Comparison between Mexican Hat and Haar Wavelet Descriptors for Shape Representation

ICINCO-RA Pub Date : 2009-07-02 DOI:10.5220/0002207002140221
A. Nabout, B. Tibken
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Abstract

The wavelet transformation is a well known method in several engineering fields. In image processing and pattern recognition the wavelet transformation is used for the recognition of object shapes by deriving so called wavelet descriptors. In this context the Mexican Hat as well as the Haar function were used as mother wavelets. To derive wavelet descriptors the methods use a periodical angle function derived from the contour polygon. The angle function describes an object shape by calculating the angle changes along the object contour beginning from a given starting point. Since object shapes are described by polygons, the angle function is step-shaped and therefore it includes discontinuity at the existing polygon corners. This causes big changes of the Haar wavelet descriptors if the positions of the polygon corners change due to small changes of the object shape. Such changes can be caused at least by digitalization or binarization errors. The Mexican Hat wavelet descriptors are more adapted and suffer however from small changes. In this paper we present the results of the comparison between both methods in there accurateness of describing object shapes.
墨西哥Hat和Haar小波描述子的形状表示比较
小波变换在许多工程领域都是一种很有名的方法。在图像处理和模式识别中,小波变换通过导出小波描述子来识别物体形状。在这种情况下,墨西哥帽函数和哈尔函数被用作母小波。该方法利用轮廓多边形的周期角函数来推导小波描述子。角度函数通过计算从给定起点开始沿物体轮廓的角度变化来描述物体形状。由于物体形状是用多边形来描述的,因此角函数是阶梯状的,因此它包含了现有多边形角处的不连续。如果多边形角的位置由于物体形状的微小变化而发生变化,则会导致哈尔小波描述子的大变化。这种变化至少可以由数字化或二值化误差引起。墨西哥帽小波描述符更适应,但遭受小的变化。本文给出了两种方法在描述物体形状精度方面的比较结果。
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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