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首页> 外文期刊>Advances in human-computer interaction >Estimation Algorithm of Machine Operational Intention by Bayes Filtering with Self-Organizing Map
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Estimation Algorithm of Machine Operational Intention by Bayes Filtering with Self-Organizing Map

机译:基于自组织映射的贝叶斯滤波的机器运行意图估计算法

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摘要

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 trained SOM. 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.
机译:我们提出了一种意图估计器算法,该算法可以处理人机系统中环境的动态变化,并将能够用于自给自足的人类辅助系统。在该算法中,使用自组织映射图(SOM)根据具有参考意图序列的操作和环境变量的测量数据来形成意图的状态转换关系。使用具有训练过的SOM的贝叶斯粒子滤波器通过随机计算来识别操作意图模式。此方法可以省去麻烦的过程,以指定应用于构建估算器的信息类型。将所提出的方法应用于远程操作任务,分析了估计器的行为,研究了该方法的优缺点,并讨论了改进方法。结果,证实了估计器可以以44-94%的一致性比率识别意图模式,而正常意图模式的周期可以由大约70%的人类分析人员发现。另一方面,发现根据意图模式的不同,用作分析标准数据的人类分析家的歧视也有所不同。具体来说,由八位分析师辨别的意图模式调查显示,估算者无法确定人类分析师无法辨别的意图模式。并且,在对多种不同意图的分析中,发现在考虑第一和第二主导意图模式时,估计器可以识别出与人类歧视模式相同的意图模式,以及62-73%的人。

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  • 来源
    《Advances in human-computer interaction》 |2012年第2012期|2.1-2.20|共20页
  • 作者单位

    School of Science and Technology for Future Life, Department of Robotics and Mechatronics, Tokyo Denki University,2-2 Kanda-Nishiki-cho, Chiyoda-ku, Tokyo 101-8457, Japan;

    Tokyo Metropolitan University, 1-1 Minami-Osawa, Hachioji-Shi, Tokyo 192-0397, Japan;

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