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DRIFT: Diffusion-based Rule-Inferred For Trajectories

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Trajectory generation for mobile robots in unstructured environments faces a critical dilemma: balancing kinematic smoothness for safe execution with terminal precision for fine-grained tasks. Existing generative planners often struggle with this trade-off, yielding either smooth but imprecise paths or geometrically accurate but erratic motions. To address the aforementioned shortcomings, this article proposes DRIFT (Diffusion-based Rule-Inferred for Trajectories), a conditional diffusion framework designed to generate high-fidelity reference trajectories by integrating two complementary inductive biases. First, a Relational Inductive Bias, realized via a GNN-based Structured Scene Perception (SSP) module, encodes global topological constraints to ensure holistic smoothness. Second, a Temporal Attention Bias, implemented through a novel Graph-Conditioned Time-Aware GRU (GTGRU), dynamically attends to sparse obstacles and targets for precise local maneuvering. In the end, quantitative results demonstrate that DRIFT reconciles these conflicting objectives, achieving centimeter-level imitation fidelity (0.041m FDE) and competitive smoothness (27.19 Jerk). This balance yields highly executable reference plans for downstream control.

Jinyang Zhao, Handong Zheng, Yanjiu Zhong, Qiang Zhang, Yu Kang, Shunyu Wu (2) __INSTITUTION_6__ Hefei University of Technology, Hefei, China, (2) Shanghai Jiao Tong University, Shanghai, China)• 2026

Related benchmarks

TaskDatasetResultRank
Trajectory GenerationOutdoor Navigation Dataset
ISR92.03
8
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