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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Reliable polygonal approximations of imaged real objects through dominant point detection
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Reliable polygonal approximations of imaged real objects through dominant point detection

机译:通过显性点检测对成像的真实对象进行可靠的多边形逼近

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摘要

The problem of dominant point detection is posed, taking into account what usually happens in practice. The algorithms found in the literature often prove their performance with laboratory contours, but the shapes in real images present noise, quantization, and high inter and intra-shape variability. These effects are analyzed and solutions to them are proposed. We will also focus on the conditions for an efficient (few points) and precise (low error) dominant point extraction that preserves the original shape. A measurement of the committed error (optimization error, E-0) that rakes into account both aspects is defined for studying this feature. (C) 1998 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 38]
机译:考虑到实践中通常发生的情况,提出了优势点检测问题。文献中发现的算法通常会在实验室轮廓上证明其性能,但实际图像中的形状会产生噪声,量化以及形状间和形状内的高可变性。分析了这些影响并提出了解决方案。我们还将关注保留原始形状的有效(少量点)和精确(低误差)优势点提取的条件。为了研究此功能,定义了同时考虑了两个方面的承诺错误(优化错误,E-0)的度量。 (C)1998模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:38]

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