A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature

碩士 === 亞洲大學 === 生物資訊學系碩士班 === 97 === Image registration in machine vision is a very popular and useful research topic in both theoretical and practical problems. Geometric pattern matching is one of the most promising research directions in image registration. Major difficulties for pattern matching...

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Main Authors: Cytnhia, 林家均
Other Authors: 李正宇
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/81660565662692010127
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spelling ndltd-TW-097THMU81120132015-11-13T04:08:51Z http://ndltd.ncl.edu.tw/handle/81660565662692010127 A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature 基於環狀取樣以向量為特徵的新式比對技術 Cytnhia 林家均 碩士 亞洲大學 生物資訊學系碩士班 97 Image registration in machine vision is a very popular and useful research topic in both theoretical and practical problems. Geometric pattern matching is one of the most promising research directions in image registration. Major difficulties for pattern matching are performance, scale- and rotation-invariance, and robustness. It is hard to achieve these three objectives at the same time. Circular template sampling intrinsically bears rotation-invariance with lower computational complexity. In the proposed method, under circular sampling, the templates were sampled uniformly on 24-way to retrieve the consecutive feature vectors from the edge points. The scaling and rotation problem of the target pattern with respect to the template pattern is simplified as a problem of proportion of the length and an angle difference of the feature vectors. In the proposed, the scale- and rotation-invariance is elegantly achieved with high performance by representing a geometric pattern as a set of feature vectors. 李正宇 2009 學位論文 ; thesis 55 zh-TW
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language zh-TW
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description 碩士 === 亞洲大學 === 生物資訊學系碩士班 === 97 === Image registration in machine vision is a very popular and useful research topic in both theoretical and practical problems. Geometric pattern matching is one of the most promising research directions in image registration. Major difficulties for pattern matching are performance, scale- and rotation-invariance, and robustness. It is hard to achieve these three objectives at the same time. Circular template sampling intrinsically bears rotation-invariance with lower computational complexity. In the proposed method, under circular sampling, the templates were sampled uniformly on 24-way to retrieve the consecutive feature vectors from the edge points. The scaling and rotation problem of the target pattern with respect to the template pattern is simplified as a problem of proportion of the length and an angle difference of the feature vectors. In the proposed, the scale- and rotation-invariance is elegantly achieved with high performance by representing a geometric pattern as a set of feature vectors.
author2 李正宇
author_facet 李正宇
Cytnhia
林家均
author Cytnhia
林家均
spellingShingle Cytnhia
林家均
A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
author_sort Cytnhia
title A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
title_short A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
title_full A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
title_fullStr A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
title_full_unstemmed A New Approach for Ring Sampling based Pattern Matching using Edge Vectors as Feature
title_sort new approach for ring sampling based pattern matching using edge vectors as feature
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/81660565662692010127
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