Skip to main content

GPU/CUDA optimized implementation of 3D optical flow algorithms such as Farneback two frame motion estimation and Lucas Kanade dense optical flow algorithms

Project description

opticalflow3d

GPU/CUDA optimized implementation of 3D optical flow algorithms such as Farneback two frame motion estimation and Lucas Kanade dense optical flow algorithms.

Please see the related projects section for the other components of this pipeline


Overview

Being able to efficiently calculate the displacements between two imaging volumes will allow us to query the dynamics captured in the images. This would include 3D biological samples and 3D force micrsocopy. However, a CPU based implementation would be too time consuming. Thus, this repository was created to address this problem by providing GPU accelerated implementation of various optical flow algorithms. Speed is key here, and tricks such as separable convolutions are used.

Currently, two optical flow methods are implemented:

  • Pyramidal Lucas Kanade dense optical flow algorithm
  • Farneback two frame motion estimation algorithm

The following methods are also provided to help in the assessment of the vectors.

  • forward mapping of the first image using the calculated vectors

Validation of the 3D Farneback algorithm

Accuracy of the algorithm on synthetic 3D fluorescent bead images

The Farneback two frame motion estimation algorithm was validated against the L5 SEM Challenge Sample 14 dataset [1]. The RMSE for the x component of the displacement field was 0.0112. The figure below shows the accuracy of the x component. The solid blue line represents the mean magnitude of the x component for each x position while the shaded region/thin blue shows the standard deviation of the x component magnitudes.

Execution time

The time taken to compute the displacements for a 2048×192×192 voxel image was 2.41s ± 21.4ms. The computation was done on a server running a Quadro RTX 6000 GPU and dual Intel(R) Xeon(R) Gold 5217 CPUs.

For comparison, the FFT-based DVC algorithm took 1980.04s while ALDVC took 9335.2s [1]. A few caveats have to be mentioned as both of these algorithms were running on the CPU only and ALDVC does calculate other parameters as well.


Usage

Required packages

The following packages are required. Please ensure that they are installed using either pip or conda.

  • numpy
  • numba
  • scikit-image
  • scipy
  • cupy
  • tqdm

Installation

This package is available via pip and can be installed using:

pip install opticalflow3d

Examples

Examples can be found in the examples folder


How to cite

Huang, C. K., Yong, X., She, D. T., & Lim, C. T. (2022). Surface curvature and basal hydraulic stress induce spatial bias in cell extrusion. bioRxiv.

Related projects

  1. 3D Traction Force Microscopy

References

[1] Yang, J., Hazlett, L., Landauer, A. K., & Franck, C. (2020). Augmented Lagrangian Digital Volume Correlation (ALDVC). Experimental Mechanics, 60(9), 1205-1223.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

opticalflow3d-0.3.2.tar.gz (18.2 kB view hashes)

Uploaded Source

Built Distribution

opticalflow3d-0.3.2-py3-none-any.whl (18.4 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page