TTAGaze: Self-Supervised Test-Time Adaptation for Personalized Gaze Estimation
Yong Wu, Guang Chen, Linwei Ye, Yuanning Jia, Zhi Liu, Yang Wang
Abstract
In this paper, we address the problem of personalized gaze estimation. Due to the anatomical differences between individuals, current personalized gaze models often rely on fine-tuning or fully-supervised methods with labeled calibration samples, which may not be practical in real-world applications. To tackle this limitation, we propose an approach called Self-Supervised Test-Time Adaptation for Personalized Gaze Estimation (TTAGaze), which enables adaptation with small unlabeled data at test time. Our goal is to develop a gaze estimation model specifically adapted to a target person using only a few unlabeled images. We call this setting as unsupervised few-shot personalized adaptation in gaze estimation, which is more aligned with real-world scenarios compared to existing approaches. Additionally, Our approach leverages self-supervised learning and meta-learning. The model consists of the main task (gaze estimation) and a self-supervised auxiliary task. During training, the two task are trained using a coupled method. At test time, adaptation is achieved by optimizing the self-supervised loss adapted to an unseen person with a few unlabeled data. The model parameters are learned via model-agnostic meta-learning (MAML) to facilitate effective unsupervised few-shot personalized adaptation in gaze estimation. Experimental results demonstrate that the proposed method outperforms alternative approaches on several widely-used benchmark datasets.