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Weighted aspect moment invariant in pattern recognition

机译:模式识别中的加权长宽矩不变

摘要

Many drawbacks has been found in Hu's moment Invariant or known as Geometric Moment Invariant (GMI). Due to its flexibility, GMI is still widely used by the researchers until now. This paper proposes an alternative approach, Weighted Aspect Moment Invariant (WAMI) by combining Weighted Central Moment (WCM) and Aspect Moment Invariant (AsMI) to solve GMI's drawbacks in term of noise and unequal data scaling. Various insect images are used in this study with two different sizes as simulation images. The simulation results show that the proposed WAMI improves inter-class and intra-class criteria for unequally scaling data compared to AsMI.
机译:在胡氏不变式或称为几何矩不变式(GMI)的过程中发现了许多缺点。由于其灵活性,GMI至今仍被研究人员广泛使用。本文提出了一种替代方法,即加权中心矩不变(WCM)和方面矩不变(AsMI)相结合的加权方面矩不变(WAMI),以解决GMI在噪声和不相等数据缩放方面的缺点。在这项研究中使用了两种不同大小的昆虫图像作为模拟图像。仿真结果表明,与AsMI相比,拟议的WAMI改进了类间和类内标准,以实现不等比例缩放数据。

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