SmartDet:移动目标检测边缘任务卸载的上下文感知动态控制

Davide Callegaro, Francesco Restuccia, M. Levorato
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引用次数: 1

摘要

无人机和自动驾驶汽车等移动设备越来越依赖于通过深度神经网络(dnn)进行目标检测(OD),以执行导航、目标跟踪和监视等关键任务,仅举几例。由于其高度复杂性,这些深度神经网络的执行需要过多的时间和精力。因此,低复杂度对象跟踪(OT)与OD一起使用,后者定期应用于生成跟踪的“新”引用。但是,使用OD处理的帧会产生较大的延迟,这不符合实时应用的要求。将OD卸载到边缘服务器可以缓解这个问题,但是现有的工作主要集中在无线信道容量非常大的系统中的卸载过程的优化上。在这里,我们考虑具有受限和不稳定通道容量的系统,并建立并行OT(在移动设备上)和OD(在边缘服务器上)进程,以适应大OD延迟。我们提出了一种新的跟踪机制,可以提高系统对过度OD延迟的弹性。我们表明,这种技术极大地提高了可用于跟踪的参考的质量,并将性能提高了33%。然而,在加速显著提高性能的同时,它也增加了移动设备的计算负荷。因此,我们设计了SmartDet,这是一种基于深度强化学习(DRL)的低复杂度控制器,可以学习在资源利用率和OD性能之间实现正确的权衡。SmartDet将与当前视频内容和当前网络条件相关的高度异构的上下文相关信息作为输入,以优化OD卸载的频率和类型,以及缓存利用率。我们在一个真实的测试平台上对SmartDet进行了广泛的评估,该测试平台由JetSon Nano作为移动设备和GTX 980 Ti作为边缘服务器组成,通过Wi-Fi链路连接,以收集一些网络相关的痕迹,以及能量测量。我们考虑了最先进的视频数据集(ILSVRC 2015 - VID)和最先进的OD模型(EfficientDet 0,2和4)。实验结果表明,SmartDet在跟踪性能-平均平均召回率(mAR)和资源使用之间实现了最佳平衡。相对于完全占用占用率和最大通道占用率的基线,我们仍然可以将mAR提高4%,同时使用与占用相关的50%的通道和30%的电源资源。对于使用最小资源的固定策略,我们在1/3的帧上使用catch - up时将mAR提高了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartDet: Context-Aware Dynamic Control of Edge Task Offloading for Mobile Object Detection
Mobile devices such as drones and autonomous vehicles increasingly rely on object detection (OD) through deep neural networks (DNNs) to perform critical tasks such as navigation, target-tracking and surveillance, just to name a few. Due to their high complexity, the execution of these DNNs requires excessive time and energy. Low-complexity object tracking (OT) is thus used along with OD, where the latter is periodically applied to generate "fresh" references for tracking. However, the frames processed with OD incur large delays, which does not comply with real-time applications requirements. Offloading OD to edge servers can mitigate this issue, but existing work focuses on the optimization of the offloading process in systems where the wireless channel has a very large capacity. Herein, we consider systems with constrained and erratic channel capacity, and establish parallel OT (at the mobile device) and OD (at the edge server) processes that are resilient to large OD latency. We propose Katch-Up, a novel tracking mechanism that improves the system resilience to excessive OD delay. We show that this technique greatly improves the quality of the reference available to tracking, and boosts performance up to 33%. However, while Katch-Up significantly improves performance, it also increases the computing load of the mobile device. Hence, we design SmartDet, a low-complexity controller based on deep reinforcement learning (DRL) that learns to achieve the right trade-off between resource utilization and OD performance. SmartDet takes as input highly-heterogeneous context-related information related to the current video content and the current network conditions to optimize frequency and type of OD offloading, as well as Katch-Up utilization. We extensively evaluate SmartDet on a real-world testbed composed by a JetSon Nano as mobile device and a GTX 980 Ti as edge server, connected through a Wi-Fi link, to collect several network-related traces, as well as energy measurements. We consider a state-of-the-art video dataset (ILSVRC 2015 - VID) and state-of-the-art OD models (EfficientDet 0, 2 and 4). Experimental results show that SmartDet achieves an optimal balance between tracking performance – mean Average Recall (mAR) and resource usage. With respect to a baseline with full Katch-Up usage and maximum channel usage, we still increase mAR by 4% while using 50% less of the channel and 30% power resources associated with Katch-Up. With respect to a fixed strategy using minimal resources, we increase mAR by 20% while using Katch-Up on 1/3 of the frames.
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