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DriveInsight

Jiankun Li, Hao Li, Jiangjiang Liu, Zhikang Zou, Xiaoqing Ye†, Fan Wang, Jizhou Huang†, Hua Wu, Haifeng Wang

Baidu Inc.

Corresponding author

arXiv link

Overview

We present a debugging and analyzing tool for black-box end-to-end autonomous driving models.

11111 Overall architecture of our DriveInsight framework.

Evaluation

Closed-loop evaluation on the Town05 Long & Short benchmarks. Our method achieve a competitive driving score while also achieving the highest route completion. The sign * denotes that we exclude data from town05 in the training set.

Method Modality Reference Training frames Town05 Long DS Town05 Long RC Town05 Short DS Town05 Short RC
LBC C CoRL 20 150K 12.3 31.9 31.0 55.0
Transfuser C+L TPAMI 22 150K 31.0 47.5 54.5 78.4
ST-P3 C ECCV 22 150K 11.5 83.2 55.1 86.7
VAD C ICCV 23 3.0M 30.3 75.2 64.3 87.3
ThinkTwice C+L CVPR 23 2.2M 70.9 95.5 - -
MILE C NeurIPS 22 2.9M 61.1 97.4 - -
Interfuser C CoRL 22 3.0M 68.3 95.0 94.9 95.2
DriveAdapter C+L ICCV 23 2.0M 71.9 97.3 - -
Ours C+L - 1.8M 66.6 100.0 95.3 99.2
Ours* C+L - 1.5M 64.4 100.0 93.2 95.8

Citation

If you find this project helpful, please consider citing the following paper:

@article{li2024exploring,
  title={Exploring the Causality of End-to-End Autonomous Driving},
  author={Jiankun, Li and Hao, Li and Jiangjiang, Liu and Zhikang, Zou and Xiaoqing, Ye and Fan, Wang and Jizhou, Huang and Hua, Wu and Haifeng, Wang},
  journal={arXiv preprint arXiv:2407.06546},
  year={2024}
}

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