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SMART: Emerging Activity Recognition with Limited Data for Multi-modal Wearable Sensing

机译:SMART:具有有限数据的新兴活动识别,用于多模态可穿戴感测

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Activity recognition using ubiquitous wearable devices (e.g., smartphones, smartwatches and sport bracelets) can be applied to many application domains such as healthcare, smart environments, assisted living, human-computer interaction, surveillance etc. Most existing activity recognition approaches require users to provide each activity a sufficient amount of annotations (labels) in order to achieve acceptable performance and therefore often fail to scale to a large number of activities by recognizing new (emerging) activities. To tackle this limitation, the systems requiring limited training data are much desired. However, existing activity recognition solutions on limited training data rely heavily on low-level activity or attribute extraction and therefore suffer from two major limitations: (1) failing to work well when activities are highly similar to each other, such as jogging, running, and jumping front and back, and (2) leading to overall system performance degradation on recognizing existing activities with sufficient training data. In this paper, we introduce SMART, a unified semi-supervised framework for recognizing highly similar emerging activities without sacrificing the performance on recognizing existing activities. Extensive experiments on real-world data showed that compared to the state of the art, SMART yielded superior performance on recognizing emerging activities, especially highly similar emerging activities, while providing comparable performance on recognizing existing activities.
机译:使用无处不在的可穿戴设备(例如,智能手机,Smartwatches和Sport Bracelets)的活动识别可以应用于许多应用领域,例如医疗保健,智能环境,辅助生活,人机互动,监控等。大多数现有的活动识别方法都需要用户提供每项活动足够量的注释(标签)以实现可接受的性能,因此通过认识到新的(新兴)活动,通常不会扩展到大量活动。为了解决这一限制,需要需要有限训练数据的系统。然而,关于有限培训数据的现有活动识别解决方案严重依赖于低级活动或属性提取,因此遭受两个主要限制:(1)当活动彼此高度相似时,(如慢跑,运行,并跳跃前后,(2)导致整体系统性能下降,以识别具有足够训练数据的现有活动。在本文中,我们介绍了一个统一的半监督框架,用于认识到高度相似的新兴活动,而不会牺牲识别现有活动的表现。关于现实世界数据的广泛实验表明,与现有技术相比,智能产生了卓越的性能,以认识到新兴活动,特别是高度相似的新兴活动,同时提供了对现有活动的可比性表现。

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