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Edge-assisted Online On-device Object Detection for Real-time Video Analytics

机译:Edge-Artriped Online On-Device对象检测实时视频分析

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Real-time on-device object detection for video analytics fails to meet the accuracy requirement due to limited resources of mobile devices while offloading object detection inference to edges is time-consuming due to the transference of video data over edge networks. Based on the system with both on-device object tracking and edge-assisted analysis, we formulate a non-linear time-coupled program over time, maximizing the overall accuracy of object detection by deciding the frequency of edge-assisted inference, under the consideration of both dynamic edge networks and the constrained detection latency. We then design a learning-based online algorithm to adjust the threshold for triggering edge-assisted inference on the fly in terms of the object tracking results, which essentially controls the deviation of on-device tracking between two consecutive frames in the video, by only taking previously observable inputs. We rigorously prove that our approach only incurs sub-linear dynamic regret for the optimality objective. At last, we implement our proposed online schema, and extensive testbed results with real-world traces confirm the empirical superiority over alternative algorithms, in terms of up to 36% improvement on detection accuracy with ensured detection latency.
机译:对于视频分析的实时对象对象检测不能满足移动设备资源有限的准确性要求,而在卸载对象检测到边缘的边缘是耗时,因为视频数据在边缘网络上的视频数据的转移。基于该系统的设备上的对象跟踪和边缘辅助分析,我们通过决定在考虑下决定边缘辅助推断的频率来提高非线性时耦合程序,最大化物体检测的整体精度动态边缘网络和受约束的检测延迟。然后,我们设计了一种基于学习的在线算法,以调整触发边缘辅助推断的阈值,以便在对象跟踪结果方面,基本上仅通过仅控制视频中的两个连续帧之间的设备跟踪的偏差采取以前可观察的输入。我们严格证明,我们的方法只会引发亚线性动态遗憾的最佳目标。最后,我们实施了我们提出的在线架构,并通过现实世界迹线进行了广泛的测试平局结果,以确保检测精度的提高高达36%的替代算法,通过确保检测延迟的检测准确性提高了36%的经验优势。

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