Scanned maps processing using wavelet domain hidden Markov models

C. Rus, R.C. Bilcur, K. Egiazarian, C. Rusu
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引用次数: 6

Abstract

This paper seeks to find ways to remove the unwanted information from the scanned GIS maps using wavelet domain hidden Markov models. WHMMs have proven to be a valuable tool for signal denoising, while they preserve the edges, so they can be used to remove the dithering effect that occurs during the printing process of the map. Linework data can be viewed as edges in the scanned map image. And, since WHMMs are well suited to images containing singularities (edges), they provide a good classifier for distinguishing between linework and elevation data (smoother areas in the image).
扫描地图处理的小波域隐马尔可夫模型
本文试图利用小波域隐马尔可夫模型从扫描的GIS地图中寻找去除不需要信息的方法。whmm已被证明是一种有价值的信号去噪工具,同时它们保留了边缘,因此它们可以用来消除在地图打印过程中发生的抖动效应。线条数据可以看作是扫描地图图像中的边缘。而且,由于whmm非常适合包含奇异点(边缘)的图像,它们为区分直线和高程数据(图像中更平滑的区域)提供了很好的分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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