Realtime face identification (FID) from a video feed is highly computation-intensive, and may exhaust computation resources if performed on a device with a limited amount of resources (e.g., a mobile device). In general, FID performs better when images are sampled at a higher rate, minimizing false negatives. However, performing it at an overwhelmingly high rate exposes the system to the risk of a queue overflow that hampers the system's reliability. This paper proposes a novel, queue-aware FID framework that adapts the sampling rate to maximize the FID performance while avoiding a queue overflow by implementing the Lyapunov optimization. A preliminary evaluation via a trace-based simulation confirms the effectiveness of the framework.
翻译:视频传输的实时面部识别(FID)在计算上非常密集,如果在一个资源有限的装置(例如移动设备)上进行,可能会耗尽计算资源,一般来说,FID在图像取样率较高时表现更好,最大限度地减少假底片,但以压倒性极高的速度进行,使系统面临排队溢出的风险,从而妨碍系统的可靠性。本文提出了一个新的、有排队意识的FID框架,通过实施Lyapunov优化,使取样率尽可能提高FID的性能,同时避免排队溢出。通过跟踪模拟进行的初步评估证实了框架的有效性。