Binaries/Code
Binaries/Code | Datasets | Open Source Software |
We provide binaries and source code of some selected works in order to help other researchers to compare their results or to use our work as a module for their research. Please understand that we can only provide what is offered here. E-Mails requesting other free code will be ignored.
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Terms of use
All code is provided for research purposes only and without any warranty. Any commercial use requires our consent. When using the code in your research work, you should cite the respective paper. Refer to the readme file in each package to learn how to use the program.FLN-EPN-RPN | ||||||||
Source code (GitHub)
FIT: Freiburg Imra Testing dataset. nuScenes: nuScenes post-processed testing dataset, originally obtained from nuscenes website Waymo post-processed testing dataset can be downloaded from link Trained models O. Makansi and O. Cicek and K. Buchicchio and T. Brox Multimodal Future Localization and Emergence Prediction for Objects in Egocentric View with a Reachability Prior, IEEE Conference in Computer Vision and Pattern Recognition (CVPR), 2020 |
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Multimodal Future Prediction | ||||||||
Source code (GitHub)
Processed SDD dataset: Train and Test. The original dataset can be obtained from SDD Trained models O. Makansi and E. Ilg and O. Cicek and T. Brox Overcoming Limitations of Mixture Density Networks: A Sampling and Fitting Framework for Multimodal Future Prediction, IEEE Conference in Computer Vision and Pattern Recognition (CVPR), 2019 |
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FlowNet 3.0 + DispNet 3.0 + FlowNetH | ||||||||
We publish the code on GitHub: netdef_models (GitHub) Please see README.md for instructions on how to download data, models and code. E. Ilg, T. Saikia, M. Keuper, T. Brox Occlusions, Motion and Depth Boundaries with a Generic Network for Disparity, Optical Flow or Scene Flow Estimation, European Conference on Computer Vision (ECCV), 2018. E. Ilg, Ö. Çiçek, S. Galesso, A. Klein, O. Makansi, F. Hutter, T. Brox Uncertainty Estimates and Multi-Hypotheses Networks for Optical Flow European Conference on Computer Vision (ECCV), 2018. |
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FlowNet 2.0 | ||||||||
Complete source code is availalbe here: flownet2 (GitHub) Please see README.md for instructions on how to download data and models. Dockerfile for easy installation of the complete code in one step (requires Docker): flownet2-docker (GitHub) E. Ilg, N. Mayer, T. Saikia, M. Keuper, A. Dosovitskiy, T. Brox FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks, IEEE Conference in Computer Vision and Pattern Recognition (CVPR), 2017. |
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Multi-view 3D Models from Single Images with a Convolutional Network | ||||||||
Source code (GitHub)
Pre-rendered test set Trained models M. Tatarchenko, A. Dosovitskiy, T. Brox Multi-view 3D Models from Single Images with a Convolutional Network, European Conference on Computer Vision (ECCV), 2016 |
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Generating Images with Perceptual Similarity Metrics based on Deep Networks | ||||||||
v0.5:
Testing and training code
Custom caffe version (for training): https://github.com/dosovits/caffe-fr-chairs (deepsim branch) v0: Trained models for layers pool5-fc8 and a python demo Trained models for layers norm1-conv4 A. Dosovitskiy, T. Brox Generating Images with Perceptual Similarity Metrics based on Deep Networks, Advances in Neural Information Processing Systems (NIPS), 2016. |
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Efficient and Robust Networks for Semantic Segmentation full code | ||||||||
Download modified master branch Caffe: Download Caffe_FASTv1.0 (Modified Caffe + models + brief readme)
Please read the included FastNet_README.md file. Augmentation scripts comming soon. G. L. Oliveira, W. Burgard, T. Brox Efficient and Robust Deep Networks for Semantic Segmentation, G. L. Oliveira, W. Burgard, T. Brox Efficient Deep Methods for Monocular Road Segmentation, IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2016. |
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Disp- and FlowNet: Full code for testing and training networks | ||||||||
Download modified master branch Caffe: Download v1.2 (Modified Caffe + models + brief readme, LMDB scaling bug fixed, FlowNetC model included)
Please read the included DISPNET-README.md file. N. Mayer, E. Ilg, P. Häusser, P. Fischer, D. Cremers, A. Dosovitskiy, T. Brox A Large Dataset to Train Convolutional Networks for Disparity, Optical Flow, and Scene Flow Estimation, IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2016. A. Dosovitskiy and P. Fischer and E. Ilg and P. Häusser and C. Hazirbas and V. Golkov and P. v.d. Smagt and D. Cremers and T. Brox FlowNet: Learning Optical Flow with Convolutional Networks, IEEE International Conference on Computer Vision (ICCV), 2015. Earlier versions: DispNet and FlowNet v1.0 (LMDB scaling fixed) DispNet and FlowNet v1.0 (LMDB scaling bug) DispNet 0.5 FlowNet 0.1 FlowNet 1.0 FlowNet small displacements model |
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Motion Trajectory Segmentation via Minimum Cost Multicuts | ||||||||
Download Executables for 64-bit Linux M. Keuper, B. Andres, T. Brox Motion Trajectory Segmentation via Minimum Cost Multicuts, IEEE International Conference on Computer Vision (ICCV), 2015. |
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Global, Dense Multiscale Reconstruction for a Billion Points | ||||||||
Download Executables for 64-bit Linux Project page B. Ummenhofer, T. Brox Global, Dense Multiscale Reconstruction for a Billion Points, IEEE International Conference on Computer Vision (ICCV), 2015. |
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Inverting Visual Representations with Convolutional Networks | ||||||||
