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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ACTIVITY RECOGNITION FOR AMBIENT SENSING DATA AND RULE BASED ANOMALY DETECTION
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ACTIVITY RECOGNITION FOR AMBIENT SENSING DATA AND RULE BASED ANOMALY DETECTION

机译:环境传感数据和基于规则的异常检测的活动识别

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After a brief look at the smart home, we conclude that to have a smart home, and it is necessary to have an intelligent management center. In this article, We have tried to make it possible for the smart home management center to be able to detect the presence of an abnormal state in the behavior of someone who lives in the house. In the proposed method, the daily algorithm examines the rate of changes of a person and provides a number which is henceforth called NNC (Number of normal changes) based on the person’s behavioral changes. We achieve the NNC number using a machine learning algorithm and performing a series of several simple statistical and mathematical calculations. NNC is a number that shows abnormal changes in residents’ behaviors in a smart home, i.e., this number is a small number for a regular person with constant planning and for a person who may not have any fixed principles and regular in personal life is a big number.To increase our accuracy in calculating NNC, we review all common machine learning algorithms and after tests we choose the decision tree because of its higher accuracy and speed and finally, NNC number is obtained by combining the Decision Tree algorithm with statistical and mathematical methods. In this method, we present a set of states and information obtained from the sensors along with the activities performed by the occupant of the house over a period of several days to the proposed algorithm. and the method ahead generates the main NNC number for those days for anyone living in a smart home. To generate this main NNC, we calculate each person’s daily NNC. That means we have daily NNCs for each person (based on his/her behaviors on that day) and the main NNC is the average of these daily NNC. We chose ARAS dataset (Human Activity Datasets in Multiple Homes with Multiple Residents) to implement our method and after tests and replications on the ARAS dataset, and to find anomalies in each person’s behavior in a day, we compare the main (average) NNC with that person’s daily NNC on that day. Finally, we can say, if the main NNC changes more than 30%, there is a possibility of an abnormality. and if the NNC changes more than 60% percent, we can say that an abnormal state or an uncommon event happened that day, and a declaration of an abnormal state will be issued to the resident of the house.
机译:在简要看看智能家之家后,我们得出结论,拥有智能家园,有必要拥有智能的管理中心。在本文中,我们试图使智能家庭管理中心能够能够检测存在于住宅中的人的行为中的异常状态。在该方法中,日常算法检查人的变化率,并提供了一个名为NNC(正常变化数)的数字,基于该人的行为变化。我们使用机器学习算法实现NNC号码,并执行一系列几种简单的统计和数学计算。 NNC是一个数字,它在智能家居中显示居民行为的异常变化,即,这个数字是一个常规规划的普通人的少数,并且对于可能没有任何固定原则和个人生活中的常规的人是一个大数字。要提高计算NNC的准确性,我们审查了所有公共机器学习算法和测试后我们选择决策树,因为它更高的精度和速度,最后,通过将决策树算法与统计和数学组合来获得NNC编号方法。在该方法中,我们提出了一组状态和从传感器获得的信息以及由房屋的乘员在几天内到所提出的算法的活动。前方的方法为那些生活在智能家居中的人的日子产生主要的NNC号码。要生成这个主要的NNC,我们计算每个人的每日NNC。这意味着我们为每个人每日NNC(基于他/她当天的行为),主要的NNC是这些每日NNC的平均值。我们选择了ARAS DataSet(多个家庭中的人为活动数据集)来实现我们的方法和在ARAS数据集上的测试和复制,并在一天内找到每个人的行为中的异常,我们比较主要(平均)NNC那一天那天的每日NNC。最后,我们可以说,如果主要的NNC变化超过30%,有可能异常。如果NNC变化超过60%以上,我们可以说那一天发生异常状态或罕见的事件,并且将向房屋居民发出异常国家的声明。

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