arXiv:2606.05275v1 Announce Type: new
Abstract: We study the personal camera roll visual question answering setting. In this setting, a conversational AI assistant can access a user's personal camera roll and retrieve relevant photos to answer queries, ranging from simple factual questions (e.g., Name of the food I tried yesterday?'') to more open-ended ones (e.g., Recommend some dishes I have never eaten before''). Given the vast nature of the personal camera roll (i.e., multiple years, hundreds to thousands of photos), a successful AI assistant needs to understand a long-horizon, highly personalized visual content stream in order to navigate and locate the correct and/or relevant information. To support this, we collect and manually annotate questions that mimic real-world usage. The final dataset, camroll, contains 50 users, 31,476 images, and 2,500 QA pairs. We further design camroll-agent, a conversational AI agent equipped with hierarchical memory and a minimal set of tools for efficient navigation over large, personalized visual memory. Experimental results show that camroll-agent outperforms numerous baselines and methods for long-context understanding AI agents system. Together, the camroll dataset and camroll-agent highlight the gap in AI agents' long-context reasoning: personalized visual memory requires different approaches from standard long-context textual memory, especially when consistency, visual details, and user-specific context are present.
Personal AI Agent for Camera Roll VQA
Researchers have developed camroll-agent, a conversational AI assistant that accesses a user's personal camera roll to answer questions about their photos, from factual queries like identifying food eaten yesterday to open-ended recommendations. The system, supported by a new dataset of 50 users, 31,476 images, and 2,500 question-answer pairs, uses hierarchical memory to navigate years of personalized visual content. The work reveals that AI agents require distinct approaches for long-context visual memory compared to standard textual memory, particularly for maintaining consistency and user-specific context.
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