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研究生: 羅湘聆
Xiang-Ling Luo
論文名稱: 人工智慧在面相學與Holland人格特質分析之應用
The Application of Artificial Intelligence in Physiognomy and Holland’s Personality Traits
指導教授: 張順教
Shun-Chiao Chang
口試委員: 賴法才
Fav-Tsoin Lai
吳世英
Shih-Ying Wu
吳克振
Cou-chen Wu
張順教
Shun-Chiao Chang
學位類別: 碩士
Master
系所名稱: 管理學院 - 企業管理系
Department of Business Administration
論文出版年: 2021
畢業學年度: 109
語文別: 英文
論文頁數: 69
中文關鍵詞: 人工智慧人臉辨識面相學Holland人格特質
外文關鍵詞: AI, face recognition, physiognomy, Holland’s theory
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  • 本研究主要探討人們在使用AI面相分析系統的滿意度及對於複合型算命與未來運勢分析的意願,利用問卷調查,探討使用者在使用AI面相分析系統後,對於嘴巴、鼻子、眉毛與眼睛的類型與分析之感想,瞭解人們最在意的面部特徵與原因,同時對於複合型算命與運勢分析進行意願調查。
    本研究將面相學對於個性之敘述與Holland人格特質的描述進行比對,將相似以及相互補充的部分整理歸納,並使用AI面相分析系統將AI人臉辨識的技術、中國面相學與Holland人格特質結合,對亞洲人臉特徵進行辨識與分析,並顯示出面部特徵與性格分析的結果。
    本研究結果顯示,AI面相分析系統可快速地分析使用者的面部資訊,中國面相學與Holland人格特質相互整合更加完整描述使用者的性格,其呈現的結果與使用者自身性格相符,使用者最在意鼻子與眼睛的形狀,對於複合型的算命方式十分感興趣,對於未來分析的項目如財富運勢、健康運勢也有相當大的意願。
    本研究對『AI面相分析系統』提出未來的應用以及改善方法,希望往後能夠透過此系統幫助亞洲人更加了解自身性格,並期望在未來能夠結合人力資源、財富管理及健康運勢分析,整合為更多元的系統。


    The study explores people’s satisfaction with using the “AI facial features analysis system” and their willingness to engage in multiple types of fortune telling and future health and wealth analysis. Questionnaire surveys were used to explore the user’s perceptions of the mouth, nose, eyebrows and eyes after using the system. A willingness survey on multiple types of fortune telling and future health and wealth analysis was also included in the Questionnaire.
    The AI facial features analysis system combined AI facial recognition technology, Chinese physiognomy and Holland’s personality traits to identify and analyze Asian people’s facial features and display the results within a short period of time.
    The results of the study showed that the AI facial features analysis system could quickly analyze the user’s facial information. Physiognomy and Holland’s personality traits were integrated with the facial features analysis to describe the user’s personality more completely. The results were consistent with the users’ own personalities. People were concerned about the shape of the nose and eyes. They were very interested in various types of fortune telling and had considerable willingness to engage in future analysis such as that for wealth and health.
    This study proposes future applications and improvements in relation to the AI facial features analysis system. The outcomes confirm that the system could help people understand their own personalities better in the future. We hope to integrate human resources, wealth management, and health fortune analysis with such a system in the future.

    摘要 i Abstract ii 致謝 iii Contents iv List of Tables v List of Figures vii Chapter 1 Introduction 1 1.1 Background and Motivation 1 1.2 Research Objectives and Purpose 2 1.3 Research Process 3 Chapter 2 Literature Review 4 2.1 The Literature on Artificial Intelligence 4 2.2 The Literature on Physiognomy 5 2.3 The Literature on Holland’s RIASEC Model of Vocational Interests 7 Chapter 3 Methodology 9 3.1 The Instant Personality Analysis of AI Facial Features 9 3.2 System Analysis Process 9 3.3 Results of the Analysis 10 3.4 The Holland Hexagon 16 3.4.1 List of the Holland Personality Types (RIASEC) 17 3.4.2 Comparing Facial Analysis with Holland’s Analysis. 19 3.4.2.1 The Same Parts of the Two Analyses 19 3.4.2.2 Supplementary Definitions for the Facial Features Analysis and Holland’s Personality Types 21 3.5 The Samples for the Holland Hexagon Analysis 23 3.5.1 Comparison of Physiognomic Analysis and Holland Hexagon Analysis 31 3.6 Facial Analysis Experience Survey 32 Chapter 4 Empirical Results 33 4.1 Analysis of AI Facial Features 33 4.2 Analysis of Holland Personality Types 38 4.3 Analysis of Satisfaction 40 4.3.1 AI Facial Features Analysis Satisfaction 40 4.3.2 AI Facial Features Meaning Analysis Satisfaction 41 4.4 Willingness Analysis 45 4.4.1 Privacy 45 4.4.2 Multiple Types of Fortune Telling Willingness Survey 46 4.4.3 Feedback from the AI Facial Features Analysis 46 Chapter 5 Conclusions and Suggestions 50 5.1 Conclusions 50 5.2 Suggestions 51 References 53 Appendix 57

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