Automated classification of Bacterial Images extracted from Digital Microscope via Bag of Words Model

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Date

2018

Journal Title

Journal ISSN

Volume Title

Type

Article

Publisher

IEEE

Series Info

2018 9TH CAIRO INTERNATIONAL BIOMEDICAL ENGINEERING CONFERENCE (CIBEC);Pages: 86-89

Doi

Scientific Journal Rankings

Abstract

The performance recognition of bacteria cell images is an effective survey for treatment of various diseases caused by the bacteria. Many algorithms for bacteria classification are designed for the needs of analysis of large-scale microscopic image bacteria. However, the biologist interpretation is suffered from insufficient information and thus may lead to limited accuracy in the bacteria classification process. To handle this drawback, machine learning tools, and image analysis approaches tackled identification of different bacteria species for improving the clinical microbiology investigation. In the proposed study, 200 bacterial images for ten different bacteria species with 20 images for each specie are extracted from DIBaS (Digital Images of Bacteria Species dataset). This proposed framework is divided into image preprocessing phase which obtained by histogram equalization, feature extraction by Bag-of-words model and classification phase by Support Vector Machine (SVM). The main objective is to enhance the bacterial images and find the image feature descriptors from the enhanced images which allowing to classify the bacterial images. The experimental results provided an average accuracy of 97% with classifier speed for automated detection and classification of bacterial images which would greatly reduce the disease outbreaks in future researches.

Description

Accession Number: WOS:000462274600022

Keywords

University for IDENTIFICATION, Support Vector Machine, Bacteria images classification, clinical microbiology investigation, histogram equalization, Bag-of-words

Citation

Cited References in Web of Science Core Collection: 24