基于一般面部皮肤温度分布的瞌睡估计稀疏模型的优化

Pub Date : 2023-09-28 DOI:10.1007/s10015-023-00898-4
Atsushi Yoshida, Kosuke Oiwa, Akio Nozawa
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引用次数: 0

摘要

近年来,在3级自动化车辆的驾驶员监控系统中,对驾驶员睡意检测技术的需求越来越大。在之前的一项研究中,稀疏建模被应用于面部皮肤温度分布,可以用热像仪远程测量,在三个阶段实现了约74%的估计精度。然而,由于所构建的嗜睡估计模型是一个个体模型,并且稀疏模型具有易于分解嗜睡以外的行为指标的特性,因此其泛化性能较低。因此,在使用稀疏建模构建通用模型时,受试者之间的个体特征可能会被优先分解,并且需要一种吸收这些影响的方法。因此,在这项研究中,我们设计了一种尝试,通过应用平均人脸来减少单个特征分解的影响。对受试者之间的图像进行部分平均被认为可以消除这种影响。在这项研究中,我们试图通过对受试者平均的面部热图像应用稀疏建模来构建睡意估计的通用模型,并检验在构建通用模型时使用平均面部热图像的可能性。因此,通过应用平均值,我们获得了平均约54.6%的估计精度,比使用原始图像高7%,并成功地将其标准偏差降低了4-6.9%。因此,使用平均图像建模在提高通用性方面是有效的。
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The optimization of sparse modeling for drowsiness estimation based on general facial skin temperature distribution

In recent years, there has been a growing demand for drivers’ drowsiness detection technology in driver monitoring systems for level 3 automated vehicles. In a previous study, sparse modeling was applied to the facial skin temperature distribution which can be remotely measured with a thermography camera, achieving an estimation accuracy of about 74% in three stages. However, the constructed drowsiness estimation model had low generalization performance because it was an individual model, and the sparse modeling had the property of easily decomposing behavioral indicators other than drowsiness. Therefore, in the construction of a general model using sparse modeling, individual features among subjects may be preferentially decomposed, and a method to absorb these effects is needed. Thus, in this study, we devised an attempt to reduce the influence of decomposition of individual features by applying averaged faces. Partial averaging of images across subjects is thought to remove such effects. In this study, we attempted to construct a general model for drowsiness estimation by applying sparse modeling to facial thermal images averaged across subjects, and to examine the possibility of using averaged facial thermal images in constructing general model. As a result, we obtained an estimation accuracy of approximately 54.6% in average by applying averaging, which is 7% higher than that using the original images, and succeeded in reducing its standard deviation by 4–6.9%. As the result, modeling with averaged images was shown to be effective in improving generality.

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