Recognition and Classification of Fast Food Images

Article ID

CSTGV3PWUF

Recognition and Classification of Fast Food Images

Amatul Bushra Akhi
Amatul Bushra Akhi Jahangirnagar University
Farzana Akter
Farzana Akter
Tania Khatun
Tania Khatun
Mohammad Shorif Uddin
Mohammad Shorif Uddin
DOI

Abstract

Image processing is widely used for food recognition. A lot of different algorithms regarding food identification and classification have been proposed in recent research works. In this paper, we have use an easy and one of the most powerful machine learning technique from the field of deep learning to recognize and classify different categories of fast food images. We have used a pre trained Convolutional Neural Network (CNN) as a feature extractor to train an image category classifier. CNN’s can learn rich feature representations which often perform much better than other handcrafted features such as histogram of oriented gradients (HOG), Local binary patterns (LBP), or speeded up robust features (SURF). A multiclass linear Support Vector Machine (SVM) classifier trained with extracted CNN features is used to classify fast food images to ten different classes. After working on two different benchmark databases, we got the success rate of 99.5% which is higher than the accuracy achieved using bag of features (BoF) and SURF.

Recognition and Classification of Fast Food Images

Image processing is widely used for food recognition. A lot of different algorithms regarding food identification and classification have been proposed in recent research works. In this paper, we have use an easy and one of the most powerful machine learning technique from the field of deep learning to recognize and classify different categories of fast food images. We have used a pre trained Convolutional Neural Network (CNN) as a feature extractor to train an image category classifier. CNN’s can learn rich feature representations which often perform much better than other handcrafted features such as histogram of oriented gradients (HOG), Local binary patterns (LBP), or speeded up robust features (SURF). A multiclass linear Support Vector Machine (SVM) classifier trained with extracted CNN features is used to classify fast food images to ten different classes. After working on two different benchmark databases, we got the success rate of 99.5% which is higher than the accuracy achieved using bag of features (BoF) and SURF.

Amatul Bushra Akhi
Amatul Bushra Akhi Jahangirnagar University
Farzana Akter
Farzana Akter
Tania Khatun
Tania Khatun
Mohammad Shorif Uddin
Mohammad Shorif Uddin

No Figures found in article.

Amatul Bushra Akhi. 2018. “. Global Journal of Computer Science and Technology – F: Graphics & Vision GJCST-F Volume 18 (GJCST Volume 18 Issue F1): .

Download Citation

Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Classification
GJCST-F Classification: I.4.0
Keywords
Article Matrices
Total Views: 6214
Total Downloads: 1515
2026 Trends
Research Identity (RIN)
Related Research
Our website is actively being updated, and changes may occur frequently. Please clear your browser cache if needed. For feedback or error reporting, please email [email protected]

Request Access

Please fill out the form below to request access to this research paper. Your request will be reviewed by the editorial or author team.
X

Quote and Order Details

Contact Person

Invoice Address

Notes or Comments

This is the heading

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

High-quality academic research articles on global topics and journals.

Recognition and Classification of Fast Food Images

Amatul Bushra Akhi
Amatul Bushra Akhi Jahangirnagar University
Farzana Akter
Farzana Akter
Tania Khatun
Tania Khatun
Mohammad Shorif Uddin
Mohammad Shorif Uddin

Research Journals