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mindmap: Spatial Memory in Deep Feature Maps for 3D Action Policies

24 September 2025
Remo Steiner
A. Millane
David Tingdahl
Clemens Volk
Vikram Ramasamy
Xinjie Yao
Peter Du
Soha Pouya
Shiwei Sheng
ArXiv (abs)PDFHTMLGithub (950★)
Main:8 Pages
6 Figures
Bibliography:3 Pages
3 Tables
Appendix:3 Pages
Abstract

End-to-end learning of robot control policies, structured as neural networks, has emerged as a promising approach to robotic manipulation. To complete many common tasks, relevant objects are required to pass in and out of a robot's field of view. In these settings, spatial memory - the ability to remember the spatial composition of the scene - is an important competency. However, building such mechanisms into robot learning systems remains an open research problem. We introduce mindmap (Spatial Memory in Deep Feature Maps for 3D Action Policies), a 3D diffusion policy that generates robot trajectories based on a semantic 3D reconstruction of the environment. We show in simulation experiments that our approach is effective at solving tasks where state-of-the-art approaches without memory mechanisms struggle. We release our reconstruction system, training code, and evaluation tasks to spur research in this direction.

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