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Efficient Eye-Blinking Detection on Smartphones: A Hybrid Approach Based on Deep Learning

机译:智能手机上的有效眨眼检测:基于深度学习的混合方法

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We propose an efficient method that can be used for eye-blinking detection or eye tracking on smartphone platforms in this paper. Eye-blinking detection or eye-tracking algorithms have various applications in mobile environments, for example, a countermeasure against spoofing in face recognition systems. In resource limited smartphone environments, one of the key issues of the eye-blinking detection problem is its computational efficiency. To tackle the problem, we take a hybrid approach combining two machine learning techniques SVM (support vector machine) and CNN (convolutional neural network) such that the eye-blinking detection can be performed efficiently and reliably on resource-limited smartphones. Experimental results on commodity smartphones show that our approach achieves a precision of 94.4% and a processing rate of 22 frames per second.
机译:本文提出了一种可用于智能手机平台上的眨眼检测或眼睛跟踪的有效方法。眨眼检测或眼动跟踪算法在移动环境中具有多种应用,例如,针对面部识别系统中欺骗的对策。在资源有限的智能手机环境中,眨眼检测问题的关键问题之一是其计算效率。为了解决该问题,我们采用了一种混合方法,将两种机器学习技术SVM(支持向量机)和CNN(卷积神经网络)相结合,从而可以在资源受限的智能手机上高效且可靠地执行眨眼检测。在商用智能手机上的实验结果表明,我们的方法实现了94.4%的精度和每秒22帧的处理速度。

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