Deep learning: Applications, architectures, models, tools, and frameworks: A comprehensive survey

Author:

Gheisari Mehdi123ORCID,Ebrahimzadeh Fereshteh4,Rahimi Mohamadtaghi5,Moazzamigodarzi Mahdieh6,Liu Yang17ORCID,Dutta Pramanik Pijush Kanti8,Heravi Mohammad Ali9,Mehbodniya Abolfazl10ORCID,Ghaderzadeh Mustafa11ORCID,Feylizadeh Mohammad Reza12,Kosari Saeed13

Affiliation:

1. School of Computer Science and Technology Harbin Institute of Technology (Shenzhen) Shenzhen China

2. Department of Cognitive Computing, Institute of Computer Science and Engineering, Saveetha School of Engineering Saveetha Institute of Medical and Technical Sciences Chennai India

3. Department of Computer Science Islamic Azad University Tehran Iran

4. Computer Engineering Department Bu‐Ali Sina University Hamedan Iran

5. Department of Mathematics and Statistics Iran University of Science and Technology Tehran Iran

6. Department of Mathematics and Statistics University of Northern British Columbia BC Canada

7. Peng Cheng Laboratory Shenzhen China

8. Deprtment of Technology Jodhpur Institute of Engineering & Technology Jodhpur India

9. Department of Computer Engineering Sadjad University of Technology Mashhad Iran

10. Department of Electronics and Communications Engineering Kuwait College of Science and Technology Doha District Kuwait

11. Department of Artificial Intelligence Smart University of Medical Sciences Tehran Iran

12. Department of Industrial Engineering, Shiraz Branch Islamic Azad University Shiraz Iran

13. Institute of Computing Science and Technology, Guangzhou University Guangzhou China

Abstract

AbstractDeep Learning (DL) is a subfield of machine learning that significantly impacts extracting new knowledge. By using DL, the extraction of advanced data representations and knowledge can be made possible. Highly effective DL techniques help to find more hidden knowledge. Deep learning has a promising future due to its great performance and accuracy. We need to understand the fundamentals and the state‐of‐the‐art of DL to leverage it effectively. A survey on DL ways, advantages, drawbacks, architectures, and methods to have a straightforward and clear understanding of it from different views is explained in the paper. Moreover, the existing related methods are compared with each other, and the application of DL is described in some applications, such as medical image analysis, handwriting recognition, and so on.

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

Reference106 articles.

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