Sensing is envisioned as a key network function of the 6G mobile networks. Artificial intelligence (AI)-empowered sensing fuses features of multiple sensing views from devices distributed in edge networks for the edge server to perform accurate inference. This process, known as multi-view pooling, creates a communication bottleneck due to multi-access by many devices. To alleviate this issue, we propose a task-oriented simultaneous access scheme for distributed sensing called Over-the-Air Pooling (AirPooling). The existing Over-the-Air Computing (AirComp) technique can be directly applied to enable Average-AirPooling by exploiting the waveform superposition property of a multi-access channel. However, despite being most popular in practice, the over-the-air maximization, called Max-AirPooling, is not AirComp realizable as AirComp addresses a limited subset of functions. We tackle the challenge by proposing the novel generalized AirPooling framework that can be configured to support both Max- and Average-AirPooling by controlling a configuration parameter. The former is realized by adding to AirComp the designed pre-processing at devices and post-processing at the server. To characterize the end-to-end sensing performance, the theory of classification margin is applied to relate the classification accuracy and the AirPooling error. Furthermore, the analysis reveals an inherent tradeoff of Max-AirPooling between the accuracy of the pooling-function approximation and the effectiveness of noise suppression. Using the tradeoff, we optimize the configuration parameter of Max-AirPooling, yielding a sub-optimal closed-form method of adaptive parametric control. Experimental results obtained on real-world datasets show that AirPooling provides sensing accuracies close to those achievable by the traditional digital air interface but dramatically reduces the communication latency.
翻译:6G移动网络的主要网络功能被设想为 6G 移动网络的关键网络功能。 人工智能(AI) 动力感应器能直接应用在边缘服务器边缘网络中分布的设备的多重感知感应功能,以进行准确的推断。 这个称为多视图集合的过程,由于许多设备多处使用,造成了通信瓶颈。 为了缓解这一问题,我们提议了一个任务导向的同步存取机制,用于分配感,称为“Air Pooling(Air Pooling ) 。 现有的超离子计算(AirComcom)技术可以通过利用多接入频道的波状温度比值超定位特性,实现平均Airpool 的多重感应感应感应功能。 然而,尽管在实践上最为流行, 超离子星最大化的最大化,但随着空气Compil Conformal Conformormation, 我们通过控制一个配置参数,可以配置新的通用的“Arpool-al-al complain dition ”框架, 通过将“ Max-al-liveral-lation” liveral-ligial- dalalal- lagistration magistration 和“Oliver- dal- dal- dal- dal- dal- ” la- disal- disal- disal la- dal- lax- lax lax- lax- lax- 的Sal- lagal- lax-d-d-d-d-d-d-d-d-d-d-d-d-d-dal-d-d-d-d-d-d-d-dal-d-d-d-d-d-d-d-d-d-d-d-d-d-d-d-d-d-laction-laction-laction-laction-laction-laction-laction-laction-laction-d-d-d-d-laction-laction-laction-d-laction-d-laction-laction-d-d-d-d-d-d-d-d-d-d-d-d-d-d-d-d-