Comparing YOLOv5 Variants for Vehicle Detection: A Performance Analysis
- URL: http://arxiv.org/abs/2408.12550v1
- Date: Thu, 22 Aug 2024 17:06:29 GMT
- Title: Comparing YOLOv5 Variants for Vehicle Detection: A Performance Analysis
- Authors: Athulya Sundaresan Geetha,
- Abstract summary: This study provides a comparative analysis of five YOLOv5 variants, YOLOv5n6s, YOLOv5s6s, YOLOv5m6s, YOLOv5l6s, and YOLOv5x6s, for vehicle detection.
YOLOv5n6s demonstrated a strong balance between precision and recall, particularly in detecting Cars.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Vehicle detection is an important task in the management of traffic and automatic vehicles. This study provides a comparative analysis of five YOLOv5 variants, YOLOv5n6s, YOLOv5s6s, YOLOv5m6s, YOLOv5l6s, and YOLOv5x6s, for vehicle detection in various environments. The research focuses on evaluating the effectiveness of these models in detecting different types of vehicles, such as Car, Bus, Truck, Bicycle, and Motorcycle, under varying conditions including lighting, occlusion, and weather. Performance metrics such as precision, recall, F1-score, and mean Average Precision are utilized to assess the accuracy and reliability of each model. YOLOv5n6s demonstrated a strong balance between precision and recall, particularly in detecting Cars. YOLOv5s6s and YOLOv5m6s showed improvements in recall, enhancing their ability to detect all relevant objects. YOLOv5l6s, with its larger capacity, provided robust performance, especially in detecting Cars, but not good with identifying Motorcycles and Bicycles. YOLOv5x6s was effective in recognizing Buses and Cars but faced challenges with Motorcycle class.
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