| 研究生: |
林大元 Lin, Dah-Yuan |
|---|---|
| 論文名稱: |
基於使用者關聯性行為探勘之影像內容檢索 Content-Based Image Retrieval by Association Mining of User Logs |
| 指導教授: |
曾新穆
Tseng, Vincent Shin-Mu |
| 學位類別: |
碩士 Master |
| 系所名稱: |
電機資訊學院 - 資訊工程學系 Department of Computer Science and Information Engineering |
| 論文出版年: | 2006 |
| 畢業學年度: | 94 |
| 語文別: | 中文 |
| 論文頁數: | 67 |
| 中文關鍵詞: | 叢集 、決策樹 、關聯規則 、資料探勘 、影像內容檢索 |
| 外文關鍵詞: | Clustering, Association Rule, CBIR, Decision Tree |
| 相關次數: | 點閱:92 下載:2 |
| 分享至: |
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近年來,隨著電腦科技的進步、資料儲存媒介容量的增加以及數位影像的普及,數位影像的資料量日益龐大。因此,影像內容檢索逐漸成為近年來重要的研究課題。在傳統的影像內容檢索技術中,使用影像低階特徵值的比對來判斷圖片間的相似度,並且利用關聯性回饋的技術來解決人類主觀意識與影像低階特徵值間的差異。雖然關聯性回饋的確可以有效增加查詢的準確度,但我們認為,如果能分析使用者的查詢行為並找到某些規則,將可以使查詢結果更符合使用者的需求。因此,我們將影像內容檢索結合資料探勘的技術,透過查詢日誌的分析,找出圖片與圖片間的關聯性以及特徵值與特徵值權重的關係,並將這些找到規則整合到影像內容檢索系統中。實驗結果顯示,採用我們所提出的方法,在相同回饋次數的條件下約能增10%的準確度,也就是說,我們能在較少的回饋次數中獲得較佳的結果。
In recent years, due to the rapid progress of computer science, the improved storage techniques and popularity of digital images, content-based image retrieval (CBIR) has gradually become an important issue for multimedia processing. In order to increase the precision of image retrieval, the methods of relevance feedback arise to complement traditional CBIR systems that concentrate only on the computation of similarity among images. In this research, we utilize the association rules mining methods to satisfy the requests from different users by analyzing users' behavior during the whole retrieval procedure. Accordingly, we combine the image content and usage log to discover the useful association rules and the feature weights are adjusted dynamically for the relevant image feedback. Through experimental evaluation, our proposed approach is shown to deliver significant improvement on retrieval precision. That is to say, better retrieval results can be provided for users by our approach with less numbers of feedback.
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