With the development of artificial intelligence (AI) techniques and the increasing popularity of camera-equipped devices, many edge video analytics applications are emerging, calling for the deployment of computation-intensive AI models at the network edge. Edge inference is a promising solution to move the computation-intensive workloads from low-end devices to a powerful edge server for video analytics, but the device-server communications will remain a bottleneck due to the limited bandwidth. This paper proposes a task-oriented communication framework for edge video analytics, where multiple devices collect the visual sensory data and transmit the informative features to an edge server for processing. To enable low-latency inference, this framework removes video redundancy in spatial and temporal domains and transmits minimal information that is essential for the downstream task, rather than reconstructing the videos at the edge server. Specifically, it extracts compact task-relevant features based on the deterministic information bottleneck (IB) principle, which characterizes a tradeoff between the informativeness of the features and the communication cost. As the features of consecutive frames are temporally correlated, we propose a temporal entropy model (TEM) to reduce the bitrate by taking the previous features as side information in feature encoding. To further improve the inference performance, we build a spatial-temporal fusion module at the server to integrate features of the current and previous frames for joint inference. Extensive experiments on video analytics tasks evidence that the proposed framework effectively encodes task-relevant information of video data and achieves a better rate-performance tradeoff than existing methods.
翻译:随着人工智能(AI)技术的发展和摄像设备越来越受欢迎,许多边缘视频分析应用正在出现,呼吁在网络边缘部署计算密集的AI模型。 边缘推断是将计算密集型工作量从低端设备转移到强大的视频分析高级服务器的一个大有希望的解决办法,但是由于带宽有限,设备服务器通信仍将是一个瓶颈。 本文建议为边缘视频分析工具建立一个任务导向的通信框架,其中多个设备收集视觉感官数据并将信息功能传输到边端服务器进行处理。 为使低延度推断,这一框架消除了空间和时空域的视频冗余,并传递了下游任务所必需的最低限度信息,而不是重建边缘服务器的视频。 具体地说,它根据确定性信息瓶颈(IBIB)原则提取了与任务相关的紧凑任务,该原则将功能的信息信息特性与现有通信成本相交替,因为连续框架的特征与时间相对相关,因此,我们提议在以往的图像模型中,将改进当前视频服务器的高级性价比值,我们提议在以往的版本模型中,将改进当前数据模型中的时空级数据格式。