In recent years, the deep learning algorithms were gradually understood and accepted. It needs to take too many samples to train. Since the implementation of deep learning algorithm, it seems that the past classical algorithms have become gloomy. In this paper, we get an intelligent pattern recognition model by combining some classical algorithms in the past and extrapolating the convolution algorithm. This new model is based on a single regular sample, with its advanced generalization capabilities far beyond those of deep learning algorithms. Experimental results on MNIST, QMNIST, CMU PIE and Extended Yale B databases indicate that the proposed model is better than the related methods as compared with.
Published in | Automation, Control and Intelligent Systems (Volume 7, Issue 4) |
DOI | 10.11648/j.acis.20190704.11 |
Page(s) | 99-110 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2019. Published by Science Publishing Group |
Pattern Recognition, Convolution Algorithm, Single Sample, Face Recognition, Handwritten Digital Recognition
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APA Style
Shuduo Zhao, Xu Han, Jin Xu, Haiyun Chen, Guanqin Feng, et al. (2019). Layered Feature Recognition Algorithm Based on Combined Convolution. Automation, Control and Intelligent Systems, 7(4), 99-110. https://doi.org/10.11648/j.acis.20190704.11
ACS Style
Shuduo Zhao; Xu Han; Jin Xu; Haiyun Chen; Guanqin Feng, et al. Layered Feature Recognition Algorithm Based on Combined Convolution. Autom. Control Intell. Syst. 2019, 7(4), 99-110. doi: 10.11648/j.acis.20190704.11
AMA Style
Shuduo Zhao, Xu Han, Jin Xu, Haiyun Chen, Guanqin Feng, et al. Layered Feature Recognition Algorithm Based on Combined Convolution. Autom Control Intell Syst. 2019;7(4):99-110. doi: 10.11648/j.acis.20190704.11
@article{10.11648/j.acis.20190704.11, author = {Shuduo Zhao and Xu Han and Jin Xu and Haiyun Chen and Guanqin Feng and Chenxin Ma and Wenhao Zhou}, title = {Layered Feature Recognition Algorithm Based on Combined Convolution}, journal = {Automation, Control and Intelligent Systems}, volume = {7}, number = {4}, pages = {99-110}, doi = {10.11648/j.acis.20190704.11}, url = {https://doi.org/10.11648/j.acis.20190704.11}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.acis.20190704.11}, abstract = {In recent years, the deep learning algorithms were gradually understood and accepted. It needs to take too many samples to train. Since the implementation of deep learning algorithm, it seems that the past classical algorithms have become gloomy. In this paper, we get an intelligent pattern recognition model by combining some classical algorithms in the past and extrapolating the convolution algorithm. This new model is based on a single regular sample, with its advanced generalization capabilities far beyond those of deep learning algorithms. Experimental results on MNIST, QMNIST, CMU PIE and Extended Yale B databases indicate that the proposed model is better than the related methods as compared with.}, year = {2019} }
TY - JOUR T1 - Layered Feature Recognition Algorithm Based on Combined Convolution AU - Shuduo Zhao AU - Xu Han AU - Jin Xu AU - Haiyun Chen AU - Guanqin Feng AU - Chenxin Ma AU - Wenhao Zhou Y1 - 2019/12/24 PY - 2019 N1 - https://doi.org/10.11648/j.acis.20190704.11 DO - 10.11648/j.acis.20190704.11 T2 - Automation, Control and Intelligent Systems JF - Automation, Control and Intelligent Systems JO - Automation, Control and Intelligent Systems SP - 99 EP - 110 PB - Science Publishing Group SN - 2328-5591 UR - https://doi.org/10.11648/j.acis.20190704.11 AB - In recent years, the deep learning algorithms were gradually understood and accepted. It needs to take too many samples to train. Since the implementation of deep learning algorithm, it seems that the past classical algorithms have become gloomy. In this paper, we get an intelligent pattern recognition model by combining some classical algorithms in the past and extrapolating the convolution algorithm. This new model is based on a single regular sample, with its advanced generalization capabilities far beyond those of deep learning algorithms. Experimental results on MNIST, QMNIST, CMU PIE and Extended Yale B databases indicate that the proposed model is better than the related methods as compared with. VL - 7 IS - 4 ER -