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Centralized class specific dictionary learning for wearable sensors based physical activity recognition

机译:基于物理活动识别的可穿戴传感器的集中类别特定声音文章学习

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With recent progress in pervasive healthcare, physical activity recognition with wearable body sensors has become an important and challenging area in both research and industrial communities. Here, we address a novel technique for a sensor platform that performs physical activity recognition by leveraging a class specific regularizer term into the dictionary pair learning objective function. The proposed algorithm jointly learns a synthesis dictionary and an analysis dictionary in order to simultaneously perform signal representation and classification once the time-domain features have been extracted. Specifically, the class specific regularizer term ensures that the sparse codes belonging to the same class will be concentrated thereby proving beneficial for the classification stage. In order to develop a more practical approach, we employ a combination of an alternating direction method of multipliers and a l1 ? ls minimization method to approximately minimize the objective function. We validate the effectiveness of our proposed model by employing it on two activity recognition problem and an intensity estimation problem, both of which include a large number of physical activities. Experimental results demonstrate that classifiers built in this dictionary learning based framework outperforms state of art algorithms by using simple features, thereby achieving competitive results when compared with classical systems built upon features with prior knowledge.
机译:随着普遍医疗保健的最新进展,具有可穿戴体系传感器的身体活动识别已成为研究和工业社区的重要挑战性。这里,我们通过利用类特定规范器术语在字典对学习目标函数中来解决一种用于执行物理活动识别的传感器平台的新技术。该算法共同学习合成词典和分析词典,以便在提取时域特征一旦提取了一旦提取了时域特征就会执行信号表示和分类。具体地,类特定规范器术语确保了属于同一类的稀疏代码将集中,从而证明对分类阶段有益。为了开发更实用的方法,我们采用了乘法器和L1的交替方向方法的组合? LS最小化方法大致最小化目标函数。我们通过在两个活动识别问题和强度估计问题上使用它来验证我们提出的模型的有效性,这两者都包括大量的体力活动。实验结果表明,通过使用简单的特征,基于本文基于框架的基于文艺算法的框架占据了最新的框架的分类器,从而与具有先前知识的特征的经典系统相比,实现了竞争结果。

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