Differentiable Semantic Meta-Learning Framework for Long-Tail Motion Forecasting in Autonomous Driving

Authors

  • Bin Rao University of Macau
  • Chengyue Wang University of Macau
  • Haicheng Liao University of Macau
  • Qianfang Wang South China University of Technology
  • Yanchen Guan University of Macau
  • Jiaxun Zhang University of Macau
  • Xingcheng Liu University of Macau
  • Meixin Zhu Southeast University
  • Kanye Ye Wang University of Macau
  • Zhenning Li University of Macau

DOI:

https://doi.org/10.1609/aaai.v40i2.37065

Abstract

Long-tail motion forecasting is a core challenge for autonomous driving, where rare yet safety-critical events-such as abrupt maneuvers and dense multi-agent interactions-dominate real-world risk. Existing approaches struggle in these scenarios because they rely on either non-interpretable clustering or model-dependent error heuristics, providing neither a differentiable notion of “tailness” nor a mechanism for rapid adaptation. We propose SAML, a Semantic-Aware Meta-Learning framework that introduces the first differentiable definition of tailness for motion forecasting. SAML quantifies motion rarity via semantically meaningful intrinsic (kinematic, geometric, temporal) and interactive (local and global risk) properties, which are fused by a Bayesian Tail Perceiver into a continuous, uncertainty-aware Tail Index. This Tail Index drives a meta-memory adaptation module that couples a dynamic prototype memory with an MAML-based cognitive set mechanism, enabling fast adaptation to rare or evolving patterns. Experiments on nuScenes, NGSIM, and HighD show that SAML achieves state-of-the-art overall accuracy and substantial gains on top 1-5% worst-case events, while maintaining high efficiency. Our findings highlight semantic meta-learning as a pathway toward robust and safety-critical motion forecasting.

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Published

2026-03-14

How to Cite

Rao, B., Wang, C., Liao, H., Wang, Q., Guan, Y., Zhang, J., … Li, Z. (2026). Differentiable Semantic Meta-Learning Framework for Long-Tail Motion Forecasting in Autonomous Driving. Proceedings of the AAAI Conference on Artificial Intelligence, 40(2), 962–970. https://doi.org/10.1609/aaai.v40i2.37065

Issue

Section

AAAI Technical Track on Application Domains II