scholarly journals Boosting Resolution and Recovering Texture of 2D and 3D Micro‐CT Images with Deep Learning

2020 ◽  
Vol 56 (1) ◽  
Author(s):  
Ying Da Wang ◽  
Ryan T. Armstrong ◽  
Peyman Mostaghimi
Keyword(s):  
Micro Ct ◽  
2021 ◽  
Vol 104 ◽  
pp. 107185 ◽  
Author(s):  
Ying Da Wang ◽  
Mehdi Shabaninejad ◽  
Ryan T. Armstrong ◽  
Peyman Mostaghimi

Author(s):  
Carlos E. M. dos Anjos ◽  
Manuel R. V. Avila ◽  
Adna G. P. Vasconcelos ◽  
Aurea M. Pereira Neta ◽  
Lizianne C. Medeiros ◽  
...  

2021 ◽  
Author(s):  
Evropi Toulkeridou ◽  
Carlos Enrique Gutierrez ◽  
Daniel Baum ◽  
Kenji Doya ◽  
Evan P Economo

Three-dimensional (3D) imaging, such as micro-computed tomography (micro-CT), is increasingly being used by organismal biologists for precise and comprehensive anatomical characterization. However, the segmentation of anatomical structures remains a bottleneck in research, often requiring tedious manual work. Here, we propose a pipeline for the fully-automated segmentation of anatomical structures in micro-CT images utilizing state-of-the-art deep learning methods, selecting the ant brain as a testcase. We implemented the U-Net architecture for 2D image segmentation for our convolutional neural network (CNN), combined with pixel-island detection. For training and validation of the network, we assembled a dataset of semi-manually segmented brain images of 94 ant species. The trained network predicted the brain area in ant images fast and accurately; its performance tested on validation sets showed good agreement between the prediction and the target, scoring 80% Intersection over Union(IoU) and 90% Dice Coefficient (F1) accuracy. While manual segmentation usually takes many hours for each brain, the trained network takes only a few minutes.Furthermore, our network is generalizable for segmenting the whole neural system in full-body scans, and works in tests on distantly related and morphologically divergent insects (e.g., fruit flies). The latter suggest that methods like the one presented here generally apply across diverse taxa. Our method makes the construction of segmented maps and the morphological quantification of different species more efficient and scalable to large datasets, a step toward a big data approach to organismal anatomy.


2018 ◽  
Vol 26 ◽  
pp. S469 ◽  
Author(s):  
T. Frondelius ◽  
A. Tiulpin ◽  
P. Lehenkari ◽  
H.J. Nieminen ◽  
S. Saarakkala

2021 ◽  
Vol 197 ◽  
pp. 110551
Author(s):  
Radmir Karamov ◽  
Stepan V. Lomov ◽  
Ivan Sergeichev ◽  
Yentl Swolfs ◽  
Iskander Akhatov

2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Johan Phan ◽  
Leonardo C. Ruspini ◽  
Frank Lindseth

AbstractObtaining an accurate segmentation of images obtained by computed microtomography (micro-CT) techniques is a non-trivial process due to the wide range of noise types and artifacts present in these images. Current methodologies are often time-consuming, sensitive to noise and artifacts, and require skilled people to give accurate results. Motivated by the rapid advancement of deep learning-based segmentation techniques in recent years, we have developed a tool that aims to fully automate the segmentation process in one step, without the need for any extra image processing steps such as noise filtering or artifact removal. To get a general model, we train our network using a dataset made of high-quality three-dimensional micro-CT images from different scanners, rock types, and resolutions. In addition, we use a domain-specific augmented training pipeline with various types of noise, synthetic artifacts, and image transformation/distortion. For validation, we use a synthetic dataset to measure accuracy and analyze noise/artifact sensitivity. The results show a robust and accurate segmentation performance for the most common types of noises present in real micro-CT images. We also compared the segmentation of our method and five expert users, using commercial and open software packages on real rock images. We found that most of the current tools fail to reduce the impact of local and global noises and artifacts. We quantified the variation on human-assisted segmentation results in terms of physical properties and observed a large variation. In comparison, the new method is more robust to local noises and artifacts, outperforming the human segmentation and giving consistent results. Finally, we compared the porosity of our model segmented images with experimental porosity measured in the laboratory for ten different untrained samples, finding very encouraging results.


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