Sports-Traj: A Unified Trajectory Generation Model for Multi-Agent Movement in Sports
Yi Xu, Yun Fu

TL;DR
UniTraj is a comprehensive trajectory generation model that unifies multiple tasks in sports movement analysis, leveraging advanced spatial-temporal modules and new datasets to improve performance in structured multi-agent scenarios.
Contribution
The paper introduces UniTraj, a novel unified model for multi-task trajectory generation in sports, incorporating a Ghost Spatial Masking module, extended State Space Models, and new sports datasets.
Findings
Superior performance on sports datasets compared to existing methods.
Effective handling of multiple trajectory tasks simultaneously.
New benchmarks for structured multi-agent sports movement analysis.
Abstract
Understanding multi-agent movement is critical across various fields. The conventional approaches typically focus on separate tasks such as trajectory prediction, imputation, or spatial-temporal recovery. Considering the unique formulation and constraint of each task, most existing methods are tailored for only one, limiting the ability to handle multiple tasks simultaneously, which is a common requirement in real-world scenarios. Another limitation is that widely used public datasets mainly focus on pedestrian movements with casual, loosely connected patterns, where interactions between individuals are not always present, especially at a long distance, making them less representative of more structured environments. To overcome these limitations, we propose a Unified Trajectory Generation model, UniTraj, that processes arbitrary trajectories as masked inputs, adaptable to diverse…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Multi-Agent Systems and Negotiation
MethodsAttention Is All You Need · Linear Layer · Byte Pair Encoding · Label Smoothing · Adam · Residual Connection · Position-Wise Feed-Forward Layer · Multi-Head Attention · Dropout · Dense Connections
