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Surrogate Data for Deep Learning Architectures in Rehabilitative Edge Systems

机译:康复边缘系统中用于深度学习架构的替代数据

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The age of Big Data came about with the profitable mining of large amounts of data stored on the Cloud data servers accessible through the Internet. Much of these data were provided by users of extensive social networks. The availability of these data for training, coupled with advances in processing power have led to the surge in deep learning applications.While the Cloud provides wide scale data storage and analytic facilities, there is a move to perform data analyses closer to where data is gathered. Low resource but powerful processors have led the move toward these systems at the “edge“ rather than remotely.However, certain environments which can benefit from edge systems do not produce large volumes of data, such as in clinical applications. We augment such data using surrogate time series and compare various neural network architectures which would allow data analysis in rehabilitative edge systems.We show that a neural network using temporal data provides excellent classification results while using a fraction of the resources in an earlier work. Our novel framework shows how deep learning tools can be trained in a data scarce environment and then deployed in resource constrained edge systems.
机译:大数据时代的来临是通过可盈利地挖掘可通过Internet访问的Cloud数据服务器上存储的大量数据来实现的。这些数据大部分是由广泛的社交网络的用户提供的。这些数据可用于培训以及处理能力的提高导致了深度学习应用程序的激增。尽管云提供了大规模的数据存储和分析功能,但仍在靠近收集数据的地方进行数据分析的举措。 。资源匮乏但功能强大的处理器使这些系统处于“边缘”而不是远程。但是,某些可以从边缘系统中受益的环境却无法产生大量数据,例如在临床应用中。我们使用替代时间序列扩充了此类数据,并比较了可以在修复边缘系统中进行数据分析的各种神经网络体系结构。我们表明,使用时态数据的神经网络在提供出色的分类结果的同时,在早期工作中仅使用了部分资源。我们新颖的框架说明了如何在缺乏数据的环境中训练深度学习工具,然后将其部署在资源受限的边缘系统中。

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