Bus Driver Head Position Detection Using Capsule Networks under Dynamic Driving Conditions

Author:

Hollósi János1,Ballagi Áron1,Kovács Gábor2ORCID,Fischer Szabolcs1ORCID,Nagy Viktor1ORCID

Affiliation:

1. Central Campus Győr, Széchenyi István University, H-9026 Győr, Hungary

2. Institute of the Information Society, Ludovika University of Public Service, H-1083 Budapest, Hungary

Abstract

Monitoring bus driver behavior and posture in urban public transport’s dynamic and unpredictable environment requires robust real-time analytics systems. Traditional camera-based systems that use computer vision techniques for facial recognition are foundational. However, they often struggle with real-world challenges such as sudden driver movements, active driver–passenger interactions, variations in lighting, and physical obstructions. Our investigation covers four different neural network architectures, including two variations of convolutional neural networks (CNNs) that form the comparative baseline. The capsule network (CapsNet) developed by our team has been shown to be superior in terms of efficiency and speed in facial recognition tasks compared to traditional models. It offers a new approach for rapidly and accurately detecting a driver’s head position within the wide-angled view of the bus driver’s cabin. This research demonstrates the potential of CapsNets in driver head and face detection and lays the foundation for integrating CapsNet-based solutions into real-time monitoring systems to enhance public transportation safety protocols.

Publisher

MDPI AG

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