Pyramid Scene Parsing Network for Driver Distraction Classification

Authors

  • Abdelhak Khadraoui Moulay Ismail University, ENSAM, Meknes, Morocco Author
  • Elmoukhtar Zemmouri Moulay Ismail University, ENSAM, Meknes, Morocco Author

DOI:

https://doi.org/10.56294/dm2023154

Keywords:

Driver Distraction Detection, Pyramid Scene Parsing Network, Pspnet, Statefarm’s Dataset, Convolutional Neural Networks

Abstract

In recent years, there has been a persistent increase in the number of road accidents worldwide. The US National Highway Traffic Safety Administration reports that distracted driving is responsible for approximately 45 percent of road accidents. In this study, we tackle the challenge of automating the detection and classification of driver distraction, along with the monitoring of risky driving behavior. Our proposed solution is based on the Pyramid Scene Parsing Network (PSPNet), which is a semantic segmentation model equipped with a pyramid parsing module. This module leverages global context information through context aggregation from different regions. We introduce a lightweight model for driver distraction classification, where the final predictions benefit from the combination of both local and global cues. For model training, we utilized the publicly available StateFarm Distracted Driver Detection Dataset. Additionally, we propose optimization techniques for classification to enhance the model’s performance

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Published

2023-12-30

Issue

Section

Original

How to Cite

1.
Khadraoui A, Zemmouri E. Pyramid Scene Parsing Network for Driver Distraction Classification. Data and Metadata [Internet]. 2023 Dec. 30 [cited 2024 Dec. 21];2:154. Available from: https://dm.ageditor.ar/index.php/dm/article/view/131