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Hauptverfasser: Feng, Renju, Xi, Ning, Chu, Duanfeng, Wang, Rukang, Deng, Zejian, Wang, Anzheng, Lu, Liping, Wang, Jinxiang, Huang, Yanjun
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2504.19580
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author Feng, Renju
Xi, Ning
Chu, Duanfeng
Wang, Rukang
Deng, Zejian
Wang, Anzheng
Lu, Liping
Wang, Jinxiang
Huang, Yanjun
author_facet Feng, Renju
Xi, Ning
Chu, Duanfeng
Wang, Rukang
Deng, Zejian
Wang, Anzheng
Lu, Liping
Wang, Jinxiang
Huang, Yanjun
contents This paper presents ARTEMIS, an end-to-end autonomous driving framework that combines autoregressive trajectory planning with Mixture-of-Experts (MoE). Traditional modular methods suffer from error propagation, while existing end-to-end models typically employ static one-shot inference paradigms that inadequately capture the dynamic changes of the environment. ARTEMIS takes a different method by generating trajectory waypoints sequentially, preserves critical temporal dependencies while dynamically routing scene-specific queries to specialized expert networks. It effectively relieves trajectory quality degradation issues encountered when guidance information is ambiguous, and overcomes the inherent representational limitations of singular network architectures when processing diverse driving scenarios. Additionally, we use a lightweight batch reallocation strategy that significantly improves the training speed of the Mixture-of-Experts model. Through experiments on the NAVSIM dataset, ARTEMIS exhibits superior competitive performance, achieving 87.0 PDMS and 83.1 EPDMS with ResNet-34 backbone, demonstrates state-of-the-art performance on multiple metrics.
format Preprint
id arxiv_https___arxiv_org_abs_2504_19580
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ARTEMIS: Autoregressive End-to-End Trajectory Planning with Mixture of Experts for Autonomous Driving
Feng, Renju
Xi, Ning
Chu, Duanfeng
Wang, Rukang
Deng, Zejian
Wang, Anzheng
Lu, Liping
Wang, Jinxiang
Huang, Yanjun
Robotics
This paper presents ARTEMIS, an end-to-end autonomous driving framework that combines autoregressive trajectory planning with Mixture-of-Experts (MoE). Traditional modular methods suffer from error propagation, while existing end-to-end models typically employ static one-shot inference paradigms that inadequately capture the dynamic changes of the environment. ARTEMIS takes a different method by generating trajectory waypoints sequentially, preserves critical temporal dependencies while dynamically routing scene-specific queries to specialized expert networks. It effectively relieves trajectory quality degradation issues encountered when guidance information is ambiguous, and overcomes the inherent representational limitations of singular network architectures when processing diverse driving scenarios. Additionally, we use a lightweight batch reallocation strategy that significantly improves the training speed of the Mixture-of-Experts model. Through experiments on the NAVSIM dataset, ARTEMIS exhibits superior competitive performance, achieving 87.0 PDMS and 83.1 EPDMS with ResNet-34 backbone, demonstrates state-of-the-art performance on multiple metrics.
title ARTEMIS: Autoregressive End-to-End Trajectory Planning with Mixture of Experts for Autonomous Driving
topic Robotics
url https://arxiv.org/abs/2504.19580