Supervised descent method (SDM) applied to accurate pupil detection in off-the-shelf eye tracking systems

Andoni Larumbe, R. Cabeza, A. Villanueva
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引用次数: 8

Abstract

The precise detection of pupil/iris center is key to estimate gaze accurately. This fact becomes specially challenging in low cost frameworks in which the algorithms employed for high performance systems fail. In the last years an outstanding effort has been made in order to apply training-based methods to low resolution images. In this paper, Supervised Descent Method (SDM) is applied to GI4E database. The 2D landmarks employed for training are the corners of the eyes and the pupil centers. In order to validate the algorithm proposed, a cross validation procedure is performed. The strategy employed for the training allows us to affirm that our method can potentially outperform the state of the art algorithms applied to the same dataset in terms of 2D accuracy. The promising results encourage to carry on in the study of training-based methods for eye tracking.
监督下降法(SDM)用于眼动追踪系统中瞳孔的精确检测
瞳孔/虹膜中心的精确检测是准确估计注视的关键。这一事实在低成本框架中变得特别具有挑战性,其中用于高性能系统的算法失败。在过去的几年里,为了将基于训练的方法应用于低分辨率图像,已经做出了杰出的努力。本文将监督下降法(SDM)应用于GI4E数据库。用于训练的二维地标是眼角和瞳孔中心。为了验证所提出的算法,执行了一个交叉验证过程。用于训练的策略使我们能够确认,我们的方法在2D精度方面可以潜在地优于应用于相同数据集的最先进算法。这一结果鼓励了基于训练的眼动追踪方法的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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