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Reasoning with smart objects’ affordance for personalized behavior monitoring in pervasive information systems

机译:智能对象的推理在普及信息系统中为个性化行为监测提供了可供选择

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The miniaturization of sensors and their integration in everyday appliances have opened the way for ecologically monitoring people’s behavior based on their interaction with smart objects. Thanks to behavior monitoring, mobile, and ubiquitous information systems in the areas of e-health, home automation, and smart cities are becoming more and more “smart,” being able to dynamically adapt themselves to the current users’ context and situation. However, human behavior is characterized by large variability due to individual habits, physical disabilities or cognitive impairment. This aspect makes behavior monitoring a challenging task. On the one side, execution variability makes it hard to acquire sufficiently large activity datasets needed by supervised learning methods. On the other side, being based on a strict definition of activities in terms of constituting simpler actions, existing knowledge-based frameworks fall short in adapting to the specific characteristics of the subject. Hence, the variability of activity execution by different subjects calls for personalized methods to capture human activities and interaction in smart spaces at a fine-grained level. In this paper, we address this challenge by proposing a novel hybrid reasoning framework to capture fine-grained interaction with smart objects considering the specific features of individuals. Our model has its roots in the well-founded psychological theory of affordances, i.e., those features of an object that naturally explain its possible uses and how it should be used. The core of the framework is the ontological model of smart objects affordance, expressed through the OWL?2 Web Ontology Language. Through a use case in pervasive healthcare, we show how our framework can be applied to personalized recognition of abnormal behaviors. In particular, we tackle a particularly challenging issue: how to recognize early behavioral symptoms of mild cognitive impairment in subjects with physical disabilities. Moreover, an extensive experimental evaluation with real-world datasets acquired from 24 subjects shows the effectiveness of our framework in recognizing human activities and fine-grained manipulative gestures in different pervasive computing environments.
机译:传感器的小型化及其在日常电器中的整合已经为生态监测了人们的行为,基于与智能对象的互动开辟了道路。由于对电子健康,家庭自动化和智能城市领域的行为监测,移动和无处不在的信息系统变得越来越“聪明”,能够动态地适应当前用户的背景和情况。然而,由于个体习惯,身体残疾或认知障碍,人类行为的特征是巨大的可变性。这方面使行为监测有挑战性的任务。在一方面,执行变化使得难以获得受监督学习方法所需的足够大的活动数据集。在另一边,基于在构成更简单的行动方面的严格定义,现有知识的框架在适应对象的特定特征方面缺乏。因此,不同主题的活动执行的可变性要求进行个性化方法,以捕捉人类活动和在细粒度的智能空间中的相互作用。在本文中,我们通过提出一种新的混合推理框架来解决与考虑个人特定特征的智能对象的细粒度互动来解决这一挑战。我们的模型在良好的心理学理论中具有它的根源,即一个物体的特征,自然地解释其可能的用途以及应该如何使用它。框架的核心是通过猫头鹰的智能物体提供的本体论模型,通过猫头鹰?2个网页本体语言。通过在普及医疗保健中的用例,我们展示了我们的框架如何适用于异常行为的个性化识别。特别是,我们解决了一个特别具有挑战性的问题:如何识别有身体残疾受试者的轻度认知障碍的早期行为症状。此外,从24个科目获得的实际数据集进行了广泛的实验评估,表明了我们框架在识别不同普遍的计算环境中识别人类活动和细粒度的操纵手势的效果。

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