Distributed Deep Learning System for Efficient Face Recognition in Surveillance System

Jinjin Liu, Zhifeng Chen, Xiaonan Li, Tongxin Wei
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Abstract

In view of the bandwidth consumption caused by data stream transmission in video analysis system and the demand for accurate online real-time analysis of massive data, this paper proposes a deep learning model framework for face recognition employed in the embedded system. Through data collaboration, the cloud could build a more complex data set with a small amount of uploaded data gathered by the end devices. And the framework collaboration makes sure that the fully-trained cloud model directly download or distillate knowledge to the end devices. Experiments show that the deep model not only realizes the real-time response and the accurate response of the cloud system, but also greatly reduces the bandwidth consumption caused by sample data transmission in the model training process.
分布式深度学习系统在监控系统中的高效人脸识别
针对视频分析系统中数据流传输带来的带宽消耗,以及对海量数据进行准确在线实时分析的需求,本文提出了一种用于嵌入式系统人脸识别的深度学习模型框架。通过数据协作,云可以利用终端设备收集的少量上传数据构建更复杂的数据集。框架协作确保经过充分训练的云模型直接将知识下载或提炼到终端设备。实验表明,深度模型不仅实现了云系统的实时响应和准确响应,而且大大降低了模型训练过程中样本数据传输带来的带宽消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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