Hierarchical sparse autoencoder using linear regression-based features in clustering for handwritten digit recognition

Hai T. Phan, An T. Duong, Son T. Tran
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引用次数: 5

Abstract

Recently, handwritten digit recognition using higher level features has got more promising results than conventional ones using intensity values, where the higher level features are considered as features of simple strokes in images. Although the state-of-the-art performance is very impressive, there is still room to improve better in both accuracy and computation complexity. In this paper, we propose a new feature based on linear regression to extract geometrical characteristics of handwritten digits. The linear regression-based features are utilized to cluster set of digit image in preprocessing. After that, each set of clustered digit images is inputted a hierarchical sparse autoencoder to extract higher level features automatically. Our method result achieves error rates lower than that of conventional method in the most of cases. The experiment shows that the efficiency of data clustering can get promising results.
基于线性回归聚类特征的分层稀疏自编码器手写数字识别
近年来,采用高阶特征的手写体数字识别比传统的采用强度值的手写体数字识别得到了更令人满意的结果,高阶特征被认为是图像中简单笔画的特征。虽然最先进的性能非常令人印象深刻,但在精度和计算复杂性方面仍有改进的余地。本文提出了一种基于线性回归的手写数字几何特征提取方法。在预处理中利用基于线性回归的特征对数字图像进行聚类。然后,对每组聚类的数字图像输入一个分层稀疏自编码器,自动提取更高层次的特征。在大多数情况下,该方法的误差率低于传统方法。实验表明,数据聚类的效率可以得到很好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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