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DTG : Diffusion-based Trajectory Generation for Mapless Global Navigation

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arxiv 2403.09900 v4 pith:3GNKQ7BV submitted 2024-03-14 cs.RO

DTG : Diffusion-based Trajectory Generation for Mapless Global Navigation

classification cs.RO
keywords globalnavigationtrajectorydiffusiondiffusion-baseddistancegenerationgoal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a novel end-to-end diffusion-based trajectory generation method, DTG, for mapless global navigation in challenging outdoor scenarios with occlusions and unstructured off-road features like grass, buildings, bushes, etc. Given a distant goal, our approach computes a trajectory that satisfies the following goals: (1) minimize the travel distance to the goal; (2) maximize the traversability by choosing paths that do not lie in undesirable areas. Specifically, we present a novel Conditional RNN(CRNN) for diffusion models to efficiently generate trajectories. Furthermore, we propose an adaptive training method that ensures that the diffusion model generates more traversable trajectories. We evaluate our methods in various outdoor scenes and compare the performance with other global navigation algorithms on a Husky robot. In practice, we observe at least a 15% improvement in traveling distance and around a 7% improvement in traversability.

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