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Using Markov Logic Network for On-Line Activity Recognition from Non-visual Home Automation Sensors

机译:使用Markov逻辑网络从非可视家庭自动化传感器进行在线活动识别

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This paper presents the application of Markov Logic Net-works(MLN) for the the recognition of Activities of Daily Living (ADL) in a smart home. We describe a procedure that uses raw data from non visual and non wearable sensors in order to create a classification model leveraging logic formal representation and probabilistic inference. SVM and Naive Bayes methods were used as baselines to compare the performance of our implementation, as they have proved to be highly efficient in classification tasks. The evaluation was carried out on a real smart home where 21 participants performed ADLs. Results show not only the appreciable capacities of MLN as a classifier, but also its potential to be easily integrable into a formal knowledge representation framework.
机译:本文介绍了马尔可夫逻辑网络(MLN)在智能家居中的日常生活活动(ADL)识别中的应用。我们描述了一个过程,该过程使用来自非视觉和非穿戴式传感器的原始数据来创建利用逻辑形式表示和概率推断的分类模型。支持向量机和朴素贝叶斯方法被用作比较我们实施性能的基准,因为事实证明它们在分类任务中非常高效。评估是在一个真正的智能家居中进行的,其中有21位参与者执行了ADL。结果不仅显示了MLN作为分类器的显着能力,而且还显示了它很容易集成到正式知识表示框架中的潜力。

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