Review of deep learning: concepts, CNN architectures, challenges, applications, future directions

被引:0
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作者
Laith Alzubaidi
Jinglan Zhang
Amjad J. Humaidi
Ayad Al-Dujaili
Ye Duan
Omran Al-Shamma
J. Santamaría
Mohammed A. Fadhel
Muthana Al-Amidie
Laith Farhan
机构
[1] Queensland University of Technology,School of Computer Science
[2] University of Technology,Control and Systems Engineering Department
[3] Middle Technical University,Electrical Engineering Technical College
[4] University of Missouri,Faculty of Electrical Engineering & Computer Science
[5] University of Information Technology & Communications,AlNidhal Campus
[6] University of Jaén,Department of Computer Science
[7] University of Sumer,College of Computer Science and Information Technology
[8] Manchester Metropolitan University,School of Engineering
来源
关键词
Deep learning; Machine learning; Convolution neural network (CNN); Deep neural network architectures; Deep learning applications; Image classification; Transfer learning; Medical image analysis; Supervised learning; FPGA; GPU;
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摘要
In the last few years, the deep learning (DL) computing paradigm has been deemed the Gold Standard in the machine learning (ML) community. Moreover, it has gradually become the most widely used computational approach in the field of ML, thus achieving outstanding results on several complex cognitive tasks, matching or even beating those provided by human performance. One of the benefits of DL is the ability to learn massive amounts of data. The DL field has grown fast in the last few years and it has been extensively used to successfully address a wide range of traditional applications. More importantly, DL has outperformed well-known ML techniques in many domains, e.g., cybersecurity, natural language processing, bioinformatics, robotics and control, and medical information processing, among many others. Despite it has been contributed several works reviewing the State-of-the-Art on DL, all of them only tackled one aspect of the DL, which leads to an overall lack of knowledge about it. Therefore, in this contribution, we propose using a more holistic approach in order to provide a more suitable starting point from which to develop a full understanding of DL. Specifically, this review attempts to provide a more comprehensive survey of the most important aspects of DL and including those enhancements recently added to the field. In particular, this paper outlines the importance of DL, presents the types of DL techniques and networks. It then presents convolutional neural networks (CNNs) which the most utilized DL network type and describes the development of CNNs architectures together with their main features, e.g., starting with the AlexNet network and closing with the High-Resolution network (HR.Net). Finally, we further present the challenges and suggested solutions to help researchers understand the existing research gaps. It is followed by a list of the major DL applications. Computational tools including FPGA, GPU, and CPU are summarized along with a description of their influence on DL. The paper ends with the evolution matrix, benchmark datasets, and summary and conclusion.
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