Detection of Real-world Driving-induced Affective State Using Physiological Signals and Multi-view Multi-task Machine Learning

07/19/2019
by   Daniel Lopez-Martinez, et al.
1

Affective states have a critical role in driving performance and safety. They can degrade driver situation awareness and negatively impact cognitive processes, severely diminishing road safety. Therefore, detecting and assessing drivers' affective states is crucial in order to help improve the driving experience, and increase safety, comfort and well-being. Recent advances in affective computing have enabled the detection of such states. This may lead to empathic automotive user interfaces that account for the driver's emotional state and influence the driver in order to improve safety. In this work, we propose a multiview multi-task machine learning method for the detection of driver's affective states using physiological signals. The proposed approach is able to account for inter-drive variability in physiological responses while enabling interpretability of the learned models, a factor that is especially important in systems deployed in the real world. We evaluate the models on three different datasets containing real-world driving experiences. Our results indicate that accounting for drive-specific differences significantly improves model performance.

READ FULL TEXT

page 1

page 4

research
10/08/2022

Drowsiness detection in drivers with a smartwatch

The main objective of this work is to detect early if a driver shows sym...
research
08/24/2020

Drive Safe: Cognitive-Behavioral Mining for Intelligent Transportation Cyber-Physical System

This paper presents a cognitive behavioral-based driver mood repairment ...
research
11/15/2017

Personalized Driver Stress Detection with Multi-task Neural Networks using Physiological Signals

Stress can be seen as a physiological response to everyday emotional, me...
research
05/01/2019

Attention Monitoring and Hazard Assessment with Bio-Sensing and Vision: Empirical Analysis Utilizing CNNs on the KITTI Dataset

Assessing the driver's attention and detecting various hazardous and non...
research
04/05/2022

An active approach towards monitoring and enhancing drivers' capabilities – the ADAM cogtec solution

Driver's cognitive ability at a given moment is the most elusive variabl...
research
10/28/2022

Multimodal Estimation of Change Points of Physiological Arousal in Drivers

Detecting unsafe driving states, such as stress, drowsiness, and fatigue...
research
06/22/2020

Drive-Net: Convolutional Network for Driver Distraction Detection

To help prevent motor vehicle accidents, there has been significant inte...

Please sign up or login with your details

Forgot password? Click here to reset