Alfa: Attentive Low-Rank Filter Adaptation for Structure-Aware Cross-Domain Personalized Gaze Estimation
He-Yen Hsieh, Wei-Te Mark Ting, H.T. Kung

TL;DR
Alfa introduces an efficient method for personalizing gaze estimation models by reweighting pre-trained filters using low-rank approximation and attention, significantly improving accuracy with minimal data.
Contribution
The paper proposes Alfa, a novel low-rank filter adaptation technique that leverages attention to reweight pre-trained features for cross-domain gaze personalization.
Findings
Achieves lowest average gaze errors across four benchmarks.
Outperforms existing test-time personalization methods.
Applicable to non-vision models like language diffusion models.
Abstract
Pre-trained gaze models learn to identify useful patterns commonly found across users, but subtle user-specific variations (i.e., eyelid shape or facial structure) can degrade model performance. Test-time personalization (TTP) adapts pre-trained models to these user-specific domain shifts using only a few unlabeled samples. Efficient fine-tuning is critical in performing this domain adaptation: data and computation resources can be limited-especially for on-device customization. While popular parameter-efficient fine-tuning (PEFT) methods address adaptation costs by updating only a small set of weights, they may not be taking full advantage of structures encoded in pre-trained filters. To more effectively leverage existing structures learned during pre-training, we reframe personalization as a process to reweight existing features rather than learning entirely new ones. We present…
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Taxonomy
TopicsGaze Tracking and Assistive Technology · Visual Attention and Saliency Detection · Face recognition and analysis
