【24h】

Eye movements and information geometry

机译:眼动和信息几何

获取原文
获取原文并翻译 | 示例
           

摘要

The human visual system uses eye movements to gather visual information. They act as visual scanning processes and can roughly be divided into two different types: small movements around fixation points and larger movements between fixation points. The processes are often modeled as random walks, and recent models based on heavy tail distributions, also known as Levy flights, have been used in these investigations. In contrast to these approaches we do not model the stochastic processes, but we will show that the step lengths of the movements between fixation points follow generalized Pareto distributions (GPDs). We will use general arguments from the theory of extreme value statistics to motivate the usage of the GPD and show empirically that the GPDs provide good fits for measured eye tracking data. In the framework of information geometry the GPDs with a common threshold form a two-dimensional Riemann manifold with the Fisher information matrix as a metric. We compute the Fisher information matrix for the GPDs and introduce a feature vector describing a GPD by its parameters and different geometrical properties of its Fisher information matrix. In our statistical analysis we use eye tracker measurements in a database with 15 observers viewing 1003 images under free-viewing conditions. We use Matlab functions with their standard parameter settings and show that a naive Bayes classifier using the eigenvalues of the Fisher information matrix provides a high classification rate identifying the 15 observers in the database. (C) 2016 Optical Society of America
机译:人类视觉系统使用眼睛的运动来收集视觉信息。它们充当视觉扫描过程,大致可分为两种类型:围绕固定点的小移动和固定点之间的大移动。通常将这些过程建模为随机游走,并且在这些研究中使用了基于沉重尾巴分布的最新模型(也称为征税飞行)。与这些方法相比,我们没有对随机过程进行建模,但是我们将显示固定点之间运动的步长遵循广义Pareto分布(GPD)。我们将使用极值统计理论中的一般性论点来激励GPD的使用,并通过经验证明GPD为测量的眼动数据提供了良好的契合度。在信息几何结构的框架中,具有共同阈值的GPD以Fisher信息矩阵为度量标准形成二维Riemann流形。我们计算GPD的Fisher信息矩阵,并引入通过其参数和Fisher信息矩阵的不同几何特性描述GPD的特征向量。在我们的统计分析中,我们在数据库中使用了眼动仪测量,其中有15位观察者在自由观看条件下观看了1003张图像。我们将Matlab函数与它们的标准参数设置一起使用,并显示使用Fisher信息矩阵的特征值的朴素贝叶斯分类器提供了很高的分类率,可识别数据库中的15个观察者。 (C)2016美国眼镜学会

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号