Existing work in intelligent communications has recently made preliminary attempts to utilize multi-source sensing information (MSI) to improve the system performance. However, the research on MSI aided intelligent communications has not yet explored how to integrate and fuse the multimodal sensory data, which motivates us to develop a systematic framework for wireless communications based on deep multimodal learning (DML). In this paper, we first present complete descriptions and heuristic understandings on the framework of DML based wireless communications, where core design choices are analyzed in the view of communications. Then, we develop several DML based architectures for channel prediction in massive multiple-input multiple-output (MIMO) systems that leverage various modality combinations and fusion levels. The case study of massive MIMO channel prediction offers an important example that can be followed in developing other DML based communication technologies. Simulations results demonstrate that the proposed DML framework can effectively exploit the constructive and complementary information of multimodal sensory data in various wireless communication scenarios.
翻译:最近,智能通信方面的现有工作初步尝试了利用多种来源的遥感信息来改进系统性能,然而,关于多式感官数据的研究尚未探索如何整合和整合多式感官数据,这促使我们根据深入的多式学习(DML)为无线通信制定一个系统框架。在本文件中,我们首先对基于DML的无线通信框架提出完整的描述和超常理解,从通信的角度分析核心设计选择。然后,我们开发了基于DML的若干基于DML的管道结构,用于利用多种模式组合和聚合水平的大规模多产出(MIMO)系统的频道预测。大型MIMO频道预测的案例研究为开发其他基于DML的通信技术提供了一个重要的范例。模拟结果表明,拟议的DML框架可以有效地利用多种无线通信情景中多式多式传感器数据的建设性和互补信息。