IT University, Copenhagen, Denmark.
IEEE Trans Pattern Anal Mach Intell. 2010 Mar;32(3):478-500. doi: 10.1109/TPAMI.2009.30.
Despite active research and significant progress in the last 30 years, eye detection and tracking remains challenging due to the individuality of eyes, occlusion, variability in scale, location, and light conditions. Data on eye location and details of eye movements have numerous applications and are essential in face detection, biometric identification, and particular human-computer interaction tasks. This paper reviews current progress and state of the art in video-based eye detection and tracking in order to identify promising techniques as well as issues to be further addressed. We present a detailed review of recent eye models and techniques for eye detection and tracking. We also survey methods for gaze estimation and compare them based on their geometric properties and reported accuracies. This review shows that, despite their apparent simplicity, the development of a general eye detection technique involves addressing many challenges, requires further theoretical developments, and is consequently of interest to many other domains problems in computer vision and beyond.
尽管在过去的 30 年中进行了积极的研究和取得了重大进展,但由于眼睛的个体差异、遮挡、大小、位置和光照条件的变化,眼睛检测和跟踪仍然具有挑战性。眼睛位置的数据和眼睛运动的细节有许多应用,是面部检测、生物识别和特定人机交互任务的关键。本文回顾了基于视频的眼睛检测和跟踪的最新进展和现状,以确定有前途的技术以及有待进一步解决的问题。我们详细回顾了最近的眼睛模型和眼睛检测跟踪技术。我们还调查了用于注视估计的方法,并根据它们的几何特性和报告的精度进行了比较。这篇综述表明,尽管眼睛检测技术看起来很简单,但开发一种通用的眼睛检测技术涉及到解决许多挑战,需要进一步的理论发展,因此引起了计算机视觉和其他领域的许多关注。