海报:移动图像识别的近似缓存

James Mariani, Yongqi Han, Li Xiao
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引用次数: 0

摘要

许多新兴的移动应用程序严重依赖于静态图像和实时视频流的图像识别。图像识别通常使用深度神经网络(dnn)来实现,它可以实现高精度,但在资源有限的智能手机上也会产生显着的计算延迟和能耗。我们引入了一种内存缓存范式,支持智能手机图像识别中无基础设施的协作计算重用。我们建议使用智能手机的惯性运动、视频流固有的局部性以及来自附近点对点设备的信息,以最大限度地提高移动图像识别中的计算重用机会。实验结果表明,我们的系统将标准移动神经网络图像识别应用的平均延迟降低了94%,且识别精度损失最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poster: Approximate Caching for Mobile Image Recognition
Many emerging mobile applications rely heavily upon image recognition of both static images and live video streams. Image recognition is commonly achieved using deep neural networks (DNNs) which can achieve high accuracy but also incur significant computation latency and energy consumption on resource-constrained smartphones. We introduce an in-memory caching paradigm that supports infrastructure-less collaborative computation reuse in smartphone image recognition. We propose using the inertial movement of smartphones, the locality inherent in video streams, as well as information from nearby, peer-to-peer devices to maximize the computation reuse opportunities in mobile image recognition. Experimental results show that our system lowers the average latency of standard mobile neural network image recognition applications by up to 94% with minimal loss of recognition accuracy.
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