Real-time analysis of data from many sensors with neural networks

Kristof Van Laerhoven, K. Aidoo, S. Lowette
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引用次数: 87

Abstract

Much research has been conducted that uses sensor-based modules with dedicated software to automatically distinguish the user's situation or context. The best results were obtained when powerful sensors (such as cameras or GPS systems) and/or sensor-specific algorithms (like sound analysis) were applied A somewhat new approach is to replace the one smart sensor by many simple sensors. We argue that neural networks are ideal algorithms to analyze the data coming from these sensors and describe how we came to one specific algorithm that gives good results, by giving an overview of several requirements. Finally, wearable implementations are given to show the feasibility and benefits of this approach and its implications.
利用神经网络实时分析来自多个传感器的数据
已经进行了许多研究,使用基于传感器的模块和专用软件来自动区分用户的情况或背景。当应用强大的传感器(如相机或GPS系统)和/或传感器特定算法(如声音分析)时,可以获得最佳结果。一种新的方法是用许多简单的传感器取代一个智能传感器。我们认为,神经网络是分析来自这些传感器的数据的理想算法,并通过概述几个要求来描述我们如何得出一个给出良好结果的特定算法。最后,给出了可穿戴的实现,以显示这种方法的可行性和好处及其意义。
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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