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Ego: Embedding-Guided Personalization of Vision-Language Models

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AI assistants that support humans in daily life are becoming increasingly feasible, driven by the rapid advancements in multimodal language models. A key challenge lies in overcoming the generic nature of these models to deliver personalized experiences. Existing approaches to personalizing large vision language models often rely on additional training stages, which limit generality and scalability, or on engineered pipelines with external pre-trained modules, which hinder deployment efficiency. In this work, we propose an efficient personalization method that leverages the model's inherent ability to capture personalized concepts. Specifically, we extract visual tokens that predominantly represent the target concept by utilizing the model's internal attention mechanisms. These tokens serve as a memory of that specific concept, enabling the model to recall and describe it when it appears in test images. We conduct a comprehensive and unified evaluation of our approach and SOTA methods across various personalization settings including single-concept, multi-concept, and video personalization, demonstrating strong performance gains with minimal personalization overhead.

Soroush Seifi, Simon Gardier, Vaggelis Dorovatas, Daniel Olmeda Reino, Rahaf Aljundi• 2026

Related benchmarks

TaskDatasetResultRank
CaptioningMyVLM Single Concept (test)
Recall91.3
4
RecognitionMyVLM Single Concept, 1 Reference View
Precision86
4
RecognitionYo'LLaVA Single Concept, 1 Reference View 24
Precision77.2
4
RecognitionThis-is-my Single Concept, 1 Reference View 32
Precision81.3
4
Visual Question AnsweringThis-is-my Single Concept (test)
Accuracy88
4
Visual Question AnsweringYo’LLaVA Single Concept (test)
Accuracy92.3
4
CaptioningThis-is-my Multi Concept (test)
Recall70.9
3
RecognitionRAP Multi Concept 1 Reference View 11
Precision100
3
RecognitionMyVLM Single Concept, 5 Reference Views 1
Precision87.7
3
RecognitionYo'LLaVA Single Concept, 5 Reference Views 24
Precision85
3
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