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Augmented feature-state sensors in human activity recognition

机译:在人类活动识别中增强特征状态传感器

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Nowadays, Human Activity Recognition (HAR) has gain a lot of interest because of demand growth in many applications particularly in smart homes as a fundamental task. This problem is typically addressed as a supervised learning problem with the goal of learning the mapping of extracted related features out of sensors data to the underlying human activities. Most of the proposed methods for HAR do not consider important information such as time domain features explicitly for activity modeling. In this paper, Augmented Feature-StAte (Statistical-Activity context) Sensors (AFSSs)are proposed to incorporate combination of important statistical features and activity context information. To evaluate the proposed AFSSs, they are applied in four benchmark and popular probabilistic graphical activity recognition algorithms including Na?ve Bayesian classifiers (nBCs), Hidden Markov Models (HMMs), Hidden Semi Markov Models (HSMMs) and Linear-Chain Conditional Random Fields (LCCRFs). The experiments are performed on three well-known and real-world datasets in this field. The results show that the proposed AFSSs improve the classification performance particularly in terms of Fl-Score, accuracy and robustness.
机译:如今,人类活动识别(HAR)由于许多应用中的需求增长,特别是在智能家庭中作为基本任务的需求增长。该问题通常被称为监督学习问题,其目标是学习从传感器数据中提取的相关特征的映射到底层的人类活动。对于HAR的大多数方法,不考虑重要信息,例如用于活动建模的时域特征。在本文中,提出了增强特征状态(统计活动上下文)传感器(AFSS)以结合重要统计特征和活动上下文信息的组合。为了评估所提出的AFSS,它们应用于四个基准和流行的概率图形活动识别算法,包括NA ve贝叶斯分类器(NBCS),隐藏的马尔可夫模型(HMMS),隐藏半马尔可夫模型(HSMMS)和线性链条条件随机字段(lccrfs)。该实验是在这一领域的三个众所周知和真实世界数据集上进行的。结果表明,拟议的AFSSS特别是在流程,准确性和鲁棒性方面提高分类性能。

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