A Relevance Feedback Image Retrieval Scheme Using Multi-Instance and Pseudo Image Concepts(Image Processing and Video Processing)
スポンサーリンク
概要
- 論文の詳細を見る
Content-based image search has long been considered a difficult task. Making correct conjectures on the user intention (perception) based on the query images is a critical step in the content-based search. One key concept in this paper is how we find the user preferred low-level image characteristics from the multiple positive samples provided by the user. The second key concept is how we generate a set of consistent "pseudo images" when the user does not provide a sufficient number of samples. The notion of image feature stability is thus introduced. The third key concept is how we use negative images as pruning criterion. In realizing the preceding concepts, an image search scheme is developed using the weighted low-level image features. At the end, quantitative simulation results are used to show the effectiveness of these concepts.
- 社団法人電子情報通信学会の論文
- 2006-05-01
著者
-
HANG Hsueh-Ming
Department of Electronics Eng. National Chaio-Tung University
-
Hang Hsueh-ming
Department Of Electronics Engineering National Chiao Tung University (nctu)
-
CHANG Feng-Cheng
Department of Electronics Engineering, National Chiao Tung University (NCTU)
-
Chang Feng-cheng
Department Of Electronics Engineering National Chiao Tung University (nctu)
関連論文
- Global Motion Parameter Extraction and Deformable Block Motion Estimation
- A Relevance Feedback Image Retrieval Scheme Using Multi-Instance and Pseudo Image Concepts(Image Processing and Video Processing)