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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Feature Selection Algorithm Considering Trial and Individual Differences for Machine Learning of Human Activity Recognition
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Feature Selection Algorithm Considering Trial and Individual Differences for Machine Learning of Human Activity Recognition

机译:考虑试验和个人活动识别机器学习的特征选择算法

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摘要

In recent years, many studies have been performed on the automatic classification of human body motions based on inertia sensor data using a combination of inertia sensors and machine learning; training data is necessary where sensor data and human body motions correspond to one another. It can be difficult to conduct experiments involving a large number of subjects over an extended time period, because of concern for the fatigue or injury of subjects. Many studies, therefore, allow a small number of subjects to perform repeated body motions subject to classification, to acquire data on which to build training data. Any classifiers constructed using such training data will have some problems associated with generalization errors caused by individual and trial differences. In order to suppress such generalization errors, feature spaces must be obtained that are less likely to generate generalization errors due to individual and trial differences. To obtain such feature spaces, we require indices to evaluate the likelihood of the feature spaces generating generalization errors due to individual and trial errors. This paper, therefore, aims to devise such evaluation indices from the perspectives. The evaluation indices we propose in this paper can be obtained by first constructing acquired data probability distributions that represent individual and trial differences, and then using such probability distributions to calculate any risks of generating generalization errors. We have verified the effectiveness of the proposed evaluation method by applying it to sensor data for butterfly and breaststroke swimming. For the purpose of comparison, we have also applied a few available existing evaluation methods. We have constructed classifiers for butterfly and breaststroke swimming by applying a support vector machine to the feature spaces obtained by the proposed and existing methods. Based on the accuracy verification we conducted with test data, we found that the proposed method produced significantly higher F-measure than the existing methods. This proves that the use of the proposed evaluation indices enables us to obtain a feature space that is less likely to generate generalization errors due to individual and trial differences.
机译:近年来,在使用惯性传感器和机器学习的组合的基础上,已经基于惯性传感器数据自动分类人体运动的自动分类;传感器数据和人体运动彼此相对应的培训数据是必要的。由于对受试者的疲劳或伤害令,难以在延长的时间内进行涉及大量受试者的实验。因此,许多研究允许少量受试者执行经过分类的重复的身体运动,以获取要构建培训数据的数据。使用这种训练数据构建的任何分类器都会对由个人和试验差异引起的泛化误差有一些问题。为了抑制这种泛化误差,必须获得特征空间,这不太可能由于个体和试验差异而产生泛化误差。为了获得此类特征空间,我们需要索引来评估由于个体和试验错误而产生泛化误差的特征空间的可能性。因此,本文旨在从视角下设计这种评估指标。我们提出本文提出的评估指标可以通过首先构建代表个人和试验差异的获取数据概率分布来获得,然后使用这种概率分布来计算产生泛化误差的任何风险。我们通过将其应用于蝴蝶和蛙泳游泳的传感器数据来验证了所提出的评估方法的有效性。为了比较的目的,我们还应用了一些现有的现有评估方法。通过将支持向量机应用于由所提出的方法获得的功能空间,我们构建了蝴蝶和蛙泳游泳的分类器。根据我们用测试数据进行的精度验证,我们发现所提出的方法比现有方法显着更高的F测量。这证明了拟议的评估指标的使用使我们能够获得由于个人和试验差异而产生泛化误差的特征空间。

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