计算机科学
建筑
资源配置
辅助生活
资源(消歧)
资源管理(计算)
人机交互
计算机网络
医学
艺术
护理部
视觉艺术
作者
Yang Lu,Weihao Mao,Hongyang Du,Octavia A. Dobre,Dusit Niyato,Zhiguo Ding
标识
DOI:10.1109/mwc.001.2300014
摘要
Many intelligent (mobile) applications are driven by real-time environmental information which may be unavailable at the core network and is challenging to transmit, given the limited spectrum resource. This article proposes an innovative architecture, referred to as semantic-aware, vision-assisted integrated sensing and communication (SA-VA-ISAC), to enable real-time environmental information collection and transmission, by integrating emerging paradigms and key technologies, including computer vision (CV), ISAC, mobile edge computing (MEC), semantic communications, and beamforming. First, the CV and ISAC are employed to capture abundant environmental information, which is further aggregated at an MEC server. Second, semantic communications enable information compression to satisfy the stringent reliability and latency requirements, and beamforming provides high-quality wireless coverage. To facilitate the resource allocation in the proposed architecture, deep learning (DL) is adopted for environmental information collection and aggregation, semantic encoder and decoder and beamforming design. Numerical results manifest the advantages of the proposed architecture and the DL-based resource allocation schemes.
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