Attal Ferhat, Mohammed Samer, Dedabrishvili Mariam, Chamroukhi Faicel, Oukhellou Latifa, Amirat Yacine
Laboratory of Images, Signals and Intelligent Systems (LISSI), University of Paris-Est Créteil (UPEC), 122 rue Paul Armangot, Vitry-Sur-Seine 94400, France.
Laboratory of Information Science and Systems (LSIS, CNRS-UMR7296), University of Toulon, Bâtiment R, BP 20132, La Garde Cedex 83957, France.
Sensors (Basel). 2015 Dec 11;15(12):31314-38. doi: 10.3390/s151229858.
This paper presents a review of different classification techniques used to recognize human activities from wearable inertial sensor data. Three inertial sensor units were used in this study and were worn by healthy subjects at key points of upper/lower body limbs (chest, right thigh and left ankle). Three main steps describe the activity recognition process: sensors' placement, data pre-processing and data classification. Four supervised classification techniques namely, k-Nearest Neighbor (k-NN), Support Vector Machines (SVM), Gaussian Mixture Models (GMM), and Random Forest (RF) as well as three unsupervised classification techniques namely, k-Means, Gaussian mixture models (GMM) and Hidden Markov Model (HMM), are compared in terms of correct classification rate, F-measure, recall, precision, and specificity. Raw data and extracted features are used separately as inputs of each classifier. The feature selection is performed using a wrapper approach based on the RF algorithm. Based on our experiments, the results obtained show that the k-NN classifier provides the best performance compared to other supervised classification algorithms, whereas the HMM classifier is the one that gives the best results among unsupervised classification algorithms. This comparison highlights which approach gives better performance in both supervised and unsupervised contexts. It should be noted that the obtained results are limited to the context of this study, which concerns the classification of the main daily living human activities using three wearable accelerometers placed at the chest, right shank and left ankle of the subject.
本文综述了用于从可穿戴惯性传感器数据中识别人类活动的不同分类技术。本研究使用了三个惯性传感器单元,由健康受试者佩戴在上/下肢的关键点(胸部、右大腿和左脚踝)。活动识别过程主要包括三个步骤:传感器放置、数据预处理和数据分类。比较了四种监督分类技术,即k近邻(k-NN)、支持向量机(SVM)、高斯混合模型(GMM)和随机森林(RF),以及三种无监督分类技术,即k均值、高斯混合模型(GMM)和隐马尔可夫模型(HMM)在正确分类率、F值、召回率、精确率和特异性方面的表现。原始数据和提取的特征分别用作每个分类器的输入。特征选择使用基于RF算法的包装法进行。基于我们的实验,结果表明,与其他监督分类算法相比,k-NN分类器性能最佳,而在无监督分类算法中,HMM分类器的结果最佳。这种比较突出了哪种方法在监督和无监督环境中表现更好。需要注意的是,所获得的结果仅限于本研究的背景,该研究涉及使用放置在受试者胸部、右小腿和左脚踝处的三个可穿戴加速度计对人类主要日常活动进行分类。