基于泽尼克矩及其约简特征集的神经模式分类

P. Raveendran, S. Omatu, S. Ong
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引用次数: 1

摘要

本文提出了一种神经网络技术,利用仅对旋转不变的泽尼克矩对数字进行分类。为了使它们不受尺度和位移的影响,我们在正则矩的基础上引入了修正泽尼克矩。由于使用了大量的泽尼克矩,因此在计算上选择一个可以区分的子集和原始集合是更有效的。使用逐步判别分析确定子集。通过与原始集合的比较来检查子集的性能。结果表明,使用该方案可以对缩放、旋转和移位的二值图像和受随机噪声干扰的图像进行分类。除了神经网络方法外,还使用了Fisher分类器,这是一种参数分类器。对比研究表明,神经网络方法比Fisher分类器具有更好的分类精度。当使用合适的泽尼克矩子集时,分类器表现良好,就像原始集一样。对分类器的性能也进行了检验。当使用合适的泽尼克矩子集时,计算时间大大减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuro-pattern classification using Zernike moments and its reduced set of features
The paper proposes a neural network technique to classify numerals using Zernike moments that are invariant to rotation only. In order to make them invariant to scale and shift, we introduce modified Zernike moments based on regular moments. Owing to the large number of Zernike moments used, it is computationally more efficient to select a subset of them that can discriminate as well as the original set. The subset is determined using stepwise discriminant analysis. The performance of a subset is examined through its comparison to the original set. The results are shown of using such a scheme to classify scaled, rotated, and shifted binary images and images that have been perturbed with random noise. In addition to the neural network approach, the Fisher's classifier is also used, which is a parametric classifier. A comparative study of their performances shows that the neural network approach produces better classification accuracy than the Fisher's classifier. When a suitable subset of Zernike moments is used, the classifiers perform well, just like the original set. The performance of the classifiers is also examined. The computational time is greatly reduced when a suitable subset of Zernike moments is used.
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