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A Domain Knowledge-Based Solution for Human Activity Recognition: The UJA Dataset Analysis

机译:基于领域知识的人类活动识别解决方案:UJA数据集分析

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摘要

Detecting activities of daily living (ADL) allows for rich inference about user behavior, which can be of use in the care of for example, elderly people, chronic diseases, and psychological conditions. This paper proposes a domain knowledge-based solution for detecting 24 different ADLs in the UJA dataset. The solution is inspired by a Finite State Machine and performs activity recognition unobtrusively using only binary sensors. Each day in the dataset is segmented into: morning, day, evening in order to facilitate the inference from the sensors. The model performs the ADL recognition in two steps. The first step is to detect the sequence of activities in a given event stream of binary sensors, and the second step is to assign a starting and ending times for each of detected activities. Our proposed model achieved an accuracy of 81.3% using only a very small amount of operations, making it an interesting approach for resource-constrained devices that are common in smart environments. It should be noted, however, that the model can end up in faulty states which could cause a series of mis-classifications before the model is returned to the true state.
机译:检测日常生活活动(ADL)可以对用户的行为进行丰富的推断,例如可以用于照顾老年人,慢性病和心理疾病。本文提出了一种基于领域知识的解决方案,用于检测UJA数据集中的24种不同的ADL。该解决方案受到有限状态机的启发,仅使用二进制传感器即可轻松执行活动识别。数据集中的每一天都分为:上午,白天,晚上,以便于传感器进行推断。该模型分两个步骤执行ADL识别。第一步是检测二进制传感器给定事件流中的活动序列,第二步是为每个检测到的活动分配开始时间和结束时间。我们提出的模型仅使用少量操作即可达到81.3%的精度,这使其成为在智能环境中常见的资源受限设备的一种有趣方法。但是,应该注意的是,模型可能最终处于错误状态,这可能会导致一系列错误分类,然后模型才能返回到真实状态。

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