Advanced object detection methods always face high algorithmic complexity or low accuracy when used in pedestrian target detection for the autonomous driving system. This paper proposes a lightweight pedestrian detection approach called the YOLOv5s-G2 network to address these issues. We apply Ghost and GhostC3 modules in the YOLOv5s-G2 network to minimize computational cost during feature extraction while keeping the network’s capability of extracting features intact. The YOLOv5s-G2 network improves feature extraction accuracy by incorporating the Global Attention Mechanism (GAM) module. This application can extract relevant information for pedestrian target identification tasks and suppress irrelevant information, improving the unidentifie...
Technology is developing so rapidly at this time. Every time various latest and cutting-edge technol...
© 2020 IEEE.Evolutionary enhancements are involved by deep learning in computer vision for getting b...
Pedestrian detection in monitoring has complex backgrounds, multiple target scales and poses, and oc...
Advanced object detection methods always face high algorithmic complexity or low accuracy when used ...
In response to the dangerous behavior of pedestrians roaming freely on unsupervised train tracks, th...
Pedestrian detection in urban traffic environment is an important field of driverless vehicle resear...
With the development of deep convolutional neural networks, the effect of pedestrian detection has b...
Object detection has practical significance in many scenarios at present, and pedestrian detection i...
Occluded pedestrian detection faces huge challenges. False positives and false negatives in crowd oc...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Pedestrian detection has been widely used in applications such as video surveillance and intelligent...
The real-time pedestrian detection algorithm requires the model to be lightweight and robust. At the...
The large view angle and complex background of UAV images bring many difficulties to the detection o...
Object detection exists in many countries around the world after a recent growing interest for auton...
Although many deep-learning-based methods have achieved considerable detection performance for pedes...
Technology is developing so rapidly at this time. Every time various latest and cutting-edge technol...
© 2020 IEEE.Evolutionary enhancements are involved by deep learning in computer vision for getting b...
Pedestrian detection in monitoring has complex backgrounds, multiple target scales and poses, and oc...
Advanced object detection methods always face high algorithmic complexity or low accuracy when used ...
In response to the dangerous behavior of pedestrians roaming freely on unsupervised train tracks, th...
Pedestrian detection in urban traffic environment is an important field of driverless vehicle resear...
With the development of deep convolutional neural networks, the effect of pedestrian detection has b...
Object detection has practical significance in many scenarios at present, and pedestrian detection i...
Occluded pedestrian detection faces huge challenges. False positives and false negatives in crowd oc...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Pedestrian detection has been widely used in applications such as video surveillance and intelligent...
The real-time pedestrian detection algorithm requires the model to be lightweight and robust. At the...
The large view angle and complex background of UAV images bring many difficulties to the detection o...
Object detection exists in many countries around the world after a recent growing interest for auton...
Although many deep-learning-based methods have achieved considerable detection performance for pedes...
Technology is developing so rapidly at this time. Every time various latest and cutting-edge technol...
© 2020 IEEE.Evolutionary enhancements are involved by deep learning in computer vision for getting b...
Pedestrian detection in monitoring has complex backgrounds, multiple target scales and poses, and oc...