• Title/Summary/Keyword: RAMSIS

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Evaluation of Predicted Driving Postures in RAMSIS Digital Human Model Simulation (Digital Human Model Simulation을 위한 RAMSIS 추정 운전자세의 정합성 평가 및 개선)

  • Park, Jang-Woon;Jung, Ki-Hyo;Chang, Joon-Ho;Kwon, Jeong-Ung;You, Hee-Cheon
    • IE interfaces
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    • v.23 no.2
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    • pp.100-107
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    • 2010
  • For proper ergonomic evaluation using a digital human model simulation (DHMS) system such as $RAMSIS^{(R)}$, the postures of humanoids for designated tasks need to be predicted accurately. The present study (1) evaluated the accuracy of driving postures of humanoids predicted by RAMSIS, (2) proposed a method to improve its accuracy, and (3) examined the effectiveness of the proposed method. The driving postures of 12 participants in a seating buck were measured by a motion capture system and compared with their corresponding postures predicted by RAMSIS. Significant discrepancies ($8.7^{\circ}$ to $74.9^{\circ}$) between predicted and measured postures were observed for different body parts and driving tasks. Two methods (constraints addition and user-defined posture) were proposed and their effects on posture estimation accuracy were examined. Of the two proposed methods, the user-defined posture method was found preferred, reducing posture estimation errors by 11.5% to 84.9%. Both the posture prediction accuracy assessment protocol and user-defined posture method would be of use for practitioners to improve the accuracy of predicted postures of humanoids in virtual environments.

Development of a Distributed Representative Human Model Generation and Analysis System for Multiple-Size Product Design

  • Lee, Baek-Hee;Jung, Ki-Hyo;You, Hee-Cheon
    • Journal of the Ergonomics Society of Korea
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    • v.30 no.5
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    • pp.683-688
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    • 2011
  • Objective: The aim of this study is to develop a distributed representative human model(DRHM) generation and analysis system. Background: DRHMs are used for a product with multiple-size categories such as clothing and shoes. It is not easy for a product designer to explore an optimal sizing system by applying various distributed methods because of their complexity and time demand. Method: Studies related to DRHM generation were reviewed and the RHM generation interfaces of three digital human model simulation systems(Jack$^{(R)}$, RAMSIS$^{(R)}$, and CATIA Human$^{(R)}$) were reviewed. Results: DRHM generation steps are implemented by providing sophisticated interfaces which offer various statistical techniques and visualization methods with ease. Conclusion: The DRHM system can analyze the multivariate accommodation percentage of a sizing system, provide body sizes of generated DRHMs, and visualize generated grids and DRHMs. Application: The DRHM generation and analysis system can be of great use to determine an optimal sizing system for a multiple-size product by comparing various sizing system candidates.