基于矩不变性的手写识别特征提取

R. Ramteke, S. Mehrotra
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引用次数: 31

摘要

本文对基于矩不变量的各种技术的有效性进行了实验评估(Hu, 1961)。提取的特征是基于矩、图像分割、主成分轴、相关系数和摄动矩。在图像分割方法中,用三种不同的方法将图像分成四个部分。采用主成分轴(PCA)方法平衡图像中不同区域像素的分布。相关系数提供了不同矩之间的依赖关系。在摄动矩法中,通过图像中的小扰动计算矩不变量,并从扰动中提取信息。所有的技术都应用于2000个手写的德文加里数字。采用高斯分布函数进行分类。采用图像分割方法,成功率可提高到92%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction Based on Moment Invariants for Handwriting Recognition
This paper presents an experimental evaluation of the effectiveness of various techniques based upon moment invariants (Hu, 1961). The features that have been extracted are based on moments, image partition, principal component axes (PCA), correlation coefficient and perturbed moments. In image partition method, the image is divided into four parts with three different ways. The principal component axes (PCA) method has been used to balance the distribution of pixels in different regions of the image. Correlation coefficient provides dependencies of different moments on each other. In perturbed moment method, moment invariants are computed by small perturbation in image and information is extracted from the perturbation. All techniques have been applied on 2000 handwritten Devanagari numerals. The Gaussian distribution function has been adopted for classification. The success rate can be enhanced to 92% using image partition method
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