Real-time Multi-Class Helmet Violation Detection Using Few-Shot Data
Sampling Technique and YOLOv8
- URL: http://arxiv.org/abs/2304.08256v1
- Date: Thu, 13 Apr 2023 21:13:55 GMT
- Title: Real-time Multi-Class Helmet Violation Detection Using Few-Shot Data
Sampling Technique and YOLOv8
- Authors: Armstrong Aboah, Bin Wang, Ulas Bagci, Yaw Adu-Gyamfi
- Abstract summary: This study proposes a robust real-time helmet violation detection system.
Our proposed method won 7th place in the 2023 AI City Challenge, Track 5, with an mAP score of 0.5861.
- Score: 11.116729994007686
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Traffic safety is a major global concern. Helmet usage is a key factor in
preventing head injuries and fatalities caused by motorcycle accidents.
However, helmet usage violations continue to be a significant problem. To
identify such violations, automatic helmet detection systems have been proposed
and implemented using computer vision techniques. Real-time implementation of
such systems is crucial for traffic surveillance and enforcement, however, most
of these systems are not real-time. This study proposes a robust real-time
helmet violation detection system. The proposed system utilizes a unique data
processing strategy, referred to as few-shot data sampling, to develop a robust
model with fewer annotations, and a single-stage object detection model, YOLOv8
(You Only Look Once Version 8), for detecting helmet violations in real-time
from video frames. Our proposed method won 7th place in the 2023 AI City
Challenge, Track 5, with an mAP score of 0.5861 on experimental validation
data. The experimental results demonstrate the effectiveness, efficiency, and
robustness of the proposed system.
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