Handwritten Digit Recognition by a Mixture of Local Principal Component Analysis
作者:Bailing Zhang, Minyue Fu, Hong Yan
摘要
Mixture of local principal component analysis (PCA) has attracted attention due to a number of benefits over global PCA. The performance of a mixture model usually depends on the data partition and local linear fitting. In this paper, we propose a mixture model which has the properties of optimal data partition and robust local fitting. Data partition is realized by a soft competition algorithm called neural 'gas' and robust local linear fitting is approached by a nonlinear extension of PCA learning algorithm. Based on this mixture model, we describe a modular classification scheme for handwritten digit recognition, in which each module or network models the manifold of one of ten digit classes. Experiments demonstrate a very high recognition rate.
论文关键词:neural networks, mixture of principal component analysis, handwritten digit recognition
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论文官网地址:https://doi.org/10.1023/A:1009673230776