GeSmart: A gestural activity recognition model for predicting behavioral health

M. A. U. Alam, Nirmalya Roy
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引用次数: 11

Abstract

To promote independent living for elderly population activity recognition based approaches have been investigated deeply to infer the activities of daily living (ADLs) and instrumental activities of daily living (I-ADLs). Deriving and integrating the gestural activities (such as talking, coughing, and deglutition etc.) along with activity recognition approaches can not only help identify the daily activities or social interaction of the older adults but also provide unique insights into their long-term health care, wellness management and ambulatory conditions. Gestural activities (GAs), in general, help identify fine-grained physiological symptoms and chronic psychological conditions which are not directly observable from traditional activities of daily living. In this paper, we propose GeSmart, an energy efficient wearable smart earring based GA recognition model for detecting a combination of speech and non-speech events. To capture the GAs we propose to use only the accelerometer sensor inside our smart earring due to its energy efficient operations and ubiquitous presence in everyday wearable devices. We present initial results and insights based on a C4.5 classification algorithm to infer the infrequent GAs. Subsequently, we propose a novel change-point detection based hybrid classification method exploiting the emerging patterns in a variety of GAs to detect and infer infrequent GAs. Experimental results based on real data traces collected from 10 users demonstrate that this approach improves the accuracy of GAs classification by over 23%, compared to previously proposed pure classification-based solutions. We also note that the accelerometer sensor based earrings are surprisingly informative and energy efficient (by 2.3 times) for identifying different types of GAs.
预测行为健康的手势活动识别模型
为了促进老年人口的独立生活,研究了基于活动识别的方法来推断日常生活活动(ADLs)和工具性日常生活活动(I-ADLs)。提取和整合手势活动(如说话、咳嗽和吞咽等)以及活动识别方法不仅可以帮助识别老年人的日常活动或社会互动,而且可以为他们的长期健康护理、健康管理和流动状况提供独特的见解。一般来说,手势活动(GAs)有助于识别细微的生理症状和慢性心理状况,这些症状和慢性心理状况不能从传统的日常生活活动中直接观察到。在本文中,我们提出了GeSmart,一种基于节能可穿戴智能耳环的遗传识别模型,用于检测语音和非语音事件的组合。为了捕获气体,我们建议只使用智能耳环内的加速度计传感器,因为它的节能操作和无处不在的日常可穿戴设备。我们提出了基于C4.5分类算法的初步结果和见解,以推断不常见的GAs。随后,我们提出了一种新的基于变化点检测的混合分类方法,利用各种气体中出现的模式来检测和推断不常见的气体。基于从10个用户收集的真实数据轨迹的实验结果表明,与之前提出的纯基于分类的解决方案相比,该方法将GAs分类的准确率提高了23%以上。我们还注意到,基于加速度计传感器的耳环在识别不同类型的气体方面具有惊人的信息量和能效(高出2.3倍)。
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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