基于多模态信号的驾驶员分心检测与识别

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2022-12-12 DOI:https://dl.acm.org/doi/10.1145/3519267
Kapotaksha Das, Michalis Papakostas, Kais Riani, Andrew Gasiorowski, Mohamed Abouelenien, Mihai Burzo, Rada Mihalcea
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引用次数: 0

摘要

分心驾驶是世界范围内交通事故的主要原因。分心检测和识别的任务传统上被认为是计算机视觉问题。然而,分心的行为并不总是以视觉上可观察的方式表达。在这项工作中,我们引入了一个新的多模态驾驶行为数据集,包括使用视觉、声学、近红外、热、生理和语言等12个信息通道收集的数据。这些数据是从45名受试者中收集的,他们暴露在四种不同的干扰中(三种认知干扰,一种身体干扰)。为了达到本文的目的,我们进行了视觉、生理和热信息的实验,以探索多模态建模在分心识别中的潜力。此外,我们通过识别对分心特征贡献最大的特定视觉、生理和热特征组来分析不同模式的价值。我们的研究结果强调了多模态表征的优势,并揭示了三种模式在识别不同类型的驾驶干扰方面所起的作用。
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Detection and Recognition of Driver Distraction Using Multimodal Signals

Distracted driving is a leading cause of accidents worldwide. The tasks of distraction detection and recognition have been traditionally addressed as computer vision problems. However, distracted behaviors are not always expressed in a visually observable way. In this work, we introduce a novel multimodal dataset of distracted driver behaviors, consisting of data collected using twelve information channels coming from visual, acoustic, near-infrared, thermal, physiological and linguistic modalities. The data were collected from 45 subjects while being exposed to four different distractions (three cognitive and one physical). For the purposes of this paper, we performed experiments with visual, physiological, and thermal information to explore potential of multimodal modeling for distraction recognition. In addition, we analyze the value of different modalities by identifying specific visual, physiological, and thermal groups of features that contribute the most to distraction characterization. Our results highlight the advantage of multimodal representations and reveal valuable insights for the role played by the three modalities on identifying different types of driving distractions.

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CiteScore
7.20
自引率
4.30%
发文量
567
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