Abstract
In order to meet people's aesthetic needs for construction machinery products, a method based on perceptual image and extracting the key form of products to design Mining Dump Trunks is proposed. Taking the design of Mining Dump Trunk as a research example, the perceptual image vocabulary of Mining Dump Trunk product modeling is obtained, and representative Mining Dump Trunk samples are selected through cluster analysis, and then the idea image factors of Mining Dump Trunk are extracted. Then use the form analysis method to decompose the product into different forms and extract the key form that has the greatest impact on the product image, and encode the different form elements. Finally, the quantitative I theory is introduced to construct a mapping model of product styling elements and user perceptual images, so as to assist designers in more humane styling design, and to provide a feasible methodology for the styling design of products such as Mining Dump Trunks.
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Tu, Y., Yi, J. (2021). Design of Mining Dump Trunk Based on Kansei Engineering. In: Shin, C.S., Di Bucchianico, G., Fukuda, S., Ghim , YG., Montagna, G., Carvalho, C. (eds) Advances in Industrial Design. AHFE 2021. Lecture Notes in Networks and Systems, vol 260. Springer, Cham. https://doi.org/10.1007/978-3-030-80829-7_138
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DOI: https://doi.org/10.1007/978-3-030-80829-7_138
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