2008
DOI: 10.1007/s00778-008-0111-4
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Supporting exact indexing of arbitrarily rotated shapes and periodic time series under Euclidean and warping distance measures

Abstract: Shape matching and indexing is important topic in its own right, and is a fundamental subroutine in most shape data mining algorithms. Given the ubiquity of shape, shape matching is an important problem with applications in domains as diverse as biometrics, industry, medicine, zoology and anthropology. The distance/similarity measure for used for shape matching must be invariant to many distortions, including scale, offset, noise, articulation, partial occlusion, etc. Most of these distortions are relatively e… Show more

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Cited by 123 publications
(83 citation statements)
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“…The MAP using the CED, in this database, is 64.00 and using the ED is 22.81. We have to say that in this task the results of the CED are much better because we solve a different problem [7] than the one of the digits database. In the digits database, we reduce the error of choosing as the beginning of the contour the upper leftmost point.…”
Section: Evaluation and Resultsmentioning
confidence: 99%
“…The MAP using the CED, in this database, is 64.00 and using the ED is 22.81. We have to say that in this task the results of the CED are much better because we solve a different problem [7] than the one of the digits database. In the digits database, we reduce the error of choosing as the beginning of the contour the upper leftmost point.…”
Section: Evaluation and Resultsmentioning
confidence: 99%
“…또한, 최근에는 필 기체 인식 [5], 이미지 매칭 [6,7], 바이오 시퀀스 매칭 [8] [17]. 객체의 외부 윤곽선 추출 방법에는 Chain Code [18], Polygon [19], CSS(curvature scale space) [20], CCD(centroid contour distance) [6,7,9,16] […”
Section: 서 론unclassified
“…heuristic methods to obtain this invariance, they are not suitable in most of the domains. Therefore, the literature accepts that to obtain a good starting point we must make the comparison between every possible starting point of the sequence [2,3,9,4]. Hence the necessity to use cyclic sequences and then CDTW (Cyclic DTW) arises.…”
Section: Introductionmentioning
confidence: 99%
“…In [9], the authors, using a method similar to their previous work with DTW [11], try to speed up the CDTW as well. In this work, they do not use the algorithm of [10], but they make clusters of sequences based on their similarity, treating every possible starting point as a different sequence and using indexing methods with lower bounds of these clusters.…”
Section: Introductionmentioning
confidence: 99%