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Personal Visual Context Learning in Large Multimodal Models

About

As wearable devices like smart glasses integrate Large Multimodal Models (LMMs) into the continuous first-person visual streams of individual users, the evolution of these models into true personal assistants hinges on visual personalization: the ability to reason over visual information unique to the wearer. We formalize this capability as Personal Visual Context Learning (Personal VCL), the prompt-time capability of using user-specific visual context to resolve personalized queries. To systematically evaluate this, we present Personal-VCL-Bench, a comprehensive benchmark capturing the personal visual world across persons, objects, and behaviors. Our analysis of frontier LMMs identifies a profound context utilization gap, revealing that the mechanisms for leveraging visual evidence, as well as aggregating multiple visual observations, remain critically understudied. Motivated by these findings, we propose the Agentic Context Bank, a strong inference-time baseline that structures a user's visual context into a self-refining memory bank and employs query-adaptive evidence selection. Our baseline approach consistently improves over standard context prompting regimes across tasks and evaluated backbones, demonstrating a practical path towards future personalized LMMs.

Zihui Xue, Ami Baid, Sangho Kim, Mi Luo, Kristen Grauman• 2026

Related benchmarks

TaskDatasetResultRank
Behavior Error DetectionPersonal-VCL-Bench Behavior
Accuracy66.22
4
Behavior Question AnsweringPersonal-VCL-Bench Behavior
Accuracy35.71
4
EgoWearer IdentificationPersonal-VCL-Bench EgoWearer
Accuracy61.6
4
Object DetectionPersonal-VCL-Bench Objects
Accuracy73.19
4
Object IdentificationPersonal-VCL-Bench Objects
Accuracy82.52
4
Person IdentificationPersonal-VCL-Bench Persons
Accuracy83.25
4
Person RelationPersonal-VCL-Bench Persons
Accuracy51.2
4
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