基于消声语音的驾驶员行为状态识别

N. Kamaruddin, A. Rahman, Khairul Ikhwan Mohamad Halim, Muhammad Hafiq Iqmal Mohd Noh
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引用次数: 1

摘要

许多研究将驾驶员行为与事故原因联系起来,有些研究集中在不同的投入上,提供了切实可行的预防措施。尽管如此,由于驾驶员说话时潜在的情绪信息,言语已被发现是理解和分析驾驶员行为状态的合适输入源,并且这种变化是可以测量的。然而,由于计算复杂度和时间限制,大量的驾驶语音数据可能会阻碍数据处理和分析的最佳性能。本文提出了一种基于短时能量(STE)和过零率(ZCR)的噪声去除方法,以减少车辆环境下噪声噪声的计算时间。采用Mel频率倒谱系数(MFCC)特征提取方法与多层感知器(MLP)分类器相结合,获得驾驶员行为状态识别性能。实验结果表明,该方法能够获得58.7% ~ 76.6%的可比性性能来区分驾驶员的四种行为状态,即;打电话,放声大笑,昏昏欲睡,正常驾驶。设想这种引擎可以扩展为更全面的驾驶员行为识别系统,可以作为困倦驾驶员的嵌入式警告系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driver behavior state recognition based on silence removal speech
Numerous researches have linked driver behavior to the cause of accident and some studies are concentrated into different input providing practical preventive measures. Nonetheless speech has been found to be a suitable input source in understanding and analyzing driver's behavior state due to the underlying emotional information when the driver speaks and such changes can be measured. However, the massive amount of driving speech data may hinder optimal performance of processing and analyzing the data due to the computational complexity and time constraint. This paper presents a silence removal approach using Short Term Energy (STE) and Zero Crossing Rate (ZCR) prior to extracting the relevant features in order to reduce the computational time in a vehicular environment. Mel Frequency Cepstral Coefficient (MFCC) feature extraction method coupled with Multi Layer Perceptron (MLP) classifier are employed to get the driver behavior state recognition performance. Experimental results demonstrated that the proposed approach is able to obtain comparable performance with accuracy ranging between 58.7% and 76.6% to differentiate four driver behavior states, namely; talking through cell telephone phone, out-burst laughing, sleepy and normal driving. It is envisages that such engine can be extended for a more comprehensive driver behavior identification system that may acts as an embedded warning system for sleepy driver.
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