Computer Vision-based Approach for Automated Recognition of Interference Patterns in Digital Inline Holography Microscopy

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Computer Vision-based Approach for Automated Recognition of Interference Patterns in Digital Inline Holography Microscopy

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dc.contributor Universidade Federal de Santa Catarina. pt_BR
dc.contributor.advisor Sobieranski, Antonio Carlos
dc.contributor.author Rockembach, Manoella
dc.date.accessioned 2024-12-18T18:51:18Z
dc.date.available 2024-12-18T18:51:18Z
dc.date.issued 2024-11-28
dc.identifier.uri https://repositorio.ufsc.br/handle/123456789/262148
dc.description TCC (graduação) - Universidade Federal de Santa Catarina, Campus Araranguá, Engenharia de Computação. pt_BR
dc.description.abstract Digital Inline Holographic Microscopy (DIHM) is a lensless shadow imaging technique where a coherent light- source is utilized to illuminate samples and record interference patterns in a digitalizing device. Those patterns, called holograms, carry volumetric information regarding the inspected sample, requiring complex numerical methods to make them distinguishable as occurs in a conventional bright-field microscopic image. However, for many applications, the real-time analysis of holograms is computationally expensive due to the nature of numerical diffraction methods to reconstruct the signals into visual information. To mitigate this problem, in this paper we investigate the use of deep learning approaches to classify those interference patterns, directly from the raw holograms, without the requirement of phase-recovering methods for diffraction. In our approach, we investigated the use of distinct Convolutional Neural Networks (CNNs) architectures and its adaptability to correctly classify holograms in an experimental environment with a dataset generated from synthetic interference patterns produced by the Fresnel Diffraction Method. The computer- generated dataset was produced from 26 classes, resulting in a total of 520 samples after the data augmentation procedure. The obtained results demonstrated the feasibility of the proposed approach to properly classify samples with 96.8% of precision, directly from the holographic interference patterns, avoiding the need for computationally expensive diffraction methods. pt_BR
dc.language.iso eng pt_BR
dc.publisher Araranguá, SC. pt_BR
dc.rights Open Access. en
dc.subject Digital In-line Holography pt_BR
dc.subject Hologram Classification pt_BR
dc.subject Interference Patterns Classification pt_BR
dc.subject Convolutional Neural Networks pt_BR
dc.title Computer Vision-based Approach for Automated Recognition of Interference Patterns in Digital Inline Holography Microscopy pt_BR
dc.type TCCgrad pt_BR


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