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Analyzing head roll and eye torsion by means of offline image processing

机译:通过脱机图像处理分析头枕和眼部扭曲

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摘要

Ocular torsion is a key problem in the understanding of many visual perceptual effects. However, since it is difficult to record, its integration with other sensorimotor signals is still poorly understood. Unfortunately, eyetracker systems are generally not dedicated to the monitoring of eye torsion. In addition, the classical methods used with video-based systems present some limits in the accuracy of torsion calculation. These limits are especially related to the detection of pupil center and the effects of pupil size changes. This article aims atrn(1) proposing a solution to analyze ocular torsion together with head roll using EyeLink II or similar equipment,rn(2) reviewing and adapting classical polar cross-correlation methods in order to improve the accuracy of torsion measurement, (3) providing a lower-cost method compared with the existing ones. Video sequences issued from the EyeLink II host computer monitor were recorded by means of a second computer equipped with a video acquisition card and converted into image sequences. Images were analyzed with algorithms of pupil center detection (median-based algorithm), torsion analysis (adapted polar cross-correlation method which takes into account pupil size variations) and marker tracking (head roll analysis). This method was tested on virtual eye images. Results are discussed with respect to other algorithms found in the literature.
机译:眼扭转是理解许多视觉知觉效果的关键问题。然而,由于难以记录,因此其与其他感觉运动信号的整合仍知之甚少。不幸的是,眼动仪系统通常不专用于眼扭转的监测。此外,基于视频的系统使用的经典方法在扭转计算的准确性方面也存在一些限制。这些限制尤其与瞳孔中心的检测以及瞳孔大小变化的影响有关。本文的目的是(1)提出一种使用EyeLink II或类似设备与头枕一起分析眼扭转的解决方案,(2)回顾并采用经典的极性互相关方法以提高扭转测量的准确性,(3 )与现有方法相比,提供了一种成本更低的方法。从EyeLink II主计算机监视器发出的视频序列是通过配有视频采集卡的第二台计算机记录下来的,并转换为图像序列。使用瞳孔中心检测算法(基于中值的算法),扭转分析(考虑到瞳孔大小变化的自适应极坐标互相关方法)和标记跟踪(磁头滚动分析)来分析图像。该方法已在虚拟眼睛图像上进行了测试。针对文献中发现的其他算法讨论了结果。

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