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Evaluation of artificial intelligence techniques for the classification of different activities of daily living and falls

机译:对日常生活和跌倒不同活动分类的人工智能技术评价

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摘要

Automatic detection of falls is extremely important, especially in the remote monitoring of elderly people, and will become more and more critical in the future, given the constant increase in the number of older adults. Within this framework, this paper deals with the task of evaluating several artificial intelligence techniques to automatically distinguish between different activities of daily living (ADLs) and different types of falls. To do this, UniMiB SHAR, a publicly available data set containing instances of nine different ADLs and of eight kinds of falls, is considered. We take into account five different classes of classification algorithms, namely tree-based, discriminant-based, support vector machines, K-nearest neighbors, and ensemble mechanisms, and we consider several representatives for each of these classes. These are all the classes contained in the Classification Learner app contained in MATLAB, which serves as the computational basis for our experiments. As a result, we apply 22 different classification algorithms coming from artificial intelligence under a fivefold cross-validation learning strategy, with the aim to individuate which the most suitable is for this data set. The numerical results show that the algorithm with the highest classification accuracy is the ensemble based on subspace as the ensemble method and on KNN as learner type. This shows an accuracy equal to 86.0%. Its results are better than those in the other papers in the literature that face this specific 17-class problem.
机译:自动检测跌倒是极为重要的,特别是在远程监测老年人,并将在未来变得越来越关键,鉴于老年人的数量不断增加。在本框架内,本文涉及评估几种人工智能技术的任务,以自动区分日常生活(ADLS)和不同类型的跌倒。为此,考虑UNIMIB SHAR,考虑了包含九种不同ADL和八种跌幅的九种不同ADL的实例的公开数据集。我们考虑了五种不同类别的分类算法,即基于树的基于树,基于判别的,支持向量机,K-Collest邻居和集合机制,我们考虑了每个类别的几个代表。这些都是MATLAB中包含的分类学习者应用程序中包含的所有类,它用作我们的实验的计算基础。因此,我们在五倍交叉验证学习策略下应用了来自人工智能的22种不同的分类算法,旨在为这些数据集提供最适合的旨在为其分类。数值结果表明,具有最高分类精度的算法是基于子空间作为集合方法和KNN作为学习者类型的集合。这表明了等于86.0%的精度。它的结果比那些面临这个特定的17级问题的文献中的其他文件中的结果更好。

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