A Comprehensive Survey on AlexNet improvements and fusion techniques
1Dept. of Electrical Engineering, Benha Faculty of Engineering, Benha University, Benha, Egypt.
Emails:bahaaalkhtaib@gmail.com,b.mohammed50868@beng.bu.edu.eg; ayman.mohamed01@bhit.bu.edu.eg; wael.ahmed@bhit.bu.edu.eg
Abstract
Machine- and deep-learning techniques have been used in numerous real-world applications. One of the famous deep-learning methodologies is the Deep Convolutional Neural Network. AlexNet is a well-known global deep convolutional neural network architecture. AlexNet significantly contributes to solving different classification problems in different applications based on deep learning. Therefore, it is necessary to continuously improve the model to enhance its performance. This survey study formally defined the AlexNet architecture, presented information on current improvement solutions, and reviewed applications based on AlexNet improvements. This work also presents a simple survey based on a fusion of AlexNet with different machine-learning techniques for recent research in biomedical applications. In the survey results for about 11 research papers for both improvement and fusion techniques of AlexNet, it was clear that the fusion was the superior one with 99.72, and the improved one was 99.7%. In the conclusion and discussion section, there was a comparison between the improved techniques and fusion techniques of AlexNet and a proposal for future work on AlexNet development.
Keywords: Artificial Intelligence; Deep Learning; AlexNet improvements; Machine learning; Convolutional Neural Networks; Fusion of AlexNet