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[Author] Longfei CHEN(2hit)

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  • Hotspot Modeling of Hand-Machine Interaction Experiences from a Head-Mounted RGB-D Camera

    Longfei CHEN  Yuichi NAKAMURA  Kazuaki KONDO  Walterio MAYOL-CUEVAS  

     
    PAPER-Human-computer Interaction

      Pubricized:
    2018/11/12
      Vol:
    E102-D No:2
      Page(s):
    319-330

    This paper presents an approach to analyze and model tasks of machines being operated. The executions of the tasks were captured through egocentric vision. Each task was decomposed into a sequence of physical hand-machine interactions, which are described with touch-based hotspots and interaction patterns. Modeling the tasks was achieved by integrating the experiences of multiple experts and using a hidden Markov model (HMM). Here, we present the results of more than 70 recorded egocentric experiences of the operation of a sewing machine. Our methods show good potential for the detection of hand-machine interactions and modeling of machine operation tasks.

  • Integration of Experts' and Beginners' Machine Operation Experiences to Obtain a Detailed Task Model

    Longfei CHEN  Yuichi NAKAMURA  Kazuaki KONDO  Dima DAMEN  Walterio MAYOL-CUEVAS  

     
    PAPER-Human-computer Interaction

      Pubricized:
    2020/10/02
      Vol:
    E104-D No:1
      Page(s):
    152-161

    We propose a novel framework for integrating beginners' machine operational experiences with those of experts' to obtain a detailed task model. Beginners can provide valuable information for operation guidance and task design; for example, from the operations that are easy or difficult for them, the mistakes they make, and the strategy they tend to choose. However, beginners' experiences often vary widely and are difficult to integrate directly. Thus, we consider an operational experience as a sequence of hand-machine interactions at hotspots. Then, a few experts' experiences and a sufficient number of beginners' experiences are unified using two aggregation steps that align and integrate sequences of interactions. We applied our method to more than 40 experiences of a sewing task. The results demonstrate good potential for modeling and obtaining important properties of the task.