Research Data
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This collection contains research data generated in research and doctoral projects at the Hamburg University of Technology (TUHH). The associated files are available for direct access, unless subject to access restrictions.
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Browsing Research Data by Subject "3D reconstruction"
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Research Data with files Enhancing 3D reconstruction accuracy of multi-voltage FIB tomography images using multimodal machine learning(2023-12-13) ;Sardhara, Trushal; ; ;Riedel, Lukas; ; ; This dataset contains simulated multi-voltage FIB tomography data of hierarchical nanoporous gold, trained machine learning model weights and segmentation results of synthetic and real hierarchical nanoporous gold data. For more information, please refer to the published research article: Enhancing 3D reconstruction accuracy of multi-voltage FIB tomography images using multimodal machine learning.Data Type: Dataset68 59 - Some of the metrics are blocked by yourconsent settings
Research Data with files Research data - Generative adversarial networks for creating realistic training data for machine learning-based segmentation of FIB tomography data(2025-01-22)Sardhara, TrushalThis dataset contains simulated and domain-adapted multi-voltage FIB tomography data on hierarchical nanoporous gold, trained machine learning model weights, and segmentation results of synthetic and real hierarchical nanoporous gold data. For more information, please refer to the published research article: Generative adversarial networks for creating realistic training data for machine learning-based segmentation of FIB tomography dataData Type: Dataset69 32 - Some of the metrics are blocked by yourconsent settings
Research Data with files Training deep neural networks to reconstruct nanoporous structures from FIB tomography images using synthetic training data(2022-02-02) ;Sardhara, Trushal; ; ; ; ; This dataset contains simulated FIB tomography data of nanoporous/hierarchical nanoporous gold, synthetic FIB-SEM images of hierarchical nanoporous gold and segmentation results of real hierarchical nanoporous gold dataset. Abstract of the paper: Focused ion beam (FIB) tomography is a destructive technique used to collect three-dimensional (3D) structural information at a resolution of a few nanometers. For FIB tomography, a material is eroded in a layer-wise manner. After the erosion of each layer (whose thickness ranges on the nanometer scale), the current material surface is imaged by a scanning electron microscope. Especially for nanoporous materials, the reconstruction of the 3D microstructure of the material, from the information collected during FIB tomography, is impaired by the shine-through effect. This effect prevents a unique mapping between voxel intensity values and material phase (e.g., solid or void). It often substantially reduces the accuracy of conventional methods for image segmentation. Here we demonstrate how machine learning can be used to tackle this problem. A bottleneck in doing so is the availability of sufficient training data. To overcome this problem, we present a novel approach to generate synthetic FIB-SEM images using Monte Carlo simulations, which can be used as training data for machine learning. Based on this approach, we compare the performance of different machine learning architectures for segmenting FIB tomography data of nanoporous materials. We demonstrate that two-dimensional (2D) convolutional neural network (CNN) architectures with a group of adjacent slices as input data as well as 3D CNN perform best and can improve the segmentation performance by more than 100%.Data Type: Dataset248 429