A-Wristocracy:基于腕带传感的深度学习,用于识别用户复杂活动

Praneeth Vepakomma, Debraj De, Sajal K. Das, S. Bhansali
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引用次数: 111

摘要

在这项工作中,我们提出了a - wristocracy,这是一个新颖的框架,用于识别人类用户(特别是老年人)的非常细粒度和复杂的家庭活动。我们设计的A-Wristocracy系统改进了使用可穿戴设备的最先进的家庭活动识别工作。这些工作大多能够检测粗粒度的adl(日常生活活动),但不能检测大量细粒度和复杂的adl(日常生活工具性活动)。这些也不能区分相似的活动,但在不同的背景下(如坐在地板上、坐在床上、坐在沙发上)。我们的解决方案有助于准确检测家庭adl / iadl和相关活动,这些对于远程老年人护理在跟踪他们的身体和认知能力方面都至关重要。通过基于深度学习的数据分析和利用腕带设备上的多模态传感,A-Wristocracy可以对大量细粒度和复杂的活动进行分类。它利用非常轻的附加基础设施(仅通过几个蓝牙信标)来实现最小的功能,用于粗略的位置上下文。A-Wristocracy通过排除可穿戴设备或基础设施上的摄像头/视频成像来保护直接用户隐私。分类过程包括从多模态可穿戴传感器组中提取实际特征集,然后采用基于深度学习的监督精细分类算法。我们从多个用户那里收集了详尽的基于家庭的adl和iadl数据。我们设计的分类器经过验证,能够识别非常细粒度的复杂22个日常活动(比使用可穿戴设备和无摄像头/视频的最先进作品检测到的6-12个活动要大得多),在两个不同的家庭环境中,两个用户的平均测试准确率高达90%或更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A-Wristocracy: Deep learning on wrist-worn sensing for recognition of user complex activities
In this work we present A-Wristocracy, a novel framework for recognizing very fine-grained and complex inhome activities of human users (particularly elderly people) with wrist-worn device sensing. Our designed A-Wristocracy system improves upon the state-of-the-art works on in-home activity recognition using wearables. These works are mostly able to detect coarse-grained ADLs (Activities of Daily Living) but not large number of fine-grained and complex IADLs (Instrumental Activities of Daily Living). These are also not able to distinguish similar activities but with different context (such as sit on floor vs. sit on bed vs. sit on sofa). Our solution helps accurate detection of in-home ADLs/ IADLs and contextual activities, which are all critically important for remote elderly care in tracking their physical and cognitive capabilities. A-Wristocracy makes it feasible to classify large number of fine-grained and complex activities, through Deep Learning based data analytics and exploiting multi-modal sensing on wrist-worn device. It exploits minimal functionality from very light additional infrastructure (through only few Bluetooth beacons), for coarse level location context. A-Wristocracy preserves direct user privacy by excluding camera/ video imaging on wearable or infrastructure. The classification procedure consists of practical feature set extraction from multi-modal wearable sensor suites, followed by Deep Learning based supervised fine-level classification algorithm. We have collected exhaustive home-based ADLs and IADLs data from multiple users. Our designed classifier is validated to be able to recognize very fine-grained complex 22 daily activities (much larger number than 6-12 activities detected by state-of-the-art works using wearable and no camera/ video) with high average test accuracies of 90% or more for two users in two different home environments.
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