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Effective handwritten digit recognition based on multi-feature extraction and deep analysis

机译:基于多特征提取和深度分析的有效手写数字识别

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Handwritten digit recognition is an important research topic in computer vision and pattern recognition. This paper proposes an effective handwritten digit recognition approach based on specific multi-feature extraction and deep analysis. First, we normalize images of various sizes and stroke thickness in preprocessing to eliminate negative information and keep relevant features. Secondly, considering that handwritten digit image recognition is different from traditional image semantics recognition, we propose specific feature definitions, including structure features, distribution features and projection features. Moreover, we fuse multiple features into the deep neural networks for semantics recognition. Experiments results on benchmark database of MNIST handwritten digit images show that the performance of our algorithm is remarkable and demonstrate its superiority over several existing algorithms.
机译:手写数字识别是计算机视觉和模式识别的重要研究课题。本文提出了一种基于特定的多特征提取和深度分析的有效手写数字识别方法。首先,我们在预处理中对各种大小和笔划粗细的图像进行归一化,以消除负面信息并保留相关特征。其次,考虑到手写数字图像识别与传统图像语义识别不同,我们提出了具体的特征定义,包括结构特征,分布特征和投影特征。此外,我们将多种功能融合到深度神经网络中以进行语义识别。在MNIST手写数字图像的基准数据库上进行的实验结果表明,该算法的性能非常出色,并证明了其优于几种现有算法的优越性。

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