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Real-Time Vision Based Driver Drowsiness Detection Using Partial Least Squares Analysis

机译:基于偏最小二乘分析的基于实时视觉的驾驶员疲劳度检测

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摘要

Robust eye state classification in real-time is very crucial for automatic driver drowsiness detection to avoid road accidents. In this paper, we propose partial least squares (PLS) analysis based eye state classification method and its real-time implementation on resource constraint digital video processor platform, to monitor the eye state during all time driving conditions. The drowsiness is detected using percentage of eye closure (PERCLOS) metric. In this approach, face in the infrared (IR) image is detected using Haar features based cascaded classifier and within the face, eye is detected. For binary eye state classification, PLS analysis is applied to obtain the low dimensional discriminative subspace, within which simple PLS regression score based classifier is used to classify test vector into open and closed. We compared our algorithm to recent methods on challenging test sequences and the result shows superior performance. The results obtained during on-vehicle testing show that the proposed system achieves significant improvement in classification accuracy at nearly 3 frames per second.
机译:实时稳健的眼睛状态分类对于自动检测驾驶员的睡意以免发生交通事故至关重要。本文提出了一种基于偏最小二乘分析的眼球状态分类方法及其在资源约束数字视频处理器平台上的实时实现,以在所有驾驶状态下监视眼球状态。使用闭眼百分比(PERCLOS)指标检测睡意。在这种方法中,使用基于Haar特征的级联分类器检测红外(IR)图像中的面部,并在面部内检测到眼睛。对于二元眼状态分类,应用PLS分析获得低维判别子空间,在该子空间中,使用基于PLS回归评分的简单分类器将测试向量分类为开放和封闭。我们将我们的算法与具有挑战性的测试序列的最新方法进行了比较,结果显示出优异的性能。在车载测试中获得的结果表明,提出的系统以每秒近3帧的速度实现了分类精度的显着提高。

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