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A Study on the Effects of Noise Level, Cleaning Method, and Vectorization Software on the Quality of Vector Data

机译:噪声水平,清洗方法和矢量化软件对矢量数据质量的影响研究

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Correct detection of line attributes by line detection algorithms is important and leads to good quality vectors. Line attributes includes: end points, width, line style, line shape, and center (for arcs). In this paper we study different factors that affect detected vector attributes. Noise level, cleaning method, and vectorization software are three factors that may influence the resulting vector data attributes. Real scanned images from GREC'03 and GREC'07 contests are used in the experiment. Three different levels of salt-and-pepper noise (5%, 10%, and 15%) are used. Noisy images are cleaned by six cleaning algorithms and then three different commercial raster to vector software are used to vectorize the cleaned images. Vector Recovery Index (VRI) is the performance evaluation criteria used in this study to judge the quality of the resulting vectors compared to their ground truth data. Statistical analysis on the VRI values shows that vectorization software has the biggest influence on the quality of the resulting vectors.
机译:通过线检测算法正确检测线属性很重要,并且可以产生高质量的矢量。线属性包括:端点,宽度,线型,线形和中心(对于弧线)。在本文中,我们研究了影响检测到的向量属性的不同因素。噪声水平,清洁方法和矢量化软件是可能影响所得矢量数据属性的三个因素。实验中使用了来自GREC'03和GREC'07竞赛的真实扫描图像。使用了三种不同级别的椒盐噪声(5%,10%和15%)。嘈杂的图像通过六种清洁算法进行清洁,然后使用三个不同的商业光栅矢量软件对清洁后的图像进行矢量化处理。向量恢复指数(VRI)是本研究中用来判断所得向量与地面真实数据相比质量的性能评估标准。对VRI值的统计分析表明,矢量化软件对所得矢量的质量影响最大。

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