This paper studies a new multi-device edge artificial-intelligent (AI) system, which jointly exploits the AI model split inference and integrated sensing and communication (ISAC) to enable low-latency intelligent services at the network edge. In this system, multiple ISAC devices perform radar sensing to obtain multi-view data, and then offload the quantized version of extracted features to a centralized edge server, which conducts model inference based on the cascaded feature vectors. Under this setup and by considering classification tasks, we measure the inference accuracy by adopting an approximate but tractable metric, namely discriminant gain, which is defined as the distance of two classes in the Euclidean feature space under normalized covariance. To maximize the discriminant gain, we first quantify the influence of the sensing, computation, and communication processes on it with a derived closed-form expression. Then, an end-to-end task-oriented resource management approach is developed by integrating the three processes into a joint design. This integrated sensing, computation, and communication (ISCC) design approach, however, leads to a challenging non-convex optimization problem, due to the complicated form of discriminant gain and the device heterogeneity in terms of channel gain, quantization level, and generated feature subsets. Remarkably, the considered non-convex problem can be optimally solved based on the sum-of-ratios method. This gives the optimal ISCC scheme, that jointly determines the transmit power and time allocation at multiple devices for sensing and communication, as well as their quantization bits allocation for computation distortion control. By using human motions recognition as a concrete AI inference task, extensive experiments are conducted to verify the performance of our derived optimal ISCC scheme.
翻译:本文研究一个新的多维边缘人工智能(AI)系统,该系统共同利用AI模型的分解推理和综合遥感与通信(ISAC),在网络边缘使用低纬度智能服务。在这个系统中,多个ISAC设备进行雷达遥感,以获取多视图数据,然后将提取的量化功能版本卸至中央边缘服务器,该服务器以级联特性矢量为基础进行模型推理。在此设置和考虑分类任务时,我们通过采用一种近似但可感应的衡量标准,即平衡增益(ISAC)来测量推断准确度的准确度,该模型的定义是:在网络网络网络的常规变异状态下,两个等级的距离。为了最大限度地提高差异性能,我们首先用一种导出的封闭式表达式表达方式来量化遥感、计算和通信过程的四分解影响。然后,通过将三个流程整合到联合设计中,我们采用这种集成、计算和通信(ISCC)设计得分解的方法,然而,这导致在电流化系统中进行不精确的分流化分配,而使该系统生成的分流化的分流系统生成的分流系统生成的分流系统生成的分解系统生成系统生成,从而生成生成生成的分流系统生成了内部的分解系统生成的分流系统生成的分解系统生成的分解。