2024
DOI: 10.1101/2024.08.15.608040
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Semi-Automatic Segmentation ofPseudomonas koreensisandEscherichia colifor Bacterial Growth Characterization

Diana A. Alvarado-Ruiz,
Keny Ordaz-Hernández,
Lourdes Díaz-Jiménez
et al.

Abstract: Bacterial characterization is a crucial discipline within microbiology. Given the manual and labor-intensive nature of this task, our aim is to introduce a semi-automatic segmentation method that enhances efficiency while preserving the rich details of bacterial colonies. We propose using the k-means clusterization algorithm to analyze and segment images of bacterial cultures, specifically those of Pseudomonas koreensis and Escherichia coli. Unlike existing methods that focus primarily on colony counting, our … Show more

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