Causal Intervention for Human Trajectory Prediction with Cross Attention Mechanism
AbstractHuman trajectory Prediction (HTP) in complex social environments plays a crucial and fundamental role in artificial intelligence systems. Conventional methods make use of both history behaviors and social interactions to forecast future trajectories. However, we demonstrate that the social environment is a confounder that misleads the model to learn spurious correlations between history and future trajectories. To end this, we first formulate the social environment, history and future trajectory variables into a structural causal model to analyze the causalities among them. Based on causal intervention rather than conventional likelihood, we propose a Social Environment ADjustment (SEAD) method, to remove the confounding effect of the social environment. The core of our method is implemented by a Social Cross Attention (SCA) module, which is universal, simple and effective. Our method has consistent improvements on ETH-UCY datasets with three baseline models and achieves competitive performances with existing methods.
How to Cite
Ge, C., Song, S., & Huang, G. (2023). Causal Intervention for Human Trajectory Prediction with Cross Attention Mechanism. Proceedings of the AAAI Conference on Artificial Intelligence, 37(1), 658-666. https://doi.org/10.1609/aaai.v37i1.25142
AAAI Technical Track on Computer Vision I