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计算机科学与应用
Vol. 6 No. 11 (November 2016)
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张量投票在边界提取中的应用
Application of Tensor Voting in Edge Detection
DOI:
10.12677/CSA.2016.611078
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被引量
下载: 1,933
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作者:
邵晓芳
,
魏俊淦
:海军航空工程学院青岛校区,山东 青岛
关键词:
边界提取
;
边界修复
;
张量投票
;
Edge Extraction
;
Edge Completion
;
Tensor Voting
摘要:
边界提取是图像处理中的基本问题之一。在分类总结相关工作的基础上,介绍了张量投票方法在边界提取中的应用,并通过实验展示了该方法的边界修复特性。
Abstract:
Edge detection is a basic problem in image processing. This paper presents a summary of related works and introduces how to apply the tensor voting method in edge detection. The algorithm’s flowchart and typical experimental result are demonstrated to show the completion characteristics of the algorithm.
文章引用:
邵晓芳, 魏俊淦. 张量投票在边界提取中的应用[J]. 计算机科学与应用, 2016, 6(11): 638-643.
http://dx.doi.org/10.12677/CSA.2016.611078
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