are typically generated manually by human beings, they We present a two-pass image retrieval system in which re-provide compact, important [8], though sometimes biased trieval techniques for text and image documents are combined and incomplete, descriptions of the visual content. Such in a novel app
Image retrieval in multipoint queries
β Scribed by Khanh Vu; Hao Cheng; Kien A. Hua
- Book ID
- 102866010
- Publisher
- John Wiley and Sons
- Year
- 2008
- Tongue
- English
- Weight
- 747 KB
- Volume
- 18
- Category
- Article
- ISSN
- 0899-9457
No coin nor oath required. For personal study only.
β¦ Synopsis
Abstract
Traditional contentβbased image retrieval (CBIR) systems find relevant images close to an example image. This singleβpoint model has been shown inadequate for complex queries built on highβlevel concepts. Recent CBIR systems allow users to use multiple examples to compose their queries. The multipoint model provides extended flexibility in identifying relevant sets of arbitrary shape that the previous approach is unable to formulate. However, the continuing use of conventional measures (e.g., L~p~ norms) to evaluate these queries undermines the advantages of the new system. From the results of recent studies, we show that two important inferences can be made. Specifically, they are the continuity of image representation and the nonhomogeneity of the feature space. These characteristics enable the precise identification of points that satisfy the constraints established in multipoint queries and for any orthogonal feature representations. Generally, the sets are convex hulls and can be described by a linear system of equations with constraints. We discuss how to solve the system and propose an indexing procedure to efficiently determine the exact sets. We evaluated the performance of the proposed technique against stateβofβtheβart methods on large sets of images. The results indicate that the new measure captures semantic image classes very well, and the superiority of our approach over the recent techniques is evident in simulated and realistic environments. Β© 2008 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 18, 170β181, 2008
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A content-based image retrieval mechanism to support complex similarity queries is presented. The image content is defined by three kinds of features: quantifiable features describing the visual information, nonquantifiable features describing the semantic information, and keywords describing more a