from 1).
}
}
}
Run python export_gt_to_json.py
to get a demo of vectorized submission. Run python export_gt_to_json.py --raster
for rasterized submission.
Run python export_pred_to_json.py --modelf [checkpoint]
to get submission file for trained model.
Citation
If you found this paper or codebase useful, please cite our paper:
@misc{li2021hdmapnet,
title={HDMapNet: An Online HD Map Construction and Evaluation Framework},
author={Qi Li and Yue Wang and Yilun Wang and Hang Zhao},
year={2021},
eprint={2107.06307},
archivePrefix={arXiv},
primaryClass={cs.CV}
}