Faculty of Computing and Engineering Sciences, Shaheed Zulfikar Ali Bhutto Institute of Science and Technology (SZABIST), Islamabad 44000, Pakistan.
Sensors (Basel). 2019 Apr 3;19(7):1613. doi: 10.3390/s19071613.
Wireless Sensor Network (WSN) based smart homes are proving to be an ideal candidate to provide better healthcare facilities to elderly people in their living areas. Several currently proposed techniques have implementation and usage complexities (such as wearable devices and the charging of these devices) which make these proposed techniques less acceptable for elderly people, while the behavioral analysis based on visual techniques lacks privacy. In this paper, a context-aware accurate wellness determination (CAAWD) model for elderly people is presented, where behavior monitoring information is extracted by using simple sensor nodes attached to household objects and appliances for the analysis of daily, frequent behavior patterns of elderly people in a simple and non-obtrusive manner. A contextual data extraction algorithm (CDEA) is proposed for the generation of contextually comprehensive behavior-training instances for accurate wellness classification. The CDEA presents an activity's spatial-temporal information along with behavioral contextual correlation aspects (such as the object/appliance of usage and sub-activities of an activity) which are vital for accurate wellness analysis and determination. As a result, the classifier is trained in a more logical manner in the context of behavior parameters which are more relevant for wellness determination. The frequent behavioral patterns are classified using the lazy associative classifier (LAC) for wellness determination. The associative nature of LAC helps to integrate spatial-temporal and related contextual attributes (provided by CDEA) of elderly behavior to generate behavior-focused classification rules. Similarly, LAC provides high accuracy with less training time of the classifier, includes minimum-support behavior patterns, and selects highly accurate classification rules for the classification of a test instance. CAAWD further introduces the ability to contextually validate the authenticity of the already classified instance by taking behavioral contextual information (of the elderly person) from the caregiver. Due to the consideration of spatial-temporal behavior contextual attributes, the use of an efficient classifier, and the ability to contextually validate the classified instances, it has been observed that the CAAWD model out-performs currently proposed techniques in terms of accuracy, precision, and f-measure.
基于无线传感器网络 (WSN) 的智能家居被证明是为居住在其生活区域的老年人提供更好医疗设施的理想选择。目前提出的一些技术具有实施和使用的复杂性(例如可穿戴设备以及这些设备的充电),这使得这些技术不太受老年人的欢迎,而基于视觉技术的行为分析则缺乏隐私。在本文中,提出了一种面向老年人的上下文感知准确健康确定 (CAAWD) 模型,通过使用简单的传感器节点来提取行为监测信息,这些传感器节点附在家用物品和电器上,以简单且不引人注目的方式分析老年人的日常、频繁行为模式。提出了一种上下文数据提取算法 (CDEA),用于生成上下文全面的行为训练实例,以进行准确的健康分类。CDEA 呈现了活动的时空信息以及行为上下文相关方面(例如使用的对象/设备和活动的子活动),这些对于准确的健康分析和确定至关重要。结果,分类器在更相关的行为参数上下文中以更合乎逻辑的方式进行训练,这些参数对于健康确定更为重要。使用惰性关联分类器 (LAC) 对频繁的行为模式进行分类,以确定健康状况。LAC 的关联性质有助于生成以行为为中心的分类规则,将老年人行为的时空和相关上下文属性(由 CDEA 提供)集成在一起。同样,LAC 提供了高精度,分类器的训练时间较少,包括最小支持行为模式,并为测试实例的分类选择高精度的分类规则。CAAWD 进一步引入了通过从护理人员那里获取老年人的行为上下文信息(上下文信息)来验证已经分类实例的真实性的能力。由于考虑了时空行为上下文属性、使用高效的分类器以及能够上下文验证分类实例,因此观察到 CAAWD 模型在准确性、精度和 F 度量方面优于目前提出的技术。