基于混合模型的独立于主体的自适应瞳孔自动眼动跟踪标定

Thomas B. Kinsman, J. Pelz
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引用次数: 1

摘要

本文描述了在眼动追踪应用程序中用于跟踪人眼运动的初始预处理步骤。中心方法将每个像素建模为:暗瞳像素,亮高光像素或中性像素的组合。便携式眼动追踪技术包括在研究过程中跟踪受试者的瞳孔。本文描述了使用混合模型作为处理阶段的非常初步的结果。讨论了使用混合模型的技术问题。混合模型的像素分类输入naïve贝叶斯瞳孔跟踪器。只有低级别的信息被用于瞳孔识别。不执行运动跟踪,不执行信念传播,也不计算卷积。该算法很适合并行实现。该解决方案克服了几个技术挑战,并且最初的结果出乎意料地准确。该技术在眼到场景自动校准系统中显示出良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a subject-independent adaptive pupil tracker for automatic eye tracking calibration using a mixture model
This paper describes the initial pre-processing steps used to follow the motions of the human eye in an eye tracking application. The central method models each pixel as a combination of either: a dark pupil pixel, bright highlight pixel, or a neutral pixel. Portable eye tracking involves tracking a subject's pupil over the course of a study. This paper describes very preliminary results from using a mixture model as a processing stage. Technical issues of using a mixture model are discussed. The pixel classifications from the mixture model were fed into a naïve Bayes pupil tracker. Only low-level information is used for pupil identification. No motion tracking is performed, no belief propagation is performed, and no convolutions are computed. The algorithm is well positioned for parallel implementations. The solution surmounts several technical challenges, and initial results are unexpectedly accurate. The technique shows good promise for incorporation into a system for automatic eye-to-scene calibration.
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