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Hauptverfasser: An, Haonan, Fang, Zhengru, Zhang, Yuang, Hu, Senkang, Chen, Xianhao, Xu, Guowen, Fang, Yuguang
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2410.04320
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author An, Haonan
Fang, Zhengru
Zhang, Yuang
Hu, Senkang
Chen, Xianhao
Xu, Guowen
Fang, Yuguang
author_facet An, Haonan
Fang, Zhengru
Zhang, Yuang
Hu, Senkang
Chen, Xianhao
Xu, Guowen
Fang, Yuguang
contents Connected and autonomous vehicles (CAVs) have garnered significant attention due to their extended perception range and enhanced sensing coverage. To address challenges such as blind spots and obstructions, CAVs employ vehicle-to-vehicle (V2V) communications to aggregate sensory data from surrounding vehicles. However, cooperative perception is often constrained by the limitations of achievable network throughput and channel quality. In this paper, we propose a channel-aware throughput maximization approach to facilitate CAV data fusion, leveraging a self-supervised autoencoder for adaptive data compression. We formulate the problem as a mixed integer programming (MIP) model, which we decompose into two sub-problems to derive optimal data rate and compression ratio solutions under given link conditions. An autoencoder is then trained to minimize bitrate with the determined compression ratio, and a fine-tuning strategy is employed to further reduce spectrum resource consumption. Experimental evaluation on the OpenCOOD platform demonstrates the effectiveness of our proposed algorithm, showing more than 20.19\% improvement in network throughput and a 9.38\% increase in average precision (AP@IoU) compared to state-of-the-art methods, with an optimal latency of 19.99 ms.
format Preprint
id arxiv_https___arxiv_org_abs_2410_04320
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Channel-Aware Throughput Maximization for Cooperative Data Fusion in CAV
An, Haonan
Fang, Zhengru
Zhang, Yuang
Hu, Senkang
Chen, Xianhao
Xu, Guowen
Fang, Yuguang
Artificial Intelligence
Connected and autonomous vehicles (CAVs) have garnered significant attention due to their extended perception range and enhanced sensing coverage. To address challenges such as blind spots and obstructions, CAVs employ vehicle-to-vehicle (V2V) communications to aggregate sensory data from surrounding vehicles. However, cooperative perception is often constrained by the limitations of achievable network throughput and channel quality. In this paper, we propose a channel-aware throughput maximization approach to facilitate CAV data fusion, leveraging a self-supervised autoencoder for adaptive data compression. We formulate the problem as a mixed integer programming (MIP) model, which we decompose into two sub-problems to derive optimal data rate and compression ratio solutions under given link conditions. An autoencoder is then trained to minimize bitrate with the determined compression ratio, and a fine-tuning strategy is employed to further reduce spectrum resource consumption. Experimental evaluation on the OpenCOOD platform demonstrates the effectiveness of our proposed algorithm, showing more than 20.19\% improvement in network throughput and a 9.38\% increase in average precision (AP@IoU) compared to state-of-the-art methods, with an optimal latency of 19.99 ms.
title Channel-Aware Throughput Maximization for Cooperative Data Fusion in CAV
topic Artificial Intelligence
url https://arxiv.org/abs/2410.04320