首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >NEURAL NETWORK CLASSIFICATION OF SYMMETRICAL AND NONSYMMETRICAL IMAGES USING NEW MOMENTS WITH HIGH NOISE TOLERANCE
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NEURAL NETWORK CLASSIFICATION OF SYMMETRICAL AND NONSYMMETRICAL IMAGES USING NEW MOMENTS WITH HIGH NOISE TOLERANCE

机译:使用具有高耐噪性的新矩对对称和非对称图像进行神经网络分类

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摘要

The classification of images using regular geometric moment functions suffers from two major problems. First, odd orders of central moments give zero value for images with symmetry in the x and/or y directions and symmetry at centroid. Secondly, these moments are very sensitive to noise especially for higher order moments. In this paper, a single solution is proposed to solve both these problems. The solution involves the computation of the moments from a reference point other than the image centroid. The new reference centre is selected such that the invariant properties like translation, scaling and rotation are still maintained. In this paper, it is shown that the new proposed moments can solve the symmetrical problem. Next, we show that the new proposed moments are less sensitive to Gaussian and random noise as compared to two different types of regular moments derived by Hu.~6 Extensive experimental study using a neural network classification scheme with these moments as inputs are conducted to verify the proposed method.
机译:使用规则的几何矩函数对图像进行分类存在两个主要问题。首先,奇数阶的中心矩为x和/或y方向对称且质心对称的图像给出零值。其次,这些力矩对噪声非常敏感,尤其是对于高阶力矩。在本文中,提出了一个解决方案来解决这两个问题。该解决方案涉及从图像质心以外的参考点计算力矩。选择新的参考中心,以便仍保持不变的属性,例如平移,缩放和旋转。在本文中,表明新提出的矩可以解决对称问题。接下来,我们表明新提出的矩与Hu推导的两种不同类型的常规矩相比,对高斯和随机噪声不那么敏感。〜6使用神经网络分类方案进行了广泛的实验研究,这些矩作为输入进行了验证建议的方法。

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