小睡时的人脸及其特征检测

M. Awais, H. Ghayvat, Wei Chen
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引用次数: 0

摘要

晚上高质量的睡眠对健康生活起着重要作用。在适当的时间,特别是在晚上,7-8小时的高质量睡眠有助于人类保持适当的身心健康。睡眠时,面部肌肉的收缩/收缩,尤其是眼睛区域,是睡眠时最常见的吸收特征。本文提出了一种检测人的面部和面部特征的预处理结果。人脸检测算法被称为Ada-boost和局部二值模式(LBP)已被用于检测面部区域及其特征。由于这些算法适用于正面人脸,所以当人在士兵位置小睡,人脸方向在$120^{\circ}-60^{\circ}$时,Ada-boost和LBP能够检测人脸及其特征。结果表明,LBP的人脸/特征检测精度高于Ada-boost。这项预处理研究/结果有助于我们设计新的后处理算法,利用图像处理对睡眠阶段进行分类,以进行夜间睡眠监测,与现有技术相比,这将是不引人注目的。
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Face and Its Features Detection during Nap
A quality sleep at night plays a vibrant role in healthy life. 7-8 hours quality sleep at the right times especially at night help human to maintain a proper physical and mental health. While sleeping, it has been incorporated that facial muscles contraction/extraction especially in eyes regions are the most common absorbed features while sleeping. This paper presents a preprocessing outcome of detecting a person face and facial features while taking nap. Face Detection algorithms known as Ada-boost and Local Binary Pattern (LBP) has been used to detect the facial regions and its features. As these algorithm work for frontal faces, so when person is taking nap in soldier position and a face orientation is in $120^{\circ}-60^{\circ}$, Ada-boost and LBP is able to detect face and its features. Results shows that LBP face/features detection accuracy is higher than Ada-boost. This pre-processing study/results help us in designing the novel post processing algorithms to classify sleep stages for overnight sleep monitoring using image processing that will be unobtrusive as compared to existing techniques.
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