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Edge Cloud Ensemble with Motion Vectors for Object Detection in Wireless Environments

机译:边缘云集合与运动向量进行无线环境中的对象检测

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Cloud offloading enables smaller edge devices which contain fewer computing resources to be used for computer vision. This contributes to mobile applications of computer vision such as robotics and augmented reality. However, cloud offloading is impacted by bandwidth fluctuations in wireless networks. When the available bandwidth is restricted, it is difficult to offload workloads (i.e. frame) to cloud instances. Instead of offloading workloads to the cloud, existing approaches send a result of edge prediction or use a past cloud prediction to cover non-offloaded frames, which result in low accuracy. In this paper, we propose an Edge Cloud Ensemble method for object detection to improve accuracy in low bandwidth environments. In our method, the edge sends an inaccurate prediction and a motion vector of a detected object’s region to the cloud while maintaining low transmission overhead. The cloud corrects the inaccurate prediction by using the motion vectors to shift a past, accurate cloud prediction. The results of our experiments demonstrate that our approach can improve accuracy in low bandwidth environments compared with existing methods, especially in moving cameras.
机译:云卸载使较小的边缘设备能够用于计算机视觉的更少计算资源。这有助于移动应用计算机愿景,例如机器人和增强现实。但是,云卸载受无线网络中的带宽波动影响。当可用带宽受到限制时,难以将工作负载(即帧)卸载到云实例。除了将工作负载卸载到云端,现有方法发送边缘预测结果或使用过去的云预测来覆盖非卸载帧,这导致低精度。在本文中,我们提出了一个边缘云集合方法,用于对象检测,以提高低带宽环境中的精度。在我们的方法中,边缘向云发送检测到的对象区域的不准确的预测和运动向量,同时保持低传输开销。云通过使用运动向量来纠正不准确的预测来移动过去,准确的云预测。我们的实验结果表明,与现有方法相比,我们的方法可以提高低带宽环境的准确性,特别是在移动摄像机中。

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