AI Article Synopsis

  • The study focuses on identifying road hypnosis by analyzing both external and internal characteristics of drivers, specifically eye movement and EEG data.
  • Data from vehicle and virtual driving experiments are preprocessed and trained using advanced machine learning techniques like self-attention models and deep belief networks.
  • The proposed identification method demonstrates effective recognition of road hypnosis and enhances understanding of its characteristics and mechanisms, providing insights for improving driving safety.

Article Abstract

A driver in road hypnosis has two different types of characteristics. One is the external characteristics, which are distinct and can be directly observed. The other is internal characteristics, which are indistinctive and cannot be directly observed. The eye movement characteristic, as a distinct external characteristic, is one of the typical characteristics of road hypnosis identification. The electroencephalogram (EEG) characteristic, as an internal feature, is a golden parameter of drivers' life identification. This paper proposes an identification method for road hypnosis based on the fusion of human life parameters. Eye movement data and EEG data are collected through vehicle driving experiments and virtual driving experiments. The collected data are preprocessed with principal component analysis (PCA) and independent component analysis (ICA), respectively. Eye movement data can be trained with a self-attention model (SAM), and the EEG data can be trained with the deep belief network (DBN). The road hypnosis identification model can be constructed by combining the two trained models with the stacking method. Repeated Random Subsampling Cross-Validation (RRSCV) is used to validate models. The results show that road hypnosis can be effectively recognized using the constructed model. This study is of great significance to reveal the essential characteristics and mechanisms of road hypnosis. The effectiveness and accuracy of road hypnosis identification can also be improved through this study.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11644267PMC
http://dx.doi.org/10.3390/s24237529DOI Listing

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Article Synopsis
  • The study focuses on identifying road hypnosis by analyzing both external and internal characteristics of drivers, specifically eye movement and EEG data.
  • Data from vehicle and virtual driving experiments are preprocessed and trained using advanced machine learning techniques like self-attention models and deep belief networks.
  • The proposed identification method demonstrates effective recognition of road hypnosis and enhances understanding of its characteristics and mechanisms, providing insights for improving driving safety.
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The driver in road hypnosis has not only some external characteristics, but also some internal characteristics. External features have obvious manifestations and can be directly observed. Internal features do not have obvious manifestations and cannot be directly observed.

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