VIDENS:基于惯性传感器的视觉用户识别

Alejandro Sánchez Guinea, Simon Heinrich, Max Mühlhäuser
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引用次数: 2

摘要

在本文中,我们提出了VIDENS(来自惯性传感器的基于视觉的用户识别)方法,该方法将惯性传感器的时间序列数据转换为图像,这些图像以像素形式表示随着时间的推移发现的模式,甚至允许简单的CNN优于将rnn和CNN结合在一起进行用户识别的复杂ad-hoc深度学习模型。将我们的方法与一些相关的现有方法进行比较,我们的评估显示出有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VIDENS: Vision-based User Identification from Inertial Sensors
In this paper we propose the VIDENS (vision-based user identification from inertial sensors) approach, which transforms inertial sensors time-series data into images that represent in pixel form patterns found over time, allowing even a simple CNN to outperform complex ad-hoc deep learning models that combine RNNs and CNNs for user identification. Our evaluation shows promising results when comparing our approach to some relevant existing methods.
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