DETCID: Detection of Elongated Touching Cells with Inhomogeneous Illumination using a Deep Adversarial Network
Ali Memariani, Ioannis A. Kakadiaris

TL;DR
This paper introduces DETCID, a deep adversarial network that effectively detects elongated, touching cells in SEM images despite challenges like inhomogeneous illumination and occlusion, outperforming existing methods by 20%.
Contribution
The paper presents a novel adversarial training approach for robust cell detection in SEM images, addressing illumination and occlusion issues without pre-processing.
Findings
Achieves at least 20% improvement in mean average precision over state-of-the-art methods.
Effectively detects touching cells in various orientations.
Robust to inhomogeneous illumination and occlusion without pre-processing.
Abstract
Clostridioides difficile infection (C. diff) is the most common cause of death due to secondary infection in hospital patients in the United States. Detection of C. diff cells in scanning electron microscopy (SEM) images is an important task to quantify the efficacy of the under-development treatments. However, detecting C. diff cells in SEM images is a challenging problem due to the presence of inhomogeneous illumination and occlusion. An Illumination normalization pre-processing step destroys the texture and adds noise to the image. Furthermore, cells are often clustered together resulting in touching cells and occlusion. In this paper, DETCID, a deep cell detection method using adversarial training, specifically robust to inhomogeneous illumination and occlusion, is proposed. An adversarial network is developed to provide region proposals and pass the proposals to a feature…
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Taxonomy
TopicsClostridium difficile and Clostridium perfringens research · Image Processing Techniques and Applications · Bacterial Identification and Susceptibility Testing
