Multimodal AI

MemOCR: Layout-Aware Visual Memory for Efficient Long-Horizon Reasoning

YYaorui ShiSShugui LiuYYu YangWWenyu MaoYYuxin ChenQQi GUHHui SuXXunliang CaiXXiang WangAAn Zhang
Published
January 29, 2026
Authors
10

Abstract

Long-horizon agentic reasoning necessitates effectively compressing growing interaction histories into a limited context window. Most existing memory systems serialize history as text, where token-level cost is uniform and scales linearly with length, often spending scarce budget on low-value details. To this end, we introduce MemOCR, a multimodal memory agent that improves long-horizon reasoning under tight context budgets by allocating memory space with adaptive information density through visual layout. Concretely, MemOCR maintains a structured rich-text memory (e.g., headings, highlights) and renders it into an image that the agent consults for memory access, visually prioritizing crucial evidence while aggressively compressing auxiliary details. To ensure robustness across varying memory budgets, we train MemOCR with reinforcement learning under budget-aware objectives that expose the agent to diverse compression levels. Across long-context multi-hop and single-hop question-answering benchmarks, MemOCR outperforms strong text-based baselines and achieves more effective context utilization under extreme budgets.

Keywords

memory systemscontext windowvisual layoutstructured rich-text memoryreinforcement learningcontext utilizationlong-horizon reasoning

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