LGJul 31, 2024

MART: MultiscAle Relational Transformer Networks for Multi-agent Trajectory Prediction

arXiv:2407.21635v145 citationsh-index: 22Has Code
Originality Incremental advance
AI Analysis

This work addresses trajectory prediction for autonomous driving and environment understanding, presenting an incremental advance by extending relational transformers with hypergraph features.

The paper tackles multi-agent trajectory prediction by introducing a hypergraph transformer architecture called MART, which incorporates individual and group behaviors, and achieves state-of-the-art performance with improvements of 3.9% in ADE and 11.8% in FDE on the NBA dataset.

Multi-agent trajectory prediction is crucial to autonomous driving and understanding the surrounding environment. Learning-based approaches for multi-agent trajectory prediction, such as primarily relying on graph neural networks, graph transformers, and hypergraph neural networks, have demonstrated outstanding performance on real-world datasets in recent years. However, the hypergraph transformer-based method for trajectory prediction is yet to be explored. Therefore, we present a MultiscAle Relational Transformer (MART) network for multi-agent trajectory prediction. MART is a hypergraph transformer architecture to consider individual and group behaviors in transformer machinery. The core module of MART is the encoder, which comprises a Pair-wise Relational Transformer (PRT) and a Hyper Relational Transformer (HRT). The encoder extends the capabilities of a relational transformer by introducing HRT, which integrates hyperedge features into the transformer mechanism, promoting attention weights to focus on group-wise relations. In addition, we propose an Adaptive Group Estimator (AGE) designed to infer complex group relations in real-world environments. Extensive experiments on three real-world datasets (NBA, SDD, and ETH-UCY) demonstrate that our method achieves state-of-the-art performance, enhancing ADE/FDE by 3.9%/11.8% on the NBA dataset. Code is available at https://github.com/gist-ailab/MART.

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