Android平台上基于手机的眨眼检测性能分析

Q1 Computer Science
Md. Talal Bin Noman, Md Atiqur Rahman Ahad
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引用次数: 22

摘要

本文在Android平台上开发了一种基于手机的实时注视跟踪与眨眼检测系统。我们的眨眼检测方案是基于两个睁眼状态之间的时间差。我们通过寻找眼睛最大的瞳孔来发展我们的系统。因此,我们将Haar分类器和归一化差分平方和模板匹配方法结合起来。我们将从眼睛区域提取的眼球区域定义为感兴趣区域(ROI)。ROI有助于区分眼睛的开放状态和关闭状态。该方案的输出波形近似于二进制趋势,明显地暗示了闪烁检测。我们根据闭合的程度和眨眼的持续时间将眨眼分为短、中、长。我们的分析是在15帧/秒的中等闪烁下进行的。该注视跟踪与眨眼检测系统相结合的解决方案具有检测精度高、耗时低等优点。我们在零度角下对双眼进行眨眼检测,准确率达到98%。该系统还在各种环境和设置下进行了广泛的实验,包括照明、对象、性别、角度、处理速度、RAM容量和距离的变化。我们发现,该系统在不同的条件下,无论是单眼检测还是双眼检测,都具有令人满意的实时性能。这些概念可以在不同的应用中得到利用,例如,检测驾驶员的睡意,或操作计算机光标来开发残疾人用眼控鼠标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile-Based Eye-Blink Detection Performance Analysis on Android Platform
In this paper, we develop a real-time mobile phone-based gaze tracking and eye-blink detection system on Android platform. Our eye-blink detection scheme is developed based on the time difference between two open eye states. We develop our system by finding the greatest circle – pupil of an eye. So we combine the both Haar classifier and Normalized Summation of Square of Difference template matching method. We define the eyeball area that is extracted from the eye-region as the region of interest (ROI). The ROI helps to differentiate between the open state and closed state of the eyes. The output waveform of the scheme is analogous to binary trend, which alludes the blink detection distinctly. We categorize short, medium and long blink, depending on the degree of closure and blink duration. Our analysis is operated on medium blink under 15frames/sec. This combined solution for gaze tracking and eye-blink detection system has high detection accuracy and low time-consumption. We obtain 98% accuracy at zero degree angles for blink detection from both eyes. The system is also extensively experimented with various environments and setups, including variations in illuminations, subjects, gender, angles, processing speed, RAM capacity, and distance. We found that the system performs satisfactorily under varied conditions in real-time for both single eye and two eyes detection. These concepts can be exploited in different applications, e.g., to detect drowsiness of a driver, or to operate the computer cursor to develop an eye-operated mouse for disabled people.
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来源期刊
Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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