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A comparative study using contours and skeletons as shape representations for binary image matching

机译:使用轮廓和骨架作为形状表示进行二值图像匹配的比较研究

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摘要

Contours and skeletons are well-known shape representations that embody visual information by using a limited set of object points. Both representations have been applied in various pattern recognition applications, while studies in cognitive science have investigated their roles in human perception. Despite their importance has been shown in the above-mentioned fields, to our knowledge no existing studies have been conducted to compare their performances. Filling this gap, this paper is an empirical study of these two shape representations by comparing their performances over different binary image categories and variations. The image categories include thick, elongated, and nearly thin images. Image variations include addition of noise to the contours, blurring, and size reduction. The comparative evaluation is achieved by resorting to object classification (OC) and content-based image retrieval (CBIR) algorithms and evaluation metrics. The main findings highlight the superiority of contours but the improvements observed when skeletons are used for images with noisy contours. (C) 2015 Elsevier B.V. All rights reserved.
机译:轮廓和骨骼是众所周知的形状表示,通过使用一组有限的对象点来体现视觉信息。两种表示形式都已应用于各种模式识别应用程序,而认知科学方面的研究已经调查了它们在人类感知中的作用。尽管它们在上述领域中已显示出重要性,但据我们所知,尚未进行任何现有研究来比较它们的性能。填补这一空白,本文通过比较这两种形状表示在不同二值图像类别和变体上的性能,对这两种形状表示进行了实证研究。图像类别包括厚,拉长和近乎薄的图像。图像变化包括向轮廓添加噪点,模糊和缩小尺寸。比较评估是通过使用对象分类(OC)和基于内容的图像检索(CBIR)算法和评估指标来实现的。主要发现突出了轮廓的优越性,但是当将骨架用于具有嘈杂轮廓的图像时,观察到了改进。 (C)2015 Elsevier B.V.保留所有权利。

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