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Hierarchical classification method based on selective learning of slacked hierarchy for activity recognition systems

机译:基于选择性层次学习的活动识别系统层次分类方法

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Physical activity recognition using wearable sensors has gained significant interest from researchers working in the field of ambient intelligence and human behavior analysis. The problem of multi-class classification is an important issue in the applications which naturally has more than two classes. A well-known strategy to convert a multi-class classification problem into binary sub-problems is the error-correcting output coding (ECOC) method. Since existing methods use a single classifier with ECOC without considering the dependency among multiple classifiers, it often fails to generalize the performance and parameters in a real-life application, where different numbers of devices, sensors and sampling rates are used. To address this problem, we propose a unique hierarchical classification model based on the combination of two base binary classifiers using selective learning of slacked hierarchy and integrating the training of binary classifiers into a unified objective function. Our method maps the multi-class classification problem to multi-level classification. A multi-tier voting scheme has been introduced to provide a final classification label at each level of the solicited model. The proposed method is evaluated on two publicly available datasets and compared with independent base classifiers. Furthermore, it has also been tested on real-life sensor readings for 3 different subjects to recognize four activities i.e. Walking, Standing, jogging and Sitting. The presented method uses same hierarchical levels and parameters to achieve better performance on all three datasets having different number of devices, sensors and sampling rates. The average accuracies on publicly available dataset and real-life sensor readings were recorded to be 95% and 85%, respectively. The experimental results validate the effectiveness and generality of the proposed method in terms of performance and parameters. (C) 2017 Elsevier Ltd. All rights reserved.
机译:使用可穿戴传感器的体育活动识别已引起环境智能和人类行为分析领域研究人员的极大兴趣。在具有两个以上类别的应用程序中,多类别分类问题是一个重要问题。将多类分类问题转换为二进制子问题的一种著名策略是纠错输出编码(ECOC)方法。由于现有方法将单个分类器与ECOC一起使用,而没有考虑多个分类器之间的依赖性,因此在使用不同数量的设备,传感器和采样率的实际应用中,它通常无法概括性能和参数。为了解决这个问题,我们提出了一个独特的层次分类模型,该模型基于两个基本二进制分类器的组合,使用松散层次的选择性学习并将二进制分类器的训练集成到一个统一的目标函数中。我们的方法将多分类问题映射到多分类。引入了多层投票方案,以在所请求模型的每个级别提供最终分类标签。所提出的方法在两个公开可用的数据集上进行了评估,并与独立的基础分类器进行了比较。此外,还对3个不同主题的真实传感器读数进行了测试,以识别四种活动,即步行,站立,慢跑和坐着。提出的方法使用相同的层次级别和参数,以在具有不同数量的设备,传感器和采样率的所有三个数据集上实现更好的性能。公开数据集和现实生活中的传感器读数的平均准确度分别记录为95%和85%。实验结果验证了该方法在性能和参数方面的有效性和普遍性。 (C)2017 Elsevier Ltd.保留所有权利。

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