Telecommunications Science ›› 2019, Vol. 35 ›› Issue (11): 58-74.doi: 10.11959/j.issn.1000-0801.2019268

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Review of image classification based on deep learning

Fu SU1,Qin LV1,Renze LUO2   

  1. 1 School of Electrical and Information Engineering,Southwest Petroleum University,Chengdu 610500,China
    2 School of Earth Sciences and Technology,Southwest Petroleum University,Chengdu 610500,China
  • Revised:2019-11-10 Online:2019-11-01 Published:2019-12-23
  • Supported by:
    The National Key Research and Development Program(2016YFC0601100);Sichuan Science and Technology Project(2019CXRC0027)

Abstract:

In recent years,deep learning performed superior in the field of computer vision to traditional machine learning technology.Indeed,image classification issue drew great attention as a prominent research topic.For traditional image classification method,huge volume of image data was of difficulty to process and the requirements for the operation accuracy and speed of image classification could not be met.However,deep learning-based image classification method broke through the bottleneck and became the mainstream method to finish these classification tasks.The research significance and current development status of image classification was introduced in detail.Also,besides the structure,advantages and limitations of the convolutional neural networks,the most important deep learning methods,such as auto-encoders,deep belief networks and deep Boltzmann machines image classification were concretely analyzed.Furthermore,the differences and performance on common datasets of these methods were compared and analyzed.In the end,the shortcomings of deep learning methods in the field of image classification and the possible future research directions were discussed.

Key words: deep learning, image classification, auto-encoders, deep belief networks, CNN

CLC Number: 

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