Integrated sensing and communication (ISAC) is a promising technology to improve the band-utilization efficiency via spectrum sharing or hardware sharing between radar and communication systems. Since a common radio resource budget is shared by both functionalities, there exists a tradeoff between the sensing and communication performance. However, this tradeoff curve is currently unknown in ISAC systems with human motion recognition tasks based on deep learning. To fill this gap, this paper formulates and solves a multi-objective optimization problem which simultaneously maximizes the recognition accuracy and the communication data rate. The key ingredient of this new formulation is a nonlinear recognition accuracy model with respect to the wireless resources, where the model is derived from power function regression of the system performance of the deep spectrogram network. To avoid cost-expensive data collection procedures, a primitive-based autoregressive hybrid (PBAH) channel model is developed, which facilitates efficient training and testing dataset generation for human motion recognition in a virtual environment. Extensive results demonstrate that the proposed wireless recognition accuracy and PBAH channel models match the actual experimental data very well. Moreover, it is found that the accuracy-rate region consists of a communication saturation zone, a sensing saturation zone, and a communication-sensing adversarial zone, of which the third zone achieves the desirable balanced performance for ISAC systems.
翻译:综合遥感和通信(ISAC)是通过频谱共享或雷达和通信系统之间硬件共享来提高频带利用效率的一项大有希望的技术(ISAC),通过频谱共享或雷达和通信系统之间的共享来提高频带利用效率。由于共同的无线电资源预算由两个功能共享,因此在遥感和通信性能之间存在着一种权衡,然而,在ISAC系统中,这一权衡曲线目前并不为人所熟知,而基于深层学习的人类运动识别任务。为填补这一空白,本文件提出并解决了一个多目标优化问题,同时最大限度地提高识别准确度和通信数据率。这一新配方的关键内容是无线资源的非线性识别准确性模型,该模型来自深光谱网络系统性能的回落。为避免成本昂贵的数据收集程序,正在开发一个原始的自动递增混合信道模型,这有助于对虚拟环境中人类运动识别的生成数据进行有效的培训和测试。广泛的结果表明,拟议的无线识别准确性和PBAHH频道模型与实际实验性数据非常吻合。此外,还发现,该模型的精确度区域包括通信饱和敏感区段的通信区,从而实现空间平衡区段区。