Detecting motorcycle helmet use with deep learning
Felix Wilhelm Siebert, Hanhe Lin

TL;DR
This paper presents a deep learning-based algorithm for automated motorcycle helmet use detection from video data, enabling accurate, real-time monitoring to support injury prevention efforts, especially in developing countries.
Contribution
The study introduces a novel deep learning approach trained on extensive video data for accurate helmet use detection, adaptable to existing surveillance infrastructure.
Findings
High accuracy of helmet detection within ±4.4% to +2.1% of human observers
Effective detection across multiple cities with minimal site-specific training
Potential for real-time, data-driven traffic safety interventions
Abstract
The continuous motorization of traffic has led to a sustained increase in the global number of road related fatalities and injuries. To counter this, governments are focusing on enforcing safe and law-abiding behavior in traffic. However, especially in developing countries where the motorcycle is the main form of transportation, there is a lack of comprehensive data on the safety-critical behavioral metric of motorcycle helmet use. This lack of data prohibits targeted enforcement and education campaigns which are crucial for injury prevention. Hence, we have developed an algorithm for the automated registration of motorcycle helmet usage from video data, using a deep learning approach. Based on 91,000 annotated frames of video data, collected at multiple observation sites in 7 cities across the country of Myanmar, we trained our algorithm to detect active motorcycles, the number and…
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