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  • 學位論文

考慮使用者特徵之產品感性設計方法

A Kansei Engineering Product Design Method Considering Users' Characteristics

指導教授 : 陳湘鳳
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摘要


本文論述一個新的感性產品設計方法之研究。有別於過去多數的感性產品設計方法,本研究考慮了目標產品及對應之使用者特徵。過去多數有關的研究,只有考慮使用者對於產品的感性態度,忽略了旁觀者因為觀察到使用者配戴產品後轉變了外觀,而導致旁觀者對於使用者外觀產生了感性態度上的轉變。本研究同時考慮產品及使用者特徵,透過實驗,體現使用者在沒有配戴產品,與配戴了產品情況下,他人對於使用者不同外觀下的感性態度之差別。該感性態度之差別將以量化方式來表示,使得在將來我們可以更具體的預測使用者在配戴了產品時所獲得的感性變化。

並列摘要


This thesis creates a new Kansei engineering product design method. The new Kansei engineering product design method can be used to improve design results for wearable products. Previous Kansei engineering product design methods only measure customer Kansei response to products. The new Kansei engineering product design method measures customer Kansei response to both products and customer appearance. The new Kansei engineering product design method asks customers to give Kansei responses for products, customer appearances, and products when worn by customers. User test results show that there are significant differences in Kansei responses for products, customer appearances, and products when worn by customers. The new Kansei engineering product design method quantitatively measures the differences in Kansei responses for products, customer appearances, and products when worn by customers. Therefore, the differences can be used to predict Kansei responses for different products, customer appearances, and products when worn by customers.

參考文獻


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