Fahad Labiba Gillani, Tahir Syed Fahad
Intelligent Knowledge Mining and Analytics Lab, Department of Computer Science, National University of Computer and Emerging Sciences, Islamabad, Pakistan.
Department of Computer Science, Faculty of Computing & Artificial Intelligence, Air University, Islamabad, Pakistan.
J Ambient Intell Humaniz Comput. 2021;12(2):2355-2364. doi: 10.1007/s12652-020-02348-6. Epub 2020 Jul 22.
Recognition of activities, such as preparing meal or watching TV, performed by a smart home resident, can promote the independent living of elderly in a safe and comfortable environment of their own homes, for an extended period of time. Different activities performed at the same location have commonalities resulting in less inter-class variations; while the same activity performed multiple times, or by multiple residents, varies in its execution resulting in high intra-class variations. We propose a Local Feature Weighting approach (LFW) that assigns weights based on both inter-class and intra-class importance of a feature in an activity. Multiple sensors are deployed at different locations in a smart home to gather information. We exploit the obtained information, such as frequency and duration of activation of sensors, and the total sensors in an activity for feature weighting. The weights for the same features vary among activities, since a feature may have more importance for one activity but less for the other. For the classification, we exploit the two variants of K-Nearest Neighbors (KNN): Evidence Theoretic KNN (ETKNN) and Fuzzy KNN (FKNN). The evaluation of the proposed approach on three datasets, from CASAS smart home project, demonstrates its ability in the correct recognition of activities compared to the existing approaches.
识别智能家居居住者进行的活动,如准备饭菜或看电视,可以在老年人自己家中安全舒适的环境中,长期促进他们的独立生活。在同一地点进行的不同活动具有共性,导致类间差异较小;而同一活动由多人多次执行时,其执行方式会有所不同,导致类内差异较大。我们提出了一种局部特征加权方法(LFW),该方法根据活动中一个特征的类间和类内重要性来分配权重。在智能家居的不同位置部署多个传感器以收集信息。我们利用获得的信息,如传感器激活的频率和持续时间,以及活动中的总传感器数量来进行特征加权。同一特征的权重在不同活动中会有所不同,因为一个特征对一种活动可能更重要,而对另一种活动则不太重要。对于分类,我们采用了K近邻(KNN)的两种变体:证据理论K近邻(ETKNN)和模糊K近邻(FKNN)。在来自CASAS智能家居项目的三个数据集上对所提出方法的评估表明,与现有方法相比,它能够正确识别活动。