AI RESEARCH
MemoGen: Can Past Experience Improve Future Text-to-Image Generation?
arXiv CS.CV
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ArXi:2606.03243v1 Announce Type: new Modern text-to-image models have achieved strong visual synthesis, yet remain unreliable when prompts require implicit visual constraints, relational reasoning, or external knowledge. Existing retrieval-augmented and agentic generation methods mitigate this issue by acquiring external knowledge, references, or refined prompts for the current request, yet they typically treat each generation as an isolated episode and do not systematically preserve past successes or failures for future use.