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Handwritten digit recognition based on DCT features and SVM classifier

机译:基于DCT功能和SVM分类器的手写数字识别

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Handwritten digit recognition is an active topic in optical character recognition applications and pattern learning research. However, the extraction of informative features from handwritten digits for recognition task remains the most important step for achieving high accuracy. This work investigates the effectiveness of four feature extraction approaches based on Discrete Cosine Transform (DCT) to capture discriminative features of handwritten Digits and compare it to classical PCA. These approaches are: DCT upper left corner(ULC) coefficients, DCT zigzag coefficients, block based DCT ULC coefficients and block based DCT zigzag coefficients. The coefficients of each DCT variant are used as input data for Support Vector Machine Classifier to evaluate their performances. The objective of this work is to identify the optimal feature extraction approach that speeds up the learning algorithms while maximizing the classification accuracy. The results have been analysed and compared in terms of classification accuracy and reduction rate and the findings have demonstrated that the block based DCT zigzag feature extraction yields a superior performance than its counterparts.
机译:手写数字识别是光学字符识别应用和模式学习研究中的活跃主题。但是,从手写数字中提取信息特征以进行识别任务仍然是实现高精度的最重要步骤。这项工作调查了基于离散余弦变换(DCT)的四种特征提取方法来捕获手写数字的区别特征并将其与经典PCA进行比较的有效性。这些方法是:DCT左上角(ULC)系数,DCT之字形系数,基于块的DCT ULC系数和基于块的DCT之字形系数。每个DCT变量的系数都用作支持向量机分类器的输入数据,以评估其性能。这项工作的目的是确定最佳的特征提取方法,该方法可以在最大程度地提高分类准确性的同时,加快学习算法的速度。对结果进行了分析和比较,得出分类准确度和减少率,发现表明基于块的DCT之字形特征提取比其同类产品具有更高的性能。

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