YOLOv10-Based Real-Time Pedestrian Detection for Autonomous Vehicles
Yan Li, Waiyie Leong, Hongli Zhang
Abstract
Accurate pedestrian detection is increasingly important for safety as autonomous driving technology advances. This paper presents a real-time pedestrian detection method based on YOLOvlO. The technique creates an efficient real-time object detection model by enhancing the backbone network with EfficientNet and C2F-DM modules, integrating the BiFormer module in the neck network, and incorporating a multi-scale feature fusion detection head. Experimental results show that YOLOvlO can achieve efficient multi-scale pedestrian detection, even in complex backgrounds.
Topics & Concepts
PedestrianPedestrian detectionComputer scienceReal-time computingTransport engineeringEngineeringAdvanced Neural Network ApplicationsAutonomous Vehicle Technology and Safety