Open Access Open Access  Restricted Access Subscription Access

Pedestrian Detection in Video Surveillance Using Yolov5 with Light Perception Fusion


Affiliations
1 Department of Computer Science, Providence College for Women, India

   Subscribe/Renew Journal


This research presents an innovative approach to pedestrian detection in video surveillance, leveraging the power of YOLOv5 (You Only Look Once version 5) combined with light perception fusion-based feature extraction. The proposed methodology aims to enhance the accuracy and efficiency of pedestrian detection systems in varying lighting conditions. YOLOv5, known for its real-time object detection capabilities, is integrated with a novel feature extraction technique that fuses information from multiple light perception sensors. This fusion strategy allows the model to adapt and perform robustly in diverse lighting scenarios. The experimental results demonstrate the superiority of the proposed method, achieving a remarkable performance. The fusion of YOLOv5 with light perception-based feature extraction showcases promising advancements in pedestrian detection, addressing challenges posed by dynamic lighting conditions in real-world surveillance environments.

Keywords

Pedestrian Detection, Video Surveillance, Yolov5, Light Perception Fusion, Feature Extraction
Subscription Login to verify subscription
User
Notifications
Font Size

Abstract Views: 72




  • Pedestrian Detection in Video Surveillance Using Yolov5 with Light Perception Fusion

Abstract Views: 72  | 

Authors

H. Sivalingan
Department of Computer Science, Providence College for Women, India

Abstract


This research presents an innovative approach to pedestrian detection in video surveillance, leveraging the power of YOLOv5 (You Only Look Once version 5) combined with light perception fusion-based feature extraction. The proposed methodology aims to enhance the accuracy and efficiency of pedestrian detection systems in varying lighting conditions. YOLOv5, known for its real-time object detection capabilities, is integrated with a novel feature extraction technique that fuses information from multiple light perception sensors. This fusion strategy allows the model to adapt and perform robustly in diverse lighting scenarios. The experimental results demonstrate the superiority of the proposed method, achieving a remarkable performance. The fusion of YOLOv5 with light perception-based feature extraction showcases promising advancements in pedestrian detection, addressing challenges posed by dynamic lighting conditions in real-world surveillance environments.

Keywords


Pedestrian Detection, Video Surveillance, Yolov5, Light Perception Fusion, Feature Extraction