DAG-STL: A Hierarchical Framework for Zero-Shot Trajectory Planning under Signal Temporal Logic Specifications
Ruijia Liu, Ancheng Hou, Xiao Yu, Xiang Yin

TL;DR
DAG-STL is a hierarchical framework that enables zero-shot trajectory planning under STL constraints without explicit system models, by decomposing tasks and synthesizing trajectories with learned estimates and diffusion models.
Contribution
It introduces a novel hierarchical approach that separates logical reasoning from trajectory realization, enabling zero-shot STL planning with unknown dynamics using only trajectory data.
Findings
Outperforms direct robustness-guided diffusion on complex tasks.
Generalizes across navigation and manipulation environments.
Recovers most model-solvable tasks with computational efficiency.
Abstract
Signal Temporal Logic (STL) is a powerful language for specifying temporally structured robotic tasks. Planning executable trajectories under STL constraints remains difficult when system dynamics and environment structure are not analytically available. Existing methods typically either assume explicit models or learn task-specific behaviors, limiting zero-shot generalization to unseen STL tasks. In this work, we study offline STL planning under unknown dynamics using only task-agnostic trajectory data. Our central design philosophy is to separate logical reasoning from trajectory realization. We instantiate this idea in DAG-STL, a hierarchical framework that converts long-horizon STL planning into three stages. It first decomposes an STL formula into reachability and invariance progress conditions linked by shared timing constraints. It then allocates timed waypoints using learned…
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