基于小波的手写体数字分类描述符

L. Seijas, E. Segura
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引用次数: 4

摘要

本文利用CDF 9/7小波变换和主成分分析,提出了基于多分辨率特征的手写体数字识别描述符,以提高分类性能,并大大减少数字表示的大小。这使得识别器具有更高的精度,同时降低了训练成本,特别是对于大型数据集。实验使用文献中广泛使用的CENPARMI和MNIST数据库,结合支持向量机类型的分类器进行。识别率较好,与文献报道的识别率相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Wavelet-Based Descriptor for Handwritten Numeral Classification
In this work we propose descriptors for handwritten digit recognition based on multiresolution features by using the CDF 9/7 Wavelet Transform and Principal Component Analysis, in order to improve the classification performance and obtain a strong reduction on the size of the digit representation. This allows for a higher precision in the recognizers and, at the same time, lower training costs, especially for large datasets. Experiments were carried out with the CENPARMI and MNIST databases, widely used in the literature for this kind of problems, combining classifiers of the Support Vector Machine type. The recognition rates are good, comparable to those reported in previous works.
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