IEEE Access (Jan 2022)

Automatic Identification of Single Bacterial Colonies Using Deep and Transfer Learning

  • Shimaa A. Nagro,
  • Mohammed A. Kutbi,
  • Wafa M. Eid,
  • Essam J. Alyamani,
  • Mohammed H. Abutarboush,
  • Musaad A. Altammami,
  • Bandar K. Sendy

DOI
https://doi.org/10.1109/ACCESS.2022.3221958
Journal volume & issue
Vol. 10
pp. 120181 – 120190

Abstract

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Bacterial classification is a vital step in medical diagnosis. This procedure normally has several stages. An early stage involves inspecting the morphology of the bacterial colonies. Traditionally, a bacterial colony expert inspects the sample to determine the type of bacteria through visual inspection or molecular biology techniques. With advances in image processing, specifically, the use of deep and transfer learning techniques, and the wide availability of cameras, we applied deep and transfer learning techniques to address this task without requiring expert knowledge or sample shipping. We used a convolutional neural network (CNN) to identify different bacterial colonies based on their appearance in images captured by cell phone cameras. In this paper, we collected a dataset that contains images of different bacteria taken by cell phone cameras with various settings. Thus, images of two classes of bacterial colonies were obtained in King Abdulaziz City for Science and Technology. The dataset contains 8,043 images. The experimental results show that our application has high accuracy without requiring expert inspections.

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