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Handwritten digits recognition approach research based on distance amp; Kernel PCA

机译:基于距离和amp的手写数字识别方法研究。 内核PCA.

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Feature extraction, as one of the two important components in handwritten digit recognition systems, is still a key research area. Principal Component Analysis (PCA) is an efficient linear feature extraction algorithm and is widely used in handwritten digit recognition system. However, it can hardly deal with the pattern with complex nonlinear variations, such as the writing interrupt, noise pollution and so on. This paper proposes an efficient handwritten digit recognition method based on distance Kernel PCA (KPCA). First, the initial input data is mapped into a higher-dimensional space with the distance kernel and describes the whole features as much as possible. Then, PCA method is used to extract the Principal Component from the kernel matrix. Last, SVM acts as the classifier to make decision. To test and evaluate the proposed method performance, a series of studies has been conducted on the MINST database. Compared with the other models, the approach proposed shows a better recognition rate and is more satisfying.
机译:特征提取,作为手写数字识别系统中的两个重要组成部分之一,仍然是一个关键的研究区域。主成分分析(PCA)是一种有效的线性特征提取算法,广泛用于手写数字识别系统。但是,它几乎无法处理具有复杂非线性变化的模式,例如写入中断,噪音污染等。本文提出了一种基于距离内核PCA(KPCA)的高效手写的数字识别方法。首先,初始输入数据被映射到具有距离内核的高维空间,并尽可能地描述整个特征。然后,PCA方法用于从内核矩阵中提取主组件。最后,SVM充当分类器做出决定。为了测试和评估所提出的方法性能,已经在Minst数据库上进行了一系列研究。与其他模型相比,提出的方法显示了更好的识别率并且更令人满意。

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