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Fuzzy-System-Based Detection of Pupil Center and Corneal Specular Reflection for a Driver-Gaze Tracking System Based on the Symmetrical Characteristics of Face and Facial Feature Points

机译:基于面部和面部特征点对称特征的驾驶员注视跟踪系统中基于模糊系统的瞳孔中心和角膜镜面反射检测

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Recently, many studies have actively dealt with the issue of driver-gaze tracking for monitoring the forward gaze and physical condition. Driver-gaze tracking is an effective method of measuring a driver?¢????s inattention that is one of the major causes of traffic accidents. Among many gaze-tracking methods, the corneal specular reflection (SR)-based method becomes ineffective, unlike in an indoor environment, when a driver?¢????s head rotates, which makes SR disappear from input images or disperses SR in the lachrymal gland or eyelid, thereby increasing the gaze-tracking error. Besides, since a driver?¢????s eyes in a vehicle environment need to be captured in a wide range covering his head rotation, the eye region is captured in a relatively low resolution compared to face-only images taken in indoor environments at the same resolution, making pupil and corneal SR difficult to detect accurately. To solve these problems, we propose a fuzzy-system-based method for detecting a driver?¢????s pupil and corneal SR for gaze tracking in a vehicle environment. Unlike existing studies detecting pupil and corneal SR in both eyes, the method proposed in this research uses the results of a fuzzy system based on two features considering the symmetrical characteristics of face and facial feature points to determine the status of a driver?¢????s head rotation. Based on the output of the fuzzy system, the proposed method excludes the eye region, which is very likely to have a high error rate of detection due to excessive head rotation, from the detection process of the pupil and corneal SR. Accordingly, the proposed method detects pupil and corneal SR only in the eye region that apparently has a low detection error rate, thereby achieving accurate detection. We use 20,654 images capturing 15 subjects (including subjects wearing glasses), who gaze at pre-set fifteen regions in a vehicle, to measure the detection accuracy of the pupil and corneal SR for each region and the gaze tracking accuracy. Our experimental results show that the proposed method performs better than existing methods.
机译:近来,许多研究已经积极地处理了驾驶员注视跟踪以监测前视和身体状况的问题。驾驶员凝视跟踪是一种衡量驾驶员注意力不集中的有效方法,这是交通事故的主要原因之一。在许多凝视跟踪方法中,基于角膜镜面反射(SR)的方法变得无效,这与在室内环境中不同,当驾驶员的头部旋转时,驾驶员的头部旋转,这会使SR从输入图像中消失或使SR分散在其中。泪腺或眼睑,从而增加了注视跟踪误差。此外,由于需要在覆盖他的头部旋转的宽范围内捕获驾驶员在车辆环境中的眼睛,因此与在室内环境中拍摄的仅面部图像相比,以相对低的分辨率捕获眼睛区域。在相同的分辨率下,瞳孔和角膜SR难以准确检测。为了解决这些问题,我们提出了一种基于模糊系统的方法,用于检测驾驶员的瞳孔和角膜SR,以在车辆环境中进行注视跟踪。与现有的检测两只眼睛的瞳孔和角膜SR的研究不同,本研究提出的方法使用基于两个特征的模糊系统的结果,同时考虑面部和面部特征点的对称特征来确定驾驶员的状态。头旋转。基于模糊系统的输出,该方法从瞳孔和角膜SR的检测过程中排除了由于头部​​过度旋转而极有可能导致高检测错误率的眼睛区域。因此,提出的方法仅在明显具有低检测错误率的眼睛区域中检测瞳孔和角膜SR,从而实现准确的检测。我们使用20654张图像捕获15个对象(包括戴眼镜的对象),他们注视着车辆中的预设15个区域,以测量每个区域的瞳孔和角膜SR的检测精度以及注视跟踪精度。我们的实验结果表明,所提出的方法比现有方法具有更好的性能。

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