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研究生: 俞恆劭
Heng-Shao Yu
論文名稱: 應用聯邦學習實現基於影像辨識的室內定位系統
Image Recognition-Based Indoor Positioning System Using Federated Learning
指導教授: 呂政修
Jenq-Shiou Leu
口試委員: 阮聖彰
Shanq-Jang Ruan
鄭瑞光
Ray-Guang Cheng
周承復
Cheng-Fu Chou
學位類別: 碩士
Master
系所名稱: 電資學院 - 電子工程系
Department of Electronic and Computer Engineering
論文出版年: 2023
畢業學年度: 112
語文別: 中文
論文頁數: 40
中文關鍵詞: 室內定位影像辨識聯邦學習智慧型手機定位系統
外文關鍵詞: Indoor positioning, Image recognition, Federated learning, Smartphone positioning system
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  • 摘要 2 Abstract 3 誌謝 4 目錄 5 圖表索引 6 第1章 緒論 7 研究背景和動機 7 研究目的 9 第2章 研究背景 10 定位相關技術 10 影像辨識方法 14 聯邦學習方法 18 第3章 室內定位系統的設計與實現 22 設計步驟 22 系統架構 23 第4章 實驗測試與結果 27 硬體設備介紹 27 軟體工具介紹 30 實驗環境介紹 31 實驗方法 31 實驗結果 34 第5章 結論 36 未來工作 36 參考文獻 38

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    全文公開日期 2026/02/01 (國家圖書館:臺灣博碩士論文系統)
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