基于标记LDA的元素过程自动识别分析系统

Kentaro Mori, H. Nakajima, Yasuyo Kotake, Danni Wang, Y. Hata
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引用次数: 2

摘要

本文描述了一种元素过程的自动化分析方法。该方法利用有监督主题模型标记潜狄利克雷分配(L-LDA)从传感器数据中预测元素过程。L-LDA自动研究特征运动。我们不需要通过将L-LDA应用于运动分析来定义特征运动。传感器数据为双手运动传感器和工作空间压力传感器。通过阈值处理,利用统计确定的阈值将传感器获得的数值数据转换为单词数据。L-LDA的自动分析是利用单词数据进行的。通过评价实验证实,该方法的召回率在86.9%以上。
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Automated Analyzing System for Recognizing the Elemental Processes Based on the Labeled LDA
In this paper, we described an automated analyzing method for the elemental processes. This method predicted the elemental processes from the sensor data by using labeled latent Dirichlet allocation (L-LDA) that is supervised topic model. The L-LDA studies automatically characteristic motion. We do not need to define characteristic motion by applying the L-LDA to motion analysis. The sensor data are motion sensors of both hands and a pressure sensor of working space. Numerical data obtained from the sensors were converted into word data by the threshold process using statistically determined thresholds. The automated analysis by the L-LDA was conducted by using the word data. We confirmed that recall by the method was over 86.9% by the evaluation experiment.
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