4.5 Article

Identify dominant dimensions of 3D hand shapes using statistical shape model and deep neural network

期刊

APPLIED ERGONOMICS
卷 96, 期 -, 页码 -

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.apergo.2021.103462

关键词

Dominant hand dimensions; Measurement stability; Structured sparsity learning

资金

  1. China Scholarship Council (CSC) [201806890056, 201706120017]

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This study aimed to identify the dominant dimensions that influence hand shape variability and consider the stability of measurements in practice. By analyzing literature and data, the main dimensions affecting hand shape variation were identified, and a 3D hand model with an accuracy of 5.9 mm was generated using simple measurement tools.
Hand anthropometry is one of the fundamentals of ergonomic research and product design. Many studies have been conducted to analyze the hand dimensions among different populations, however, the definitions and the numbers of those dimensions were usually selected based on the experience of the researchers and the available equipment. Few studies explored the importance of each hand dimension regarding the 3D shape of the hand. In this paper, we aim to identify the dominant dimensions that influence the hand shape variability while considering the stability of the measurements in practice. A novel four-step research method was proposed where in the first step, based on literature study, we defined 58 landmarks and 53 dimensions for the exploration. In the second step, 80,000 virtual hand models, each had the associated 53 dimensions, were augmented by changing the weights of Principle Components (PCs) of a statistical shape model (SSM). Deep neural networks (DNNs) were used to establish the inverse relationships from the dimensions to the weight of each PC of the hand SSM. Using the structured sparsity learning method, we identified 21 dominant dimensions that represent 90% of the variance of the hand shape. In the third step, two different manual measuring methods were used to evaluate the stability of the measurements in practice. Finally, we selected 16 dominant dimensions with lower measurement variance by synthesizing the findings in Step 2 and 3. It was concluded that the recognized 21 dominant dimensions can be treated as the reference dimensions for anthropometric study and using the selected 16 dominant dimensions with lower measurement variance, ergonomists are able to generate a 3D hand model based on simple measurement tools with an accuracy of 5.9 mm. Though the accuracy is limited, the efforts are minimum, and the results can be used as an indicator in the early stage of research/design.

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