TAILIEUCHUNG - Cơ sở dữ liệu hình ảnh P11

Recent progress in multimedia database systems has resulted in solutions for integrating and managing a variety of multimedia formats that include images, video, audio, and text [1]. Advances in automatic feature extraction and image-content analysis have enabled the development of new functionalities for searching, filtering, and accessing images based on perceptual features such as color [2,3], texture [4,5], shape [6], and spatial composition [7]. | Image Databases Search and Retrieval of Digital Imagery Edited by Vittorio Castelli Lawrence D. Bergman Copyright 2002 John Wiley Sons Inc. ISBNs 0-471-32116-8 Hardback 0-471-22463-4 Electronic 11 Color for Image Retrieval JOHN R. SMITH IBM . Watson Research Center Hawthorne New York INTRODUCTION Recent progress in multimedia database systems has resulted in solutions for integrating and managing a variety of multimedia formats that include images video audio and text 1 . Advances in automatic feature extraction and image-content analysis have enabled the development of new functionalities for searching filtering and accessing images based on perceptual features such as color 2 3 texture 4 5 shape 6 and spatial composition 7 . The content-based query paradigm which allows similarity searching based on visual features addresses the obstacles to access color image databases that result from the insufficiency of key word or text-based annotations to completely consistently and objectively describe the content of images. Although perceptual features such as color distributions and color layout often provide a poor characterization of the actual semantic content of the images content-based query appears to be effective for indexing and rapidly accessing images based on the similarity of visual features. Content-Based Query Systems The seminal work on content-based query of image databases was carried out in the IBM query by image content QBIC project 2 8 . The QBIC project explored methods for searching for images based on the similarity of global image features of color texture and shape. The QBIC project developed a novel method of prefiltering of queries that greatly reduces the number of target images searched in similarity queries 9 . The MIT Photobook project extended some of the early methods of content-based query by developing descriptors that provide effective matching as well as the ability to reconstruct the images and their features from the

Đã phát hiện trình chặn quảng cáo AdBlock
Trang web này phụ thuộc vào doanh thu từ số lần hiển thị quảng cáo để tồn tại. Vui lòng tắt trình chặn quảng cáo của bạn hoặc tạm dừng tính năng chặn quảng cáo cho trang web này.