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balbasty/README.md

PyTorch extensions

These repositories are small self-contained tools written in pure PyTorch, that I have found useful in many projects.

They are (relatively) stable, as backward-compatible as possible with respect to PyTorch versions, and can be used as core dependencies to higher level projects.

Package Description Readiness
torch-bounds Boundary conditions (circulant, mirror, reflect) and real transforms (DCT, DST) 🟒
torch-interpol High-order spline interpolation 🟒
torch-distmap Euclidean distance transform 🟒
torch-relay Backward-compatible PyTorch functions (work-in-progress) πŸ”΄
torch-diffeo Scaling-and-squaring and Geodesic Shooting layers in PyTorch (work-in-progress) 🟠
jitfields Fast functions for dense scalar and vector fields, implemented using just-in-time compilation 🟠

Note

The last package, jitfields, reimplements many of the utilities from the other core packages, but does it directly in CUDA/C++.

The CUDA/C++ sources are compiled just-in-time using cupy and cppyy.

🧠 Machine Learning for NeuroImaging

These packages underpin my research in medical image computing.

In general, my aim is to write a set of mid-level packages that specialize in various tasks (data augmentation, network architectures, modality-specific tasks, etc.).

Package Description Readiness
cornucopia An abundance of augmentation layers 🟒
nitorch An (overweight and poorly maintained) package for everything neuroimaging 🟠
synthsurf Surface-based image synthesis and PyTorch utilities for triangular surfaces 🟠
synthspline Synthetic tubular structures (vessels, axons) for NN pretraining 🟠
cassetta A deep learning toolbox (under early development) πŸ”΄
braindataprep Download, bidsify and preprocess public datasets (work-in-progress) πŸ”΄

Numpy tools

Package Description Readiness
variational_staple STAPLE and variants 🟒
optimal_affine Build optimal "subject to mean space" affines from "subject to subject" pairwise affines 🟒
metrics A bunch of metrics πŸ”΄

Matlab tools

Package Description Readiness
spm_mni_align SPM toolbox to align an image to SPM's template space 🟠
multi-bias Fit a multi-view bias field 🟒
super-resolution MTV-based denoising/super-resolution 🟒
cmaps (Some) Matplotlib colormaps in Matlab 🟒

Tensorflow tools

Package Description Readiness
tfaffine Affine matrices encoded in their Lie algebra, in tensorflow 🟒

Pinned Loading

  1. nitorch nitorch Public

    Neuroimaging in PyTorch

    Python 89 14

  2. torch-interpol torch-interpol Public

    High-order spline interpolation in PyTorch

    Python 68 6

  3. multi-bias multi-bias Public

    Fit a multi-view bias field

    MATLAB

  4. cornucopia cornucopia Public

    An abundance of augmentation layers

    Python 11 3

  5. super-resolution super-resolution Public

    Reimplement MTV-based denoising/super-resolution using a reweighted least-squares approach

    MATLAB 2 1

  6. brudfors/UniRes brudfors/UniRes Public

    Model-based super-resolution of medical images in PyTorch.

    Python 78 12