WebRTC-based Resource Offloading in Smart Home Environments

Hunseop Jeong, Taehyung Lee, Y. Eom
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引用次数: 1

Abstract

Web platforms face new demands for emerging applications, which use machine learning models such as pose recognition or object detection. These models require significant computing powers in processing enormous inputs such as images or audios for machine learning computation. These demands are also being generated in smart home appliances based on web platforms. Unfortunately, smart home appliances do not generally have built-in input devices, such as cameras or microphones, due to privacy issues and have limited performance compared to mobile devices. This paper proposes a WebRTC-based resource offloading system for web applications, which allows smart home appliances to use resources of nearby mobile devices as if the resources are their own. We implemented the proposed system, performed experiments on the resource offloading framework, and evaluated the performance using five computation-intensive web applications, which use a machine learning model. Our system was able to run machine learning models, through resource offloading to mobile devices, on smart home appliances without an attached camera, and achieved up to 1.5x speedup, compared to local execution with a camera.
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基于webrtc的智能家居环境下的资源分流
Web平台面临着新兴应用程序的新需求,这些应用程序使用机器学习模型,如姿势识别或物体检测。这些模型需要强大的计算能力来处理大量输入,如用于机器学习计算的图像或音频。这些需求也在基于网络平台的智能家电中产生。不幸的是,由于隐私问题,智能家电通常没有内置输入设备,如摄像头或麦克风,并且与移动设备相比性能有限。本文提出了一种基于webbrtc的web应用资源卸载系统,该系统允许智能家电像使用自己的资源一样使用附近移动设备的资源。我们实现了提出的系统,在资源卸载框架上进行了实验,并使用五个使用机器学习模型的计算密集型web应用程序评估了性能。我们的系统能够运行机器学习模型,通过将资源卸载到移动设备上,在没有附加摄像头的智能家用电器上,与带有摄像头的本地执行相比,实现了高达1.5倍的加速。
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