Vision-Aided Channel Prediction Based on Image Segmentation at Street Intersection Scenarios
Xuejian Zhang, Ruisi He, Mi Yang, Ziyi Qi, Zhengyu Zhang, Bo Ai, Zhangdui Zhong

TL;DR
This paper introduces a vision-based channel prediction model for vehicular communication at street intersections, utilizing image segmentation and deep learning to improve accuracy and generalization in dynamic urban environments.
Contribution
It presents a novel CV-based prediction approach that leverages image segmentation and deep learning to accurately predict channel characteristics in vehicular scenarios.
Findings
High prediction accuracy achieved with segmented images.
Model demonstrates strong generalization across different streets.
Effective integration of visual data enhances channel prediction.
Abstract
Intelligent vehicular communication with vehicle road collaboration capability is a key technology enabled by 6G, and the integration of various visual sensors on vehicles and infrastructures plays a crucial role. Moreover, accurate channel prediction is foundational to realizing intelligent vehicular communication. Traditional methods are still limited by the inability to balance accuracy and operability based on substantial spectrum resource consumption and highly refined description of environment. Therefore, leveraging out-of-band information introduced by visual sensors provides a new solution and is increasingly applied across various communication tasks. In this paper, we propose a computer vision (CV)-based prediction model for vehicular communications, realizing accurate channel characterization prediction including path loss, Rice K-factor and delay spread based on image…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Traffic Prediction and Management Techniques · Automated Road and Building Extraction
