YOLO-Vehicle-Pro: A Cloud-Edge Collaborative Framework for Object Detection in Autonomous Driving under Adverse Weather Conditions
Xiguang Li, Jiafu Chen, Yunhe Sun, Na Lin, Ammar Hawbani, Liang Zhao

TL;DR
This paper introduces YOLO-Vehicle-Pro, a cloud-edge collaborative framework with improved dehazing and multimodal fusion for robust real-time object detection in autonomous driving under adverse weather conditions.
Contribution
It presents novel deep learning models and a cloud-edge system to enhance object detection accuracy and speed in low-visibility environments for autonomous vehicles.
Findings
YOLO-Vehicle achieved 92.1% accuracy at 226 FPS on KITTI.
YOLO-Vehicle-Pro achieved 82.3% mAP@50 on Foggy Cityscapes.
The cloud-edge system improves detection in complex scenarios.
Abstract
With the rapid advancement of autonomous driving technology, efficient and accurate object detection capabilities have become crucial factors in ensuring the safety and reliability of autonomous driving systems. However, in low-visibility environments such as hazy conditions, the performance of traditional object detection algorithms often degrades significantly, failing to meet the demands of autonomous driving. To address this challenge, this paper proposes two innovative deep learning models: YOLO-Vehicle and YOLO-Vehicle-Pro. YOLO-Vehicle is an object detection model tailored specifically for autonomous driving scenarios, employing multimodal fusion techniques to combine image and textual information for object detection. YOLO-Vehicle-Pro builds upon this foundation by introducing an improved image dehazing algorithm, enhancing detection performance in low-visibility environments.…
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Taxonomy
TopicsAdvanced Neural Network Applications · Fire Detection and Safety Systems · Video Surveillance and Tracking Methods
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
