Explore open access research and scholarly works from STORE - University of Staffordshire Online Repository

Advanced Search

An Application of pre-Trained CNN for Image Classification

Abdullah, . and HASAN, Mohammad (2017) An Application of pre-Trained CNN for Image Classification. In: 20th International Conference on Computer and Information Technology (ICCIT 2017), 22 Dec 2017, Dhaka, Bangladesh.

[thumbnail of abdullah-pre-trained-CNN-classification-v3-msh-submitted-CR-temp.pdf]
Preview
Text
abdullah-pre-trained-CNN-classification-v3-msh-submitted-CR-temp.pdf - AUTHOR'S ACCEPTED Version (default)
Available under License Type All Rights Reserved.

Download (820kB) | Preview

Abstract or description

Image Classification is a branch of computer vision where images are classified into categories. This is a very important topic in today’s context as large databases of images are becoming very common. Images can be classified as supervised or unsupervised techniques. This paper investigates supervised classification and evaluates performances of two classifiers as well as two feature extraction techniques. The classifiers used are Linear Support Vector Machine (SVM) and Quadratic SVM. The classifiers are trained and tested with features extracted using Bag of Words and pre-trained Convolution Neural Network (CNN), namely AlexNet. It has been observed that the classifiers are able to classify images with very high accuracy when trained with features from CNN. The image categories consisted of Binocular, Motorbikes, Watches, Airplanes, and Faces, which are taken from Caltech 265 image archive.

Item Type: Conference or Workshop Item (Paper)
Faculty: School of Computing and Digital Technologies > Computing
Event Title: 20th International Conference on Computer and Information Technology (ICCIT 2017)
Event Location: Dhaka, Bangladesh
Event Dates: 22 Dec 2017
Depositing User: Mohammad HASAN
Date Deposited: 13 Mar 2018 15:19
Last Modified: 24 Feb 2023 13:50
URI: https://eprints.staffs.ac.uk/id/eprint/4245

Actions (login required)

View Item
View Item