한국해양대학교

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가중치를 둔 컬러 동시발생 히스토그램을 이용한 영상검색

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dc.contributor.author 안명석 -
dc.date.accessioned 2017-02-22T05:20:29Z -
dc.date.available 2017-02-22T05:20:29Z -
dc.date.issued 2006 -
dc.date.submitted 56824-08-21 -
dc.identifier.uri http://kmou.dcollection.net/jsp/common/DcLoOrgPer.jsp?sItemId=000002174515 ko_KR
dc.identifier.uri http://repository.kmou.ac.kr/handle/2014.oak/8557 -
dc.description.abstract Color image retrieval is to search color images using queries represented by image descriptors, which usually describe color distribution and relation of color pixels in an image. A color co-occurrence histogram (CCH) among the descriptors captures information on the spatial layout of colors within an image. It has shown excellent performance on color image retrieval, but requires many bins to describe contents of images and has bad effect on the similarity of same contents images, in which the size of homogeneous color regions are highly different. To resolve these problems and to improve retrieval performance, this thesis proposes a weighted CCH and two image retrieval methods using it. Generally the process of image retrieval using a CCH has three steps. The first step is to get the CCH from a query image. The second step is to compute similarity between CCHs of the query image and reference images. The last step is to sort reference images by the similarities and to visualize them. The proposed retrieval methods weight main diagonal and off-diagonal elements of a CCH in the first and/or the second steps mentioned above. Experiments have shown that the proposed methods with a few bins outperform some conventional methods when large weight is given on off-diagonal elements regardless of color quantization levels. We believe that the effectiveness of the method is caused by the characteristics describing the size and the coherence of homogeneous color regions and being robust to size variation of the color regions. Moreover, the image retrieval performance is little affected by the threshold, which is an energy level of valid bins, regardless of color quantization levels. The proposed methods use contents of images effectively, so they can be effectually used in the other content-based applications such as color image classification, color object tracking, and video cut detection. -
dc.description.tableofcontents 제1장 서 론 = 1 1.1 연구의 배경 = 1 1.2 제안한 방법 = 3 제2장 내용기반 영상검색을 위한 컬러 기술자 = 6 2.1 내용기반 영상검색 시스템 = 6 2.2 컬러영상을 위한 기술자 = 7 제3장 컬러 동시발생 히스토그램에 의한 영상검색 = 19 3.1 컬러 동시발생 히스토그램의 문제점 = 19 3.2 대각성분과 비대각성분의 영상기술 = 24 3.3 대각성분과 비대각성분의 영상검색 성능 = 29 제4장 가중치를 둔 컬러 동시발생 히스토그램을 이용한 영상검색 = 36 4.1 대각성분 및 비대각성분에 가중치를 둔 영상검색 = 38 4.1.1 대각성분 및 비대각성분에 가중치를 둔 CCH = 38 4.1.2 빈 개수 축소와 유사도 측정 = 42 4.2 대각성분, 비대각성분 및 가중치에 의한 영상검색 = 46 4.2.1 CCH의 획득과 빈 제거 = 46 4.2.2 유사도 측정 = 48 제5장 실험 및 고찰 = 52 5.1 실험환경 및 성능평가 방법 = 52 5.2 실험결과 및 고찰 = 55 제6장 결 론 = 79 참고 문헌 = 82 -
dc.language kor -
dc.publisher 한국해양대학교 대학원 -
dc.title 가중치를 둔 컬러 동시발생 히스토그램을 이용한 영상검색 -
dc.title.alternative Image Retreival Using Weighted Color Co-occurrence Histogram -
dc.type Thesis -
dc.date.awarded 2006-08 -
dc.contributor.alternativeName An -
dc.contributor.alternativeName Myung-Seok -
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컴퓨터공학과 > Thesis
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