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Hybrid CNN-SVM Classifier for Handwritten Digit Recognition

机译:手写数字识别的混合CNN-SVM分类器

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The aim of this paper is to develop a hybrid model of a powerful Convolutional Neural Networks (CNN) and Support Vector Machine (SVM) for recognition of handwritten digit from MNIST dataset. The proposed hybrid model combines the key properties of both the classifiers. In the proposed hybrid model, CNN works as an automatic feature extractor and SVM works as a binary classifier. The MNIST dataset of handwritten digits is used for training and testing the algorithm adopted in the proposed model. The MNIST dataset consists of handwritten digits images which are diverse and highly distorted. The receptive field of CNN helps in automatically extracting the most distinguishable features from these handwritten digits. The experimental results demonstrate the effectiveness of the proposed framework by achieving a recognition accuracy of 99.28% over MNIST handwritten digits dataset.
机译:本文的目的是开发一个强大的卷积神经网络(CNN)的混合模型,并支持向量机(SVM),用于识别来自MNIST DataSet的手写数字。所提出的混合模型组合了分类器的关键属性。在所提出的混合模型中,CNN用作自动特征提取器,SVM用作二进制分类器。手写数字的Mnist数据集用于培训和测试所提出的模型中采用的算法。 MNIST DataSet由手写数字图像组成,这些数字是多样化的,并且非常扭曲。 CNN的接收领域有助于自动提取来自这些手写数字的最差的特征。实验结果证明了所提出的框架的有效性,通过在MNIST手写数字数据集中实现99.28%的识别准确性。

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