NashFormer: Leveraging Local Nash Equilibria for Semantically Diverse
Trajectory Prediction
- URL: http://arxiv.org/abs/2305.17600v3
- Date: Sat, 11 Nov 2023 06:49:28 GMT
- Title: NashFormer: Leveraging Local Nash Equilibria for Semantically Diverse
Trajectory Prediction
- Authors: Justin Lidard, Oswin So, Yanxia Zhang, Jonathan DeCastro, Xiongyi Cui,
Xin Huang, Yen-Ling Kuo, John Leonard, Avinash Balachandran, Naomi Leonard,
Guy Rosman
- Abstract summary: NashFormer is a framework for trajectory prediction that leverages game-theoretic inverse reinforcement learning to improve coverage of multi-modal predictions.
Experiment results show that our predictor produces accurate predictions while covering $33%$ more potential interactions versus a baseline model.
- Score: 11.319057000888638
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Interactions between road agents present a significant challenge in
trajectory prediction, especially in cases involving multiple agents. Because
existing diversity-aware predictors do not account for the interactive nature
of multi-agent predictions, they may miss these important interaction outcomes.
In this paper, we propose NashFormer, a framework for trajectory prediction
that leverages game-theoretic inverse reinforcement learning to improve
coverage of multi-modal predictions. We use a training-time game-theoretic
analysis as an auxiliary loss resulting in improved coverage and accuracy
without presuming a taxonomy of actions for the agents. We demonstrate our
approach on the interactive split of the Waymo Open Motion Dataset, including
four subsets involving scenarios with high interaction complexity. Experiment
results show that our predictor produces accurate predictions while covering
$33\%$ more potential interactions versus a baseline model.
Related papers
- Performative Prediction on Games and Mechanism Design [69.7933059664256]
We study a collective risk dilemma where agents decide whether to trust predictions based on past accuracy.
As predictions shape collective outcomes, social welfare arises naturally as a metric of concern.
We show how to achieve better trade-offs and use them for mechanism design.
arXiv Detail & Related papers (2024-08-09T16:03:44Z) - Multi-Agent Trajectory Prediction with Difficulty-Guided Feature Enhancement Network [1.5888246742280365]
Trajectory prediction is crucial for autonomous driving as it aims to forecast future movements of traffic participants.
Traditional methods usually perform holistic inference on trajectories of agents, neglecting the differences in difficulty among agents.
This paper proposes a novel DifficultyGuided Feature Enhancement (DGFNet), which leverages the prediction difficulty differences among agents.
arXiv Detail & Related papers (2024-07-26T07:04:30Z) - Neural Interaction Energy for Multi-Agent Trajectory Prediction [55.098754835213995]
We introduce a framework called Multi-Agent Trajectory prediction via neural interaction Energy (MATE)
MATE assesses the interactive motion of agents by employing neural interaction energy.
To bolster temporal stability, we introduce two constraints: inter-agent interaction constraint and intra-agent motion constraint.
arXiv Detail & Related papers (2024-04-25T12:47:47Z) - SSL-Interactions: Pretext Tasks for Interactive Trajectory Prediction [4.286256266868156]
We present SSL-Interactions that proposes pretext tasks to enhance interaction modeling for trajectory prediction.
We introduce four interaction-aware pretext tasks to encapsulate various aspects of agent interactions.
We also propose an approach to curate interaction-heavy scenarios from datasets.
arXiv Detail & Related papers (2024-01-15T14:43:40Z) - A Hierarchical Hybrid Learning Framework for Multi-agent Trajectory
Prediction [4.181632607997678]
We propose a hierarchical hybrid framework of deep learning (DL) and reinforcement learning (RL) for multi-agent trajectory prediction.
In the DL stage, the traffic scene is divided into multiple intermediate-scale heterogenous graphs based on which Transformer-style GNNs are adopted to encode heterogenous interactions.
In the RL stage, we divide the traffic scene into local sub-scenes utilizing the key future points predicted in the DL stage.
arXiv Detail & Related papers (2023-03-22T02:47:42Z) - ProspectNet: Weighted Conditional Attention for Future Interaction
Modeling in Behavior Prediction [5.520507323174275]
We formulate the end-to-end joint prediction problem as a sequential learning process of marginal learning and joint learning of vehicle behaviors.
We propose ProspectNet, a joint learning block that adopts the weighted attention score to model the mutual influence between interactive agent pairs.
We show that ProspectNet outperforms the Cartesian product of two marginal predictions, and achieves comparable performance on the Interactive Motion Prediction benchmarks.
arXiv Detail & Related papers (2022-08-29T19:29:49Z) - M2I: From Factored Marginal Trajectory Prediction to Interactive
Prediction [26.49897317427192]
Existing models excel at predicting marginal trajectories for single agents, yet it remains an open question to jointly predict scene compliant trajectories over multiple agents.
In this work, we exploit the underlying relations between interacting agents and decouple the joint prediction problem into marginal prediction problems.
Our proposed approach M2I first classifies interacting agents as pairs of influencers and reactors, and then leverages a marginal prediction model and a conditional prediction model to predict trajectories for the influencers and reactors, respectively.
arXiv Detail & Related papers (2022-02-24T03:28:26Z) - You Mostly Walk Alone: Analyzing Feature Attribution in Trajectory
Prediction [52.442129609979794]
Recent deep learning approaches for trajectory prediction show promising performance.
It remains unclear which features such black-box models actually learn to use for making predictions.
This paper proposes a procedure that quantifies the contributions of different cues to model performance.
arXiv Detail & Related papers (2021-10-11T14:24:15Z) - Unlimited Neighborhood Interaction for Heterogeneous Trajectory
Prediction [97.40338982628094]
We propose a simple yet effective Unlimited Neighborhood Interaction Network (UNIN) which predicts trajectories of heterogeneous agents in multiply categories.
Specifically, the proposed unlimited neighborhood interaction module generates the fused-features of all agents involved in an interaction simultaneously.
A hierarchical graph attention module is proposed to obtain category-tocategory interaction and agent-to-agent interaction.
arXiv Detail & Related papers (2021-07-31T13:36:04Z) - Online Multi-Agent Forecasting with Interpretable Collaborative Graph
Neural Network [65.11999700562869]
We propose a novel collaborative prediction unit (CoPU), which aggregates predictions from multiple collaborative predictors according to a collaborative graph.
Our methods outperform state-of-the-art works on the three tasks by 28.6%, 17.4% and 21.0% on average.
arXiv Detail & Related papers (2021-07-02T08:20:06Z) - SMART: Simultaneous Multi-Agent Recurrent Trajectory Prediction [72.37440317774556]
We propose advances that address two key challenges in future trajectory prediction.
multimodality in both training data and predictions and constant time inference regardless of number of agents.
arXiv Detail & Related papers (2020-07-26T08:17:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.