Handwritten digit recognition based on depth neural network

Neural network and depth learning have been widely used in the field of image processing. Good recognition results are often required for complex network models. But the complex network model makes training difficult and takes a long time. In order to obtain a higher recognition rate with a simple model, the BP neural network and the convolutional neural network are studied separately and verified on the MNIST data set. In order to improve the recognition results further, a combined depth network is proposed and validated on the MNIST dataset. The experimental results show that the recognition effect of the combined depth network is obviously better than that of a single network. A more accurate recognition result is achieved by the combined network.

[1]  Sebastiano Impedovo,et al.  Zoning Methods for Hand-Written Character Recognition: An Overview , 2010, 2010 12th International Conference on Frontiers in Handwriting Recognition.

[2]  Yann LeCun,et al.  What is the best multi-stage architecture for object recognition? , 2009, 2009 IEEE 12th International Conference on Computer Vision.

[3]  Subhadip Basu,et al.  Recognition of Numeric Postal Codes from Multi-script Postal Address Blocks , 2009, PReMI.

[4]  Saman A. Zonouz,et al.  CloudID: Trustworthy cloud-based and cross-enterprise biometric identification , 2015, Expert Syst. Appl..

[5]  Masanori Sugisaka,et al.  Research on a Method of Character Recognition for Self-learning Errors , 2017 .

[6]  Sankar K. Pal,et al.  Pattern Recognition and Machine Intelligence , 2015, Lecture Notes in Computer Science.

[7]  Brian Kingsbury,et al.  New types of deep neural network learning for speech recognition and related applications: an overview , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[8]  Yann LeCun,et al.  Regularization of Neural Networks using DropConnect , 2013, ICML.

[9]  Zhengyou Zhang,et al.  Improving multiview face detection with multi-task deep convolutional neural networks , 2014, IEEE Winter Conference on Applications of Computer Vision.