Abstract

With the rapid spreading of in-vehicle information systems such as smartphones, navigation systems, and radios, the number of traffic accidents caused by driver distractions shows an increasing trend. Timely identification and warning are deemed to be crucial for distracted driving and the establishment of driver assistance systems is of great value. However, almost all research on the recognition of the driver’s distracted actions using computer vision methods neglected the importance of temporal information for action recognition. This paper proposes a hybrid deep learning model for recognizing the actions of distracted drivers. Specifically, we used OpenPose to obtain skeleton information of the human body and then constructed the vector angle and modulus ratio of the human body structure as features to describe the driver’s actions, thereby realizing the fusion of deep network features and artificial features, which improve the information density of spatial features. The K-means clustering algorithm was used to preselect the original frames, and the method of inter-frame comparison was used to obtain the final keyframe sequence by comparing the Euclidean distance between manually constructed vectors representing frames and the vector representing the cluster center. Finally, we constructed a two-layer long short-term memory neural network to obtain more effective spatiotemporal features, and one softmax layer to identify the distracted driver’s action. The experimental results based on the collected dataset prove the effectiveness of this framework, and it can provide a theoretical basis for the establishment of vehicle distraction warning systems.

Highlights

  • According to data published by the World Health Organization (WHO), approximately 1.2 million people die in traffic accidents worldwide every year [1]

  • According to the National Highway Traffic Safety Administration (NHTSA), approximately 20% of traffic accidents and 80% of almost impending traffic accidents are caused by driver distraction, which emerges as a key factor in serious and fatal accidents [2]

  • Methods that focus on detecting driver distraction due to internal reasons are mainly divided into physiological parameter-based methods [5,6] and naturalistic driving data-based methods [7,8]; (ii) external reasons: the driver has external interference, such as calling, texting, and talking with passengers, and other secondary tasks that interfere with the driver driving in the proper mental condition

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Summary

A Hybrid Deep Learning Model for Recognizing Actions of Distracted Drivers

Citation: Jiao, S.-J.; Liu, L.-Y.; Liu, Q. A Hybrid Deep Learning Model for Recognizing Actions of Distracted Drivers. Sensors 2021, 21, 7424. https://doi.org/10.3390/ s21217424 Academic Editors: Nunzio Cennamo, YangQuan Chen, Subhas Mukhopadhyay, M. Jamal Deen, Junseop Lee, Simone Morais and Biswanath Samanta

Introduction
Literature Review
Data Collection
Methodology
Module I
Module II
Data Processing
Feature Construction
Module III
Experiment
Selection of Hyper-Parameters
Experimental Comparisons
Findings
Conclusions and Feature Works
Full Text
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