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LabelSens: enabling real-time sensor data labelling at the point of collection using an artificial intelligence-based approach

机译:标签型:使用基于人工智能的方法在收集点启用实时传感器数据标签

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In recent years, machine learning has developed rapidly, enabling the development of applications with high levels of recognition accuracy relating to the use of speech and images. However, other types of data to which these models can be applied have not yet been explored as thoroughly. Labelling is an indispensable stage of data pre-processing that can be particularly challenging, especially when applied to single or multi-model real-time sensor data collection approaches. Currently, real-time sensor data labelling is an unwieldy process, with a limited range of tools available and poor performance characteristics, which can lead to the performance of the machine learning models being compromised. In this paper, we introduce new techniques for labelling at the point of collection coupled with a pilot study and a systematic performance comparison of two popular types of deep neural networks running on five custom built devices and a comparative mobile app (68.5-89% accuracy within-device GRU model, 92.8% highest LSTM model accuracy). These devices are designed to enable real-time labelling with various buttons, slide potentiometer and force sensors. This exploratory work illustrates several key features that inform the design of data collection tools that can help researchers select and apply appropriate labelling techniques to their work. We also identify common bottlenecks in each architecture and provide field tested guidelines to assist in building adaptive, high-performance edge solutions.
机译:近年来,机器学习迅速发展,能够开发具有与使用语音和图像的高度识别准确性的应用程序。但是,可以应用这些模型的其他类型数据尚未彻底探讨。标记是数据预处理的不可或缺的阶段,可以特别具有挑战性,特别是当应用于单个或多模型实时传感器数据收集方法时。目前,实时传感器数据标签是一种笨重的过程,具有有限的工具,可用的工具和性能特性差,这可能导致机器学习模型的性能受到损害。在本文中,我们在收集点介绍了标签的新技术,加上了两种定制设备和比较移动应用程序运行的两种流行类型的深神经网络的系统性能比较(精度为68.5-89%在设备内部GRU模型,最高LSTM模型精度为92.8%)。这些设备旨在使用各种按钮,滑动电位计和力传感器进行实时标记。此探索性工作说明了几个关键功能,可通知数据收集工具,可以帮助研究人员选择并将适当的标签技术应用于其工作。我们还确定每个架构中的常见瓶颈,并提供现场测试指南,以帮助建立自适应,高性能的边缘解决方案。

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