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arxiv_ai 97% Match Research Paper Robotics Researchers,AI Engineers in Manufacturing,Automation System Designers,Control Engineers 20 hours ago

FoldPath: End-to-End Object-Centric Motion Generation via Modulated Implicit Paths

robotics › manipulation
📄 Abstract

Abstract: Object-Centric Motion Generation (OCMG) is instrumental in advancing automated manufacturing processes, particularly in domains requiring high-precision expert robotic motions, such as spray painting and welding. To realize effective automation, robust algorithms are essential for generating extended, object-aware trajectories across intricate 3D geometries. However, contemporary OCMG techniques are either based on ad-hoc heuristics or employ learning-based pipelines that are still reliant on sensitive post-processing steps to generate executable paths. We introduce FoldPath, a novel, end-to-end, neural field based method for OCMG. Unlike prior deep learning approaches that predict discrete sequences of end-effector waypoints, FoldPath learns the robot motion as a continuous function, thus implicitly encoding smooth output paths. This paradigm shift eliminates the need for brittle post-processing steps that concatenate and order the predicted discrete waypoints. Particularly, our approach demonstrates superior predictive performance compared to recently proposed learning-based methods, and attains generalization capabilities even in real industrial settings, where only a limited amount of 70 expert samples are provided. We validate FoldPath through comprehensive experiments in a realistic simulation environment and introduce new, rigorous metrics designed to comprehensively evaluate long-horizon robotic paths, thus advancing the OCMG task towards practical maturity.

Key Contributions

Introduces FoldPath, a novel end-to-end neural field-based method for Object-Centric Motion Generation (OCMG). Unlike prior methods, FoldPath learns motion as a continuous function, implicitly encoding smooth paths and eliminating the need for brittle post-processing steps, thus enabling more robust generation of executable robot trajectories.

Business Value

Enables higher precision and more reliable robotic automation in tasks like spray painting and welding, improving product quality and reducing manufacturing costs.