首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Real-Time Eyeblink Detector and Eye State Classifier for Virtual Reality (VR) Headsets (Head-Mounted Displays HMDs)
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Real-Time Eyeblink Detector and Eye State Classifier for Virtual Reality (VR) Headsets (Head-Mounted Displays HMDs)

机译:用于虚拟现实(VR)耳机(头戴式显示器HMD)的实时眨眼检测器和眼睛状态分类器

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摘要

The aim of the study is to develop a real-time eyeblink detection algorithm that can detect eyeblinks during the closing phase for a virtual reality headset (VR headset) and accordingly classify the eye’s current state (open or closed). The proposed method utilises analysis of a motion vector for detecting eyelid closure, and a Haar cascade classifier (HCC) for localising the eye in the captured frame. When the downward motion vector (DMV) is detected, a cross-correlation between the current region of interest (eye in the current frame) and a template image for an open eye is used for verifying eyelid closure. A finite state machine is used for decision making regarding eyeblink occurrence and tracking the eye state in a real-time video stream. The main contributions of this study are, first, the ability of the proposed algorithm to detect eyeblinks during the closing or the pause phases before the occurrence of the reopening phase of the eyeblink. Second, realising the proposed approach by implementing a valid real-time eyeblink detection sensor for a VR headset based on a real case scenario. The sensor is used in the ongoing study that we are conducting. The performance of the proposed method was 83.9% for accuracy, 91.8% for precision and 90.40% for the recall. The processing time for each frame took approximately 11 milliseconds. Additionally, we present a new dataset for non-frontal eye monitoring configuration for eyeblink tracking inside a VR headset. The data annotations are also included, such that the dataset can be used for method validation and performance evaluation in future studies.
机译:该研究的目的是开发一种实时眨眼检测算法,该算法可以在虚拟现实耳机(VR耳机)的关闭阶段检测眨眼,从而对眼睛的当前状态进行分类(张开或关闭)。所提出的方法利用对运动矢量的分析来检测眼睑闭合,并利用Haar级联分类器(HCC)将眼睛定位在捕获的帧中。当检测到向下运动矢量(DMV)时,当前感兴趣区域(当前帧中的眼睛)与睁开眼睛的模板图像之间的互相关用于验证眼睑闭合。有限状态机用于做出有关眨眼发生的决策,并跟踪实时视频流中的眼睛状态。这项研究的主要贡献是,首先,该算法能够在眨眼的重新张开阶段出现之前的闭合或暂停阶段检测眨眼的能力。其次,通过基于实际案例为VR耳机实现有效的实时眨眼检测传感器来实现建议的方法。该传感器用于我们正在进行的研究中。所提方法的精度为83.9%,精度为91.8%,召回率为90.40%。每个帧的处理时间大约花费11毫秒。此外,我们提出了一个用于非正面眼部监视配置的新数据集,用于在VR耳机中进行眨眼跟踪。还包括数据注释,以便将来的研究中可以将数据集用于方法验证和性能评估。

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