A Robust Clustering Method for Missing Metadata in Image Search Results
スポンサーリンク
概要
- 論文の詳細を見る
Although metadata are useful to obtain better clustering results on image clustering, some images do not have social tags or metadata about photo-taking conditions. In this paper, we propose an image clustering method that is robust for those missing metadata of photo images that appear in search results on the Web. The method has an integrated estimation mechanism for missing social tags or photo-taking conditions from other images in the image search result. An advantage of our method is that our approach does not require another training set that is constructed from other images that are not included in the search result. We demonstrate that the proposed method can effectively cluster images which have some missing metadata by showing the performance of on-demand clustering on a photo sharing site.
著者
-
Ishikawa Hiroshi
Faculty Of Engineering Fukuyama University
-
Fukuta Naoki
Faculty of Informatics, Shizuoka University
-
Yokoyama Shohei
Faculty of Informatics, Shizuoka University
-
Hirota Masaharu
Graduate School of Informatics, Shizuoka University
関連論文
- AN ALGORITHM TO FIND ALL SOLUTIONS OF BLIND DECONVOLUTION (Image Processing and Coding)(International Workshop On Advanced Image Technology (IWAIT2004))
- Fatigue Test Results and Fatigue Life Estimation on Hard Steel and Aluminum Alloy under Random Loads
- A Newly Devised Resonance Type Rotating Bending Fatigue Testing Machine and Some Fatigue Tests
- A New Mechanical Random Fatigue Testing Machine and Some Test Results
- A Robust Clustering Method for Missing Metadata in Image Search Results
- A Robust Clustering Method for Missing Metadata in Image Search Results
- A Mobile Agent Approach for P2P-based Semantic File Retrieval
- A Mobile Agent Approach for P2P-based Semantic File Retrieval