A. Dosovitskiy and T. Brox Inverting Visual Representations with Convolutional Networks, IEEE Conference in Computer Vision and Pattern Recognition (CVPR), 2016. |
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Learning to Generate Chairs with Convolutional Neural Networks | ||||||||
A. Dosovitskiy, J. T. Springenberg and T. Brox Learning to Generate Chairs with Convolutional Neural Networks, IEEE Conference in Computer Vision and Pattern Recognition (CVPR), 2015. |
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Scene flow from RGB-D sequences | ||||||||
Download C++ Code J. Quiroga, Thomas Brox, F. Devernay, J. Crowley Dense semi-rigid scene flow estimation from RGBD images, European Conference on Computer Vision (ECCV), 2014. |
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Exemplar Convolutional Neural Networks | ||||||||
Download Code for Linux A. Dosovitskiy, J. T. Springenberg, M. Riedmiller and T. Brox Discriminative Unsupervised Feature Learning with Convolutional Neural Networks, Advances in Neural Information Processing Systems 27 (NIPS), 2014. A. Dosovitskiy, P.Fischer, J. T. Springenberg, M. Riedmiller and T. Brox Discriminative Unsupervised Feature Learning with Exemplar Convolutional Neural Networks, IEEE Transactions on Pattern Analysis and Machine Intelligence (PAMI), 2015. |
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Image Descriptors based on Curvature Histograms | ||||||||
Download Code for Linux (contains code for combination with HOG and SIFT) The download provides feature computation code for integration with the Felzenszwalb DPM code and for integration with the VLfeat framework. P. Fischer, T. Brox Image Descriptors based on Curvature Histograms, German Conference on Pattern Recognition (GCPR), 2014. |
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Point-Based Reconstruction | ||||||||
Download Executable for 64-bit Linux (requires CUDA 5.5) B. Ummenhofer, T. Brox Point-Based 3D Reconstruction of Thin Objects, IEEE International Conference on Computer Vision (ICCV), 2013. |
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Non-smooth Non-convex Optimization | ||||||||
Download Matlab Code P. Ochs, A. Dosovitskiy, T. Brox, T. Pock An iterated L1 Algorithm for Non-smooth Non-convex Optimization in Computer Vision, Conference on Computer Vision and Pattern Recognition (CVPR), 2013. |
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Dense Label Interpolation | ||||||||
Download Executable for 64-bit Linux P. Ochs, T. Brox Object Segmentation in Video: A Hierarchical Variational Approach for Turning Point Trajectories into Dense Regions, IEEE International Conference on Computer Vision (ICCV), 2011. |
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Motion Segmentation | ||||||||
Download Executable for 64-bit Linux (improved pairwise model + densify, PAMI 2013) Download Code for 64-bit Linux (optical flow variation as used in the definition of the pairwise affinities, PAMI 2013) Download Executable for 64-bit Linux (higher order, CVPR 2012) Download Executable for 64-bit Linux (pairwise model, ECCV 2010) Download Source code (pairwise model, ECCV 2010) These downloads provide executables with one example video. See the Freiburg Berkeley Motion Segmentation Dataset for the complete dataset. P. Ochs, J. Malik, T. Brox Segmentation of moving objects by long term video analysis, IEEE Transactions on Pattern Analysis and Machine Intelligence, 36(6):1187-1200, Jun. 2014. P. Ochs, T. Brox Higher order motion models and spectral clustering, International Conference on Computer Vision and Pattern Recognition (CVPR), 2012. T. Brox, J. Malik Object segmentation by long term analysis of point trajectories, European Conference on Computer Vision (ECCV), Springer, LNCS, Sept. 2010. |
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Dense Point Tracking | ||||||||
Download Code with optical flow library for 64-bit Linux Download Code with optical flow library for Nvidia GPUs (requires CUDA 7.5) N. Sundaram, T. Brox, K. Keutzer Dense point trajectories by GPU-accelerated large displacement optical flow, European Conference on Computer Vision (ECCV), Crete, Greece, Springer, LNCS, Sept. 2010. |
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Large Displacement Optical Flow | ||||||||
Download Executable for 64-bit Linux Download C++ Library for 64-bit Linux Download Executable for 64-bit Mac-OS Download C++ Library for 64-bit Mac-OSX 10.9 (problems with OSX 10.10) Download Matlab Mex-functions for 64-bit Linux, 32-bit and 64-bit Windows, and 64-bit Mac-OS Download Source code T. Brox, J. Malik Large displacement optical flow: descriptor matching in variational motion estimation, IEEE Transactions on Pattern Analysis and Machine Intelligence, 33(3):500-513, March 2011. |
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Classical Variational Optical Flow | ||||||||
Download Executable for 64-bit Linux Download C++ Library for 64-bit Linux Download Executable for 32-bit Windows Download Matlab Mex-functions for 64-bit Linux, 32-bit and 64-bit Windows Download Source code (special case of large displacement optical flow) The code is not exactly identical to the work described in the original ECCV 2004 paper. The Windows executable is less efficient and uses an outdated output file format. If you have access to a Linux machine or Matlab, I recommend using these versions. T. Brox, A. Bruhn, N. Papenberg, J. Weickert High accuracy optical flow estimation based on a theory for warping, T. Pajdla and J. Matas (Eds.), European Conference on Computer Vision (ECCV) Prague, Czech Republic, Springer, LNCS, Vol. 3024, 25-36, May 2004. ©Springer-Verlag Berlin Heidelberg 2004 (bibtex) |
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Nonlocal means with cluster trees | ||||||||
Download Executables for 64-bit Linux The program runs the non-iterative method described in the paper using no overlap for the cluster tree. T. Brox, O. Kleinschmidt, D. Cremers Efficient nonlocal means for denoising of textural patterns, IEEE Transactions on Image Processing 17(7):1083-1092, July 2008. |