用于唯一活动识别的geneactive加速度计数据分类学习方法

Arindam Dutta, O. Ma, M. Buman, D. Bliss
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引用次数: 6

摘要

最近人们普遍强调锻炼对个人健康的好处,这就产生了对监测和分类人类活动的技术的需求。以往的研究表明,在各种数据集上应用各种分类和特征提取方法来识别独特的身体活动已经取得了可喜的结果。我们将学习技术应用于geneactive加速度计记录,以识别和监测广泛的日常活动。该数据集由92名参与者组成,年龄在20-65岁之间,进行25种独特的活动,包括流动和非流动活动。该算法识别了130个不同的时域和频域特征,并采用顺序前向选择算法选择最有效的特征。通过高斯混合模型(GMM)和隐马尔可夫模型(HMM)的两阶段分类,我们将具有相似特征的活动组合在一起。我们还展示了两个分类器之间的比较研究。使用HMM对10个独特活动进行分类的准确率为95.5%,对9个独特活动进行分类的准确率为89.7%。在二维特征空间中使用HMM获得了最有效的结果,它能够以90.12%的准确率对15个唯一的活动进行分类。
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Learning approach for classification of GENEActiv accelerometer data for unique activity identification
Recent popular emphasis on exercise for personal wellbeing has created a demand for techniques which monitor and classify human activities. Previous studies have shown promising results in applying various classification and feature extraction methods for identifying unique physical activities on various datasets. We apply learning techniques to GENEactiv accelerometer recordings to identify and monitor a wide range of daily activities. The dataset is composed of 92 participants, of ages 20-65, performing 25 unique activities, both ambulatory and non-ambulatory. The algorithm identified 130 different time and frequency domain features and selected the most efficient features with the sequential forward selection algorithm. With classification in two stages with both Gaussian mixture model (GMM) and hidden Markov model (HMM) we have combined the activities with similar features. We have also shown a comparative study between the two classifiers. We achieved an accuracy of 95.5% while classifying 10 unique activities with HMM and 89.7% while classifying 9. The most efficient result is obtained using HMM in 2-D feature space, where it is able to classify 15 unique activities at an accuracy of 90.12%.
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