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Weighted Central Moment for Pattern Recognition: Derivation, Analysis of Invarianceness, and Simulation Using Letter Characters

机译:用于模式识别的加权中心时刻:使用字母字符衍生,分析反身和模拟

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Geometric moment invariant (GMI) is well known approach in pattern recognition. One of the weaknesses of GMI is in its invarianceness, where data or points concentrated near to the center-of-mass are neglected because of the existence of data or points that are far away from the center-of-mass. To solve this problem, Balslev et.al has modified GMI method by adding a weighting function into GMIpsilas formula; thus we called it as Weighted Central Moment (WCM). WCM can increase noise tolerance for rotation/translation independent pattern recognition. In this paper, we present simulation results for characters with adjustable parameter alpha equal to 2/Rg. The experiments reveal that WCM yields intra-class results for identifying picture with different orientations. It also illustrates better inter-class distances in recognizing letter ldquogrdquo and ldquoqrdquo compared to GMI method.
机译:几何时刻不变(GMI)是众所周知的模式识别的方法。 GMI的一个弱点是其健康状况,因为存在远离质量中心的数据或点的存在数据或集中在肿块中的数据或点。为了解决这个问题,Balslev et.al通过将加权函数添加到Gmipsilas公式中来修改了GMI方法;因此,我们称为加权中心时刻(WCM)。 WCM可以提高旋转/翻译独立模式识别的噪声容差。在本文中,我们对具有等于2 / RG的可调参数α的字符的仿真结果。实验表明,WCM为识别具有不同取向的图像的类内结果。与GMI方法相比,它还说明了识别字母LDQuogrdquo和Ldquoqrdquo的阶级更好的距离。

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