Idiosyncratic repeatability of calibration errors during eye tracker calibration

Katarzyna Harężlak, P. Kasprowski, Mateusz Stasch
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引用次数: 7

Abstract

Dynamic development of high quality cameras and algorithms processing eye movement signals entails growing interests in using them in various areas of human-computer interaction. Determining subjects which user is looking at or controlling the operation of computer processes can serve as examples of these areas. However, making eye movement signal valuable requires some preparatory steps to be taken. They belong to a process called calibration aiming at creating a model for mapping output delivered by an eye tracker to user's gaze points. The quality of such model is assessed based on a calibration error defined as a difference between accurate data and this obtained from a model. The goal of the research presented in the paper was to analyse to what extent the calibration error depends on the specific participant's features - it is repeatable - or to what extent it may be avoided during the recalibration. Additionally an influence of two calibration method a polynomial and an artificial neural network (ANN) on the final results were studied as well.
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眼动仪校准过程中校准误差的特殊可重复性
高质量的相机和处理眼球运动信号的算法的动态发展,使得人们对在人机交互的各个领域使用它们越来越感兴趣。确定用户正在看的主题或控制计算机进程的操作可以作为这些领域的例子。然而,使眼动信号有价值需要采取一些准备步骤。它们属于一个称为校准的过程,旨在创建一个模型,将眼动仪提供的输出映射到用户的注视点。这种模型的质量是根据校准误差来评估的,校准误差定义为准确数据与从模型获得的数据之间的差异。本文提出的研究目标是分析校准误差在多大程度上取决于特定参与者的特征——它是可重复的——或者在多大程度上可以在重新校准期间避免校准误差。此外,还研究了多项式和人工神经网络两种标定方法对标定结果的影响。
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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