HCCVNov 4, 2025

HAGI++: Head-Assisted Gaze Imputation and Generation

arXiv:2511.02468v1h-index: 8
Originality Incremental advance
AI Analysis

This work addresses a critical issue for researchers and practitioners in behavioral studies and human-computer interaction by improving gaze data completeness and accuracy in real-world settings, though it is incremental as it builds on existing diffusion models with novel sensor integration.

The paper tackles the problem of missing gaze data in mobile eye tracking by introducing HAGI++, a multi-modal diffusion-based approach that uses head orientation sensors to impute and generate gaze data, achieving superior performance over conventional and deep learning baselines on multiple datasets and enabling realistic gaze imputation even with 100% missing data.

Mobile eye tracking plays a vital role in capturing human visual attention across both real-world and extended reality (XR) environments, making it an essential tool for applications ranging from behavioural research to human-computer interaction. However, missing values due to blinks, pupil detection errors, or illumination changes pose significant challenges for further gaze data analysis. To address this challenge, we introduce HAGI++ - a multi-modal diffusion-based approach for gaze data imputation that, for the first time, uses the integrated head orientation sensors to exploit the inherent correlation between head and eye movements. HAGI++ employs a transformer-based diffusion model to learn cross-modal dependencies between eye and head representations and can be readily extended to incorporate additional body movements. Extensive evaluations on the large-scale Nymeria, Ego-Exo4D, and HOT3D datasets demonstrate that HAGI++ consistently outperforms conventional interpolation methods and deep learning-based time-series imputation baselines in gaze imputation. Furthermore, statistical analyses confirm that HAGI++ produces gaze velocity distributions that closely match actual human gaze behaviour, ensuring more realistic gaze imputations. Moreover, by incorporating wrist motion captured from commercial wearable devices, HAGI++ surpasses prior methods that rely on full-body motion capture in the extreme case of 100% missing gaze data (pure gaze generation). Our method paves the way for more complete and accurate eye gaze recordings in real-world settings and has significant potential for enhancing gaze-based analysis and interaction across various application domains.

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