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Recognition of Human Activities Using Depth Images of Kinect for Biofied Building

机译:利用Kinect深度图像识别生物活动建筑物的人类活动

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These days, various functions in the living spaces are needed because of an aging society, promotion of energy conservation, and diversification of lifestyles. To meet this requirement, we propose "Biofied Building". The "Biofied Building" is the system learnt from living beings. The various information is accumulated in a database using small sensor agent robots as a key function of this system to control the living spaces. Among the various kinds of information about the living spaces, especially human activities can be triggers for lighting or air conditioning control. By doing so, customized space is possible. Human activities are divided into two groups, the activities consisting of single behavior and the activities consisting of multiple behaviors. For example, "standing up" or "sitting down" consists of a single behavior. These activities are accompanied by large motions. On the other hand "eating" consists of several behaviors, holding the chopsticks, catching the food, putting them in the mouth, and so on. These are continuous motions. Considering the characteristics of two types of human activities, we individually, use two methods, R transformation and variance. In this paper, we focus on the two different types of human activities, and propose the two methods of human activity recognition methods for construction of the database of living space for "Biofied Building". Finally, we compare the results of both methods.
机译:如今,由于社会的老龄化,节能的发展以及生活方式的多样化,人们需要在居住空间中实现各种功能。为了满足此要求,我们建议使用“生物建筑”。 “生物建筑”是从生物中学到的系统。使用小型传感器代理机器人将各种信息存储在数据库中,这是该系统控制居住空间的关键功能。在有关居住空间的各种信息中,尤其是人类活动可能是照明或空调控制的触发器。这样,可以定制空间。人类活动分为两类,由单一行为组成的活动和由多种行为组成的活动。例如,“站起来”或“坐下来”由单个行为组成。这些活动伴随着大动作。另一方面,“进食”包括以下几种行为:握住筷子,抓食物,将食物放入口中,等等。这些是连续的动作。考虑到两种人类活动的特征,我们分别使用两种方法:R变换和方差。在本文中,我们着眼于两种不同类型的人类活动,并提出了两种人类活动识别方法来构建“生物建筑”生活空间数据库。最后,我们比较两种方法的结果。

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