Abstract:
Human gaze estimation plays a major role in many applications in human-computer interaction
and computer vision by identifying the users’ point-of-interest. The revolutionary developments
of deep learning have captured significant attention in the gaze estimation literature. Gaze
estimation techniques have progressed from single-user constrained environments to multiuser
unconstrained environments with the applicability of deep learning techniques in complex
unconstrained environments with extensive variations. This paper presents a comprehensive
survey of the single-user and multi-user gaze estimation approaches with deep learning. The
state-of-the-art approaches are analyzed based on deep learning model architectures, coordinate
systems, environmental constraints, datasets and performance evaluation metrics.Akey outcome
from this survey realizes the limitations, challenges, and future directions of multi-user gaze
estimation techniques. Furthermore, this paper serves as a reference point and a guideline for
future multi-user gaze estimation research.
Citation:
Pathirana, P., Senarath, S., Meedeniya, D., & Jayarathna, S. (2022). Eye gaze estimation: A survey on deep learning-based approaches. Expert Systems with Applications: An International Journal, 199(C). [29p.]. https://doi.org/10.1016/j.eswa.2022.116894