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GPD: Guided Polynomial Diffusion for Motion Planning

Authors :
Srikanth, Ajit
Mahanjan, Parth
Saha, Kallol
Mandadi, Vishal
Paul, Pranjal
Wadhwani, Pawan
Bhowmick, Brojeshwar
Singh, Arun
Krishna, Madhava
Publication Year :
2025

Abstract

Diffusion-based motion planners are becoming popular due to their well-established performance improvements, stemming from sample diversity and the ease of incorporating new constraints directly during inference. However, a primary limitation of the diffusion process is the requirement for a substantial number of denoising steps, especially when the denoising process is coupled with gradient-based guidance. In this paper, we introduce, diffusion in the parametric space of trajectories, where the parameters are represented as Bernstein coefficients. We show that this representation greatly improves the effectiveness of the cost function guidance and the inference speed. We also introduce a novel stitching algorithm that leverages the diversity in diffusion-generated trajectories to produce collision-free trajectories with just a single cost function-guided model. We demonstrate that our approaches outperform current SOTA diffusion-based motion planners for manipulators and provide an ablation study on key components.

Subjects

Subjects :
Computer Science - Robotics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.18229
Document Type :
Working Paper