Comparison Analysis of Traditional Machine Learning and Deep Learning
Techniques for Data and Image Classification
- URL: http://arxiv.org/abs/2204.05983v1
- Date: Mon, 11 Apr 2022 11:34:43 GMT
- Title: Comparison Analysis of Traditional Machine Learning and Deep Learning
Techniques for Data and Image Classification
- Authors: Efstathios Karypidis, Stylianos G. Mouslech, Kassiani Skoulariki,
Alexandros Gazis
- Abstract summary: The purpose of the study is to analyse and compare the most common machine learning and deep learning techniques used for computer vision 2D object classification tasks.
Firstly, we will present the theoretical background of the Bag of Visual words model and Deep Convolutional Neural Networks (DCNN)
Secondly, we will implement a Bag of Visual Words model, the VGG16 CNN Architecture.
- Score: 62.997667081978825
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The purpose of the study is to analyse and compare the most common machine
learning and deep learning techniques used for computer vision 2D object
classification tasks. Firstly, we will present the theoretical background of
the Bag of Visual words model and Deep Convolutional Neural Networks (DCNN).
Secondly, we will implement a Bag of Visual Words model, the VGG16 CNN
Architecture. Thirdly, we will present our custom and novice DCNN in which we
test the aforementioned implementations on a modified version of the Belgium
Traffic Sign dataset. Our results showcase the effects of hyperparameters on
traditional machine learning and the advantage in terms of accuracy of DCNNs
compared to classical machine learning methods. As our tests indicate, our
proposed solution can achieve similar - and in some cases better - results than
existing DCNNs architectures. Finally, the technical merit of this article lies
in the presented computationally simpler DCNN architecture, which we believe
can pave the way towards using more efficient architectures for basic tasks.
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