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📄 Abstract
Abstract: Humans routinely rely on memory to perform tasks, yet most robot policies
lack this capability; our goal is to endow robot policies with the same
ability. Naively conditioning on long observation histories is computationally
expensive and brittle under covariate shift, while indiscriminate subsampling
of history leads to irrelevant or redundant information. We propose a
hierarchical policy framework, where the high-level policy is trained to select
and track previous relevant keyframes from its experience. The high-level
policy uses selected keyframes and the most recent frames when generating text
instructions for a low-level policy to execute. This design is compatible with
existing vision-language-action (VLA) models and enables the system to
efficiently reason over long-horizon dependencies. In our experiments, we
finetune Qwen2.5-VL-7B-Instruct and $\pi_{0.5}$ as the high-level and low-level
policies respectively, using demonstrations supplemented with minimal language
annotations. Our approach, MemER, outperforms prior methods on three real-world
long-horizon robotic manipulation tasks that require minutes of memory. Videos
and code can be found at https://jen-pan.github.io/memer/.
Authors (4)
Ajay Sridhar
Jennifer Pan
Satvik Sharma
Chelsea Finn
Submitted
October 23, 2025
Key Contributions
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