AI RESEARCH

MSG: Multi-Stream Generative Policies for Sample-Efficient Robotic Manipulation

arXiv CS.AI

ArXi:2509.24956v2 Announce Type: replace-cross Generative robot policies such as Flow Matching offer flexible, multi-modal policy learning but are sample-inefficient. Although object-centric policies improve sample efficiency, it does not resolve this limitation. In this work, we propose Multi-Stream Generative Policy (MSG), an inference-time composition framework that trains multiple object-centric policies and combines them at inference to improve generalization and sample efficiency. MSG is model-agnostic and inference-only, hence widely applicable to various generative policies and.