TIGRE
GPU-based CT reconstruction software
A toolbox providing high-performance algorithms for tomographic reconstruction on GPUs
TIGRE: Tomographic Iterative GPU-based Reconstruction Toolbox
578 stars
44 watching
189 forks
Language: MATLAB
last commit: 10 days ago
Linked from 1 awesome list
cudagpusimage-reconstructionmatlabpythontigretomographytoolboxx-ray
Related projects:
Repository | Description | Stars |
---|---|---|
villekf/omega | Reconstructs tomographic data from ray-tracing based imaging data | 69 |
sanketd92/ct-image-reconstruction | Reconstructs 2D images from CT sinograms using back-projection algorithms | 90 |
cerr/cerr | A platform for radiological research using deep learning and computer vision techniques. | 192 |
nvidia/matx | A C++17 GPU-accelerated numerical computing library with Python-like syntax | 1,220 |
flatironinstitute/caiman | A Python toolbox for large-scale Calcium Imaging Analysis | 638 |
uncomplicate/bayadera | Enables Bayesian data analysis and machine learning on graphics processing units (GPUs) to accelerate computational tasks. | 365 |
groupeliamg/bh_tomo | Software package for processing borehole georadar/seismic data and performing 2D/3D tomography | 30 |
openseg-group/openseg.pytorch | Provides a PyTorch implementation of several computer vision tasks including object detection, segmentation and parsing. | 1,190 |
computed-axial-lithography/cal-software-matlab | Provides software support for volumetric additive manufacturing by tomographic reconstruction. | 60 |
ukoethe/vigra | A computer vision library providing flexible algorithms and generic data structures for image analysis. | 412 |
felixgwu/img_classification_pk_pytorch | A PyTorch project for comparing image classification models and facilitating quick experiment setup | 365 |
megvii-research/tlc | Improves image restoration performance by converting global operations to local ones during inference | 231 |
nvidia/tensorflow | An optimized version of TensorFlow to support newer hardware and libraries for NVIDIA GPU users | 996 |
matenure/fastgcn | Implementation of graph convolutional network algorithms with sampling techniques to improve learning speed and efficiency | 519 |
stanfordaha/garnet | A tool for generating and testing digital circuits using a high-level, Python-based framework | 106 |