Abstract

We present an intention estimator algorithm that can deal with dynamic change of the environment in a man-machine system and will be able to be utilized for an autarkical human-assisting system. In the algorithm, state transition relation of intentions is formed using a self-organizing map (SOM) from the measured data of the operation and environmental variables with the reference intention sequence. The operational intention modes are identified by stochastic computation using a Bayesian particle filter with the trainedSOM. This method enables to omit the troublesome process to specify types of information which should be used to build the estimator. Applying the proposed method to the remote operation task, the estimator's behavior was analyzed, the pros and cons of the method were investigated, and ways for the improvement were discussed. As a result, it was confirmed that the estimator can identify the intention modes at 44–94 percent concordance ratios against normal intention modes whose periods can be found by about 70 percent of members of human analysts. On the other hand, it was found that human analysts' discrimination which was used as canonical data for validation differed depending on difference of intention modes. Specifically, an investigation of intentions pattern discriminated by eight analysts showed that the estimator could not identify the same modes that human analysts could not discriminate. And, in the analysis of the multiple different intentions, it was found that the estimator could identify the same type of intention modes to human-discriminated ones as well as 62–73 percent when the first and second dominant intention modes were considered.

Highlights

  • Estimation of human intention is quite practical for various applications such as assistance software [1], prediction of users’ requests on the internet [2], and marketing [3]

  • The intention discerned by a human analyst is described by z, and the estimated intention computed by the self-organizing map (SOM)-Bayes estimator is described as z

  • Lines show the transitions of intention modes from T/A-a ( (1)z) to transport and unloading (T/TU) ( (15)z)

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Summary

Introduction

Estimation of human intention is quite practical for various applications such as assistance software [1], prediction of users’ requests on the internet [2], and marketing [3]. We user needs familiarization with the use of the estimator’s function, for instance we implicitly select adequate candidates of keywords when we use some data-search system. Due to this issue, there are many gadgets requiring user efforts in the case of intention estimators and of other machines a machine has been developed to support humans basically

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