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Anomaly detection in smart houses: Monitoring elderly daily behavior for fall detecting

机译:智能房屋中的异常检测:监控老年人的日常行为以进行跌倒检测

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Smart Houses and Internet of Things (IoT) are two present tendencies in our days. Due to these technologies, the existent types of equipment in a smart house (sensors, thermostats, and video cams) allow us to analyze and collect data from a person's daily activities and use it in the field of anomaly detection. Therefore, noninvasive monitoring techniques can be applied to people's residences. When focusing on the elderly population, this type of approach can be used to detect and report a fall, decreasing the costs of monitoring these individuals. This paper uses images from a Microsoft Kinect cam, accelerometers' data, digital image processing and computer vision techniques to make a comparative study between different supervised classifiers and statistic approaches when they are being used in the fall detection problem. The results show that some of the tested classifiers are efficient in this task, reaching an accuracy of 96.67% and 98.79%.
机译:智能房屋和物联网(IoT)是当今时代的两种趋势。由于这些技术,智能房屋中现有的设备类型(传感器,恒温器和视频摄像机)使我们能够分析和收集来自人的日常活动的数据,并将其用于异常检测领域。因此,无创监测技术可以应用于人们的住所。当关注老年人群时,可以使用这种方法来检测并报告跌倒情况,从而降低了监视这些人的成本。本文使用Microsoft Kinect凸轮中的图像,加速度计的数据,数字图像处理和计算机视觉技术,对当用于跌倒检测问题中的不同监督分类器和统计方法之间进行比较研究。结果表明,一些经过测试的分类器在此任务中是有效的,准确度达到96.67%和98.79%。

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