TY - JOUR
T1 - Backbones-review
T2 - Feature extractor networks for deep learning and deep reinforcement learning approaches in computer vision
AU - Elharrouss, Omar
AU - Akbari, Younes
AU - Almadeed, Noor
AU - Al-Maadeed, Somaya
N1 - Publisher Copyright:
© 2024
PY - 2024/8
Y1 - 2024/8
N2 - To understand the real world using various types of data, Artificial Intelligence (AI) is the most used technique nowadays. While finding the pattern within the analyzed data represents the main task. This is performed by extracting representative features step, which is proceeded using the statistical algorithms or using some specific filters. However, the selection of useful features from large-scale data represented a crucial challenge. Now, with the development of convolution neural networks (CNNs), feature extraction operation has become more automatic and easier. CNNs allow to work on large-scale size of data, as well as cover different scenarios for a specific task. For computer vision tasks, convolutional networks are used to extract features and also for the other parts of a deep learning model. The selection of a suitable network for feature extraction or the other parts of a DL model is not random work. So, the implementation of such a model can be related to the target task as well as its computational complexity. Many networks have been proposed and become famous networks used for any DL models in any AI task. These networks are exploited for feature extraction or at the beginning of any DL model which is named backbones. A backbone is a known network trained and demonstrates its effectiveness. In this paper, an overview of the existing backbones, e.g. VGGs, ResNets, DenseNet, etc, is given with a detailed description. Also, a couple of computer vision tasks are discussed by providing a review of each task regarding the backbones used. In addition, a comparison in terms of performance is also provided, based on the backbone used for each task.
AB - To understand the real world using various types of data, Artificial Intelligence (AI) is the most used technique nowadays. While finding the pattern within the analyzed data represents the main task. This is performed by extracting representative features step, which is proceeded using the statistical algorithms or using some specific filters. However, the selection of useful features from large-scale data represented a crucial challenge. Now, with the development of convolution neural networks (CNNs), feature extraction operation has become more automatic and easier. CNNs allow to work on large-scale size of data, as well as cover different scenarios for a specific task. For computer vision tasks, convolutional networks are used to extract features and also for the other parts of a deep learning model. The selection of a suitable network for feature extraction or the other parts of a DL model is not random work. So, the implementation of such a model can be related to the target task as well as its computational complexity. Many networks have been proposed and become famous networks used for any DL models in any AI task. These networks are exploited for feature extraction or at the beginning of any DL model which is named backbones. A backbone is a known network trained and demonstrates its effectiveness. In this paper, an overview of the existing backbones, e.g. VGGs, ResNets, DenseNet, etc, is given with a detailed description. Also, a couple of computer vision tasks are discussed by providing a review of each task regarding the backbones used. In addition, a comparison in terms of performance is also provided, based on the backbone used for each task.
KW - Backbones
KW - Deep learning
KW - Deep reinforcement learning
KW - Feature extraction
KW - ResNets
KW - VGGs
UR - http://www.scopus.com/inward/record.url?scp=85195255073&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85195255073&partnerID=8YFLogxK
U2 - 10.1016/j.cosrev.2024.100645
DO - 10.1016/j.cosrev.2024.100645
M3 - Review article
AN - SCOPUS:85195255073
SN - 1574-0137
VL - 53
JO - Computer Science Review
JF - Computer Science Review
M1 - 100645
ER -