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simmediumpolicy-learningmetric · varies

HiFlow: Tokenization-Free Scale-Wise Autoregressive Policy Learning via Flow Matching

Description

Coarse-to-fine autoregressive modeling has recently shown strong promise for visuomotor policy learning, combining the inference efficiency of autoregressive methods with the global trajectory coherence of diffusion-based policies. However, existing approaches rely on discrete action tokenizers that map continuous action sequences to codebook indices, a design inherited from image generation where learned compression is necessary for high-dimensional pixel data. We observe that robot actions are

Source

http://arxiv.org/abs/2603.27281v1