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Using Acceleration Measurements For Activity Recognition: An Effective Learning Algorithm For Constructing Neural Classifiers

机译:使用加速度测量值进行活动识别:构造神经分类器的有效学习算法

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This paper presents a systematic design approach for constructing neural classifiers that are capable of classifying human activities using a triaxial accelerometer. The philosophy of our design approach is to apply a divide-and-conquer strategy that separates dynamic activities from static activities preliminarily and recognizes these two different types of activities separately. Since multilayer neural networks can generate complex discriminating surfaces for recognition problems, we adopt neural networks as the classifiers for activity recognition. An effective feature subset selection approach has been developed to determine significant feature subsets and compact classifier structures with satisfactory accuracy. Experimental results have successfully validated the effectiveness of the proposed recognition scheme.
机译:本文提出了一种系统的设计方法,用于构造能够使用三轴加速度计对人类活动进行分类的神经分类器。我们设计方法的理念是采用分而治之的策略,该策略将动态活动与静态活动预先分开,并分别识别这两种不同类型的活动。由于多层神经网络可以为识别问题生成复杂的区分表面,因此我们采用神经网络作为活动识别的分类器。已经开发出一种有效的特征子集选择方法,以令人满意的精度确定重要的特征子集和紧凑的分类器结构。实验结果已经成功地验证了所提出的识别方案的有效性。

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