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Recognition of flow in everyday life using sensor agent robot with laser range finder

机译:使用带有激光测距仪的传感器代理机器人识别日常生活中的流量

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In the present paper, we suggest an algorithm for a sensor agent robot with a laser range finder to recognize the flows of residents in the living spaces in order to achieve flow recognition in the living spaces, recognition of the number of people in spaces, and the classification of the flows. House reform is or will be demanded to prolong the lifetime of the home. Adaption for the individuals is needed for our aging society which is growing at a rapid pace. Home autonomous mobile robots will become popular in the future for aged people to assist them in various situations. Therefore we have to collect various type of information of human and living spaces. However, a penetration in personal privacy must be avoided. It is essential to recognize flows in everyday life in order to assist house reforms and aging societies in terms of adaption for the individuals. With background subtraction, extra noise removal, and the clustering based k-means method, we got an average accuracy of more than 90% from the behavior from 1 to 3 persons, and also confirmed the reliability of our system no matter the position of the sensor. Our system can take advantages from autonomous mobile robots and protect the personal privacy. It hints at a generalization of flow recognition methods in the living spaces.
机译:在本文中,我们提出了一种传感器代理机器人的算法,该传感器代理机器人具有激光测距仪,以识别居住空间中的居民流,从而实现居住空间中的流识别,空间中人数的识别以及流的分类。要求或将要求进行房屋改革以延长房屋的使用寿命。快速发展的老龄化社会需要适应个人。家用自主移动机器人在将来将变得越来越流行,老年人可以在各种情况下为他们提供帮助。因此,我们必须收集有关人类和生活空间的各种类型的信息。但是,必须避免渗透到个人隐私中。必须认识到日常生活中的流动,以便在适应个人方面帮助房屋改革和老龄化社会。通过背景减除,额外的噪声去除以及基于聚类的k均值方法,我们从1到3个人的行为获得了90%以上的平均准确度,并且无论系统的位置如何,都证实了我们系统的可靠性。传感器。我们的系统可以利用自主移动机器人的优势,并保护个人隐私。它暗示了居住空间中流识别方法的一般化。

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