Real-time intelligence applications in Internet of Things (IoT) environment depend on timely data communication. However, it is challenging to transmit and analyse massive data of various modalities. Recently proposed task-oriented communication methods based on deep learning have showed its superiority in communication efficiency. In this paper, we propose a cooperative task-oriented communication method for the transmission of multi-modal data from multiple end devices to a central server. In particular, we use the transmission result of data of one modality, which is with lower rate, to control the transmission of other modalities with higher rate in order to reduce the amount of transmitted date. We take the human activity recognition (HAR) task in a smart home environment and design the semantic-oriented transceivers for the transmission of monitoring videos of different rooms and acceleration data of the monitored human. The numerical results demonstrate that by using the transmission control based on the obtained results of the received acceleration data, the transmission is reduced to 2% of that without transmission control while preserving the performance on the HAR task.
翻译:在互联网上,物的实时情报应用取决于及时的数据通信,然而,传送和分析各种方式的大量数据是困难的。最近提出的基于深层学习的面向任务的通信方法显示了其在通信效率方面的优势。在本文件中,我们提议了一种面向任务的通信方法,将多端装置的多模式数据传输到中央服务器。我们特别使用一种模式的数据传输结果,即低速数据,来控制其他方式的传输,以降低传输日期的数量。我们在智能家庭环境中承担人类活动识别任务,设计以语义为导向的中继器,用于传输不同房间的监测录像和受监测的人类加速数据。数字结果表明,通过使用基于所收到加速数据结果的传输控制,传输率减少到未进行传输控制的2%,同时保持对信息传输任务的执行。