减少用户对辅助技术增量活动识别的干预

Julien Rebetez, H. Satizábal, A. Pérez-Uribe
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引用次数: 9

摘要

活动识别最近引起了人们的极大兴趣,并且已经有几种基于可穿戴传感器的人类活动检测方法。大多数现有的方法依赖于一个标记活动的数据库,该数据库用于训练离线活动识别系统。本文提出了一种不需要任何先验标记数据的在线活动识别系统的构建方法。系统通过主动查询用户的标签来逐步学习活动。为了选择何时应该询问用户,我们比较了一种基于随机抽样的方法和另一种使用生长神经气体(GNG)的方法。使用GNG有助于将用户查询的数量减少20%到30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing user intervention in incremental activityrecognition for assistive technologies
Activity recognition has recently gained a lot of interest and there already exist several methods to detect human activites based on wearable sensors. Most of the existing methods rely on a database of labelled activities that is used to train an offline activity recognition system. This paper presents an approach to build an online activity recognition system that do not require any a priori labelled data. The system incrementally learns activities by actively querying the user for labels. To choose when the user should be queried, we compare a method based on random sampling and another that uses a Growing Neural Gas (GNG). The use of GNG helps reducing the number of user queries by 20% to 30%.
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