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Classification of Japanese Kanji using principal component analysis as a preprocessor to an artificial neural network

机译:使用主成分分析作为人工神经网络的预处理程序对日语汉字进行分类

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Applies principal component analysis (PCA) to the problem of classifying handwritten Kanji characters. PCA is a statistical tool which can yield substantial data reduction by representing each pattern in terms of a relatively small subset of orthonormal features (principal components) extracted from the input set. A PCA preprocessor to an artificial neural network has been used to reduce the dimensionality of a set of handwritten Kanji patterns to less than 5% of that of the original images. Reconstructions of the patterns from the preprocessed versions are quite impressive. Preliminary results yield nearly 90% correct classification of exemplars of 40 different Kanji characters, and also indicate that reconstruction requires more information than classification. These results demonstrate the effectiveness of PCA as a preprocessor for neural networks.
机译:将主成分分析(PCA)应用到手写汉字字符的分类问题。 PCA是一种统计工具,可以通过从输入集中提取的相对较小的正交特征(主成分)子集表示每个模式,从而减少大量数据。人工神经网络的PCA预处理器已用于将一组手写汉字图案的维数减少到原始图像的维数的5%以下。预处理版本中的模式重构非常令人印象深刻。初步结果对40个不同汉字字符的示例进行了将近90%的正确分类,并且还表明重建需要比分类更多的信息。这些结果证明了PCA作为神经网络预处理器的有效性。

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