Automated Analyzing System for Recognizing the Elemental Processes Based on the Labeled LDA

2019 International Conference on Machine Learning and Cybernetics (ICMLC)(2019)

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摘要
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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关键词
Elemental processes,Labeled latent dirichlet allocation,Manufacturing industries,Productivity,Therblig analysis
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