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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Combining emerging patterns with random forest for complex activity recognition in smart homes
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Combining emerging patterns with random forest for complex activity recognition in smart homes

机译:将新兴模式与随机林结合起来进行智能家庭复杂活动识别

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摘要

New healthcare technologies are emerging with the increasing age of the society, where the development of smart homes for monitoring the elders' activities is in the center of them. Identifying the resident's activities in an apartment is an important module in such systems. Dense sensing approach aims to embed sensors in the environment to report the detected events continuously. The events are segmented and analyzed via classifiers to identify the corresponding activity. Although several methods were introduced in recent years for detecting simple activities, the recognition of complex ones requires more effort. Due to the different time duration and event density of each activity, finding the best size of the segments is one of the challenges in detecting the activity. Also, using appropriate classifiers that are capable of detecting simple and interleaved activities is the other issue. In this paper, we devised a two-phase approach called CARER (Complex Activity Recognition using Emerging patterns and Random forest). In the first phase, the emerging patterns are mined, and various features of the activities are extracted to build a model using the Random Forest technique. In the second phase, the sequences of events are segmented dynamically by considering their recency and sensor correlation. Then, the segments are analyzed by the generated model from the previous phase to recognize both simple and complex activities. We examined the performance of the devised approach using the CASAS dataset. To do this, first we investigated several classifiers. The outcome showed that the combination of emerging patterns and the random forest provide a higher degree of accuracy. Then, we compared CARER with the static window approach, which used Hidden Markov Model. To have a fair comparison, we replaced the dynamic segmentation module of CARER with the static one. The results showed more than 12% improvement in f-measure. Finally, we compared our work with Dynamic sensor se
机译:新的医疗保健技术正在随着社会年龄越来越多的情况,在监测长老活动中的智能家庭的发展是在他们的中心。确定居民在公寓中的活动是此类系统中的重要组成部分。密集的传感方法旨在嵌入环境中的传感器持续报告检测到的事件。通过分类器进行分段并分析事件以识别相应的活动。虽然近年来近年来推出了几种方法来检测简单的活动,但是对复杂的识别需要更多的努力。由于每个活动的不同时间和事件密度,找到段的最佳尺寸是检测活动的挑战之一。此外,使用能够检测简单和交错活动的适当分类器是另一个问题。在本文中,我们设计了一种称为护理人(使用新兴模式和随机林的复杂活动识别的两阶段方法)。在第一阶段中,开采新兴图案,提取活动的各种特征以使用随机林技术构建模型。在第二阶段,通过考虑其新值和传感器相关性来动态地分割事件序列。然后,由生成的模型从先前阶段分析段以识别简单和复杂的活动。我们检查了使用Casas DataSet的设计方法的性能。为此,首先我们调查了几个分类器。结果表明,新兴图案和随机森林的组合提供了更高程度的准确性。然后,我们将照顾者与静态窗口方法进行比较,它使用了隐马尔可夫模型。为了进行公平的比较,我们用静态1替换了护理人的动态分割模块。结果表明F措施的提高12%以上。最后,我们将我们的工作与动态传感器合作进行了比较

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