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Application of a novel feature selector for human activity recognition based on inertial monitored data

机译:基于惯性监测数据的新型特征选择器在人类活动识别中的应用

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The last technological advances in wearable sensors and machine learning are allowing for a new generation of human monitoring techniques, with an especial interest for the analysis of human biomechanics and activity recognition. In this paper, an application of intelligent systems to solve the problem of daily physical activity recognition is presented. Taking into account the importance of data featuring and the selection of the most important features for subsequent pattern recognition stage, a new feature selection methodology based on a filter technique via a couple of two statistical criteria is presented. Satisfactory accuracy rates are achieved by using support vector machines especially for preprocessed data, with remarkable accuracy and applicability in the case of the wrist location.
机译:可穿戴式传感器和机器学习技术的最新技术进步是新一代的人类监测技术,尤其是对人类生物力学分析和活动识别的关注。本文提出了一种智能系统在解决日常体育活动识别中的应用。考虑到数据特征的重要性以及对于后续模式识别阶段的最重要特征的选择,提出了一种基于过滤技术并通过两个统计标准对的新特征选择方法。通过使用支持向量机(特别是用于预处理数据)可以达到令人满意的准确率,在腕部定位的情况下具有显着的准确性和适用性。

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