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Automatic threshold-setting method for iris detection for brown eyes in an eye-gaze interface system with a visible light camera

机译:在带有可见光照相机的视线接口系统中用于棕眼虹膜检测的自动阈值设置方法

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This study describes the improvement of an eye-gaze interface system with a visible light camera. The current system detects the center of the iris from a captured eye image using image processing. During the initial stages of system use, a display window is provided to set the threshold values of the image's saturation and intensity, which is used to manually adjust the appearance of the iris region. In this study, we propose an automatic threshold setting method. The optimum threshold value for the saturation is obtained by discriminant analysis and that for the intensity is determined by finding the value that yields the same number of accumulated pixels in the detected region as threshold processing of the saturation. In our experiments with subjects with brown eyes, the automatic method obtained good threshold values in most cases. Furthermore, an adjustment function to overcome under- or over-estimated saturation threshold values is also proposed. This function provides a more robust automatic threshold setting. In experiments, we compared our automatic setting method with conventional manual techniques, which showed that the automatic method is useful for reducing the time required for threshold setting and its pointing accuracy is comparable to that of the manual approach. (C) 2014 Elsevier Ltd. All rights reserved.
机译:这项研究描述了带有可见光照相机的注视接口系统的改进。当前系统使用图像处理从捕获的眼睛图像中检测虹膜的中心。在系统使用的初始阶段,将提供一个显示窗口来设置图像饱和度和强度的阈值,该阈值用于手动调整虹膜区域的外观。在这项研究中,我们提出了一种自动阈值设置方法。通过判别分析获得饱和度的最佳阈值,并通过找到与饱和度的阈值处理在检测区域中产生相同数量的累积像素的值来确定强度的最佳阈值。在我们的棕眼睛受试者实验中,自动方法在大多数情况下获得了良好的阈值。此外,还提出了一种用于克服饱和度阈值被低估或高估的调节功能。此功能提供了更强大的自动阈值设置。在实验中,我们将自动设置方法与常规手动技术进行了比较,这表明自动方法可减少阈值设置所需的时间,并且其指向精度与手动方法相当。 (C)2014 Elsevier Ltd.保留所有权利。

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