• Stars
    star
    111
  • Rank 314,510 (Top 7 %)
  • Language
    MATLAB
  • License
    BSD 2-Clause "Sim...
  • Created almost 7 years ago
  • Updated over 2 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Demo code for our TIP video stitching paper in 2017

Dynamic Video Stitching via Shakiness Removing

Demo code for the works below:

Video Demo on YouTube:

Video Demo

Dataset

Including video clips from previous works, see Readme.MD for more details)

OneDrive

BaiduYun

*Notes on your own test data: The proposed method is using traditional SIFT + Mesh-based warping to conduct stitching, which cannot handle the case where the parallax is too large, or the light condition is too different. To put it in a simple way, if a single pair of frames from the input video pair can't be stitched by Content-Preserve Warping, then this video stitching method will also fail.

External libraries and code used:

How to use this demo code:

  1. In the folder /case-cuhk_lib, extract video frames of case17-l.mp4 to folder /left, and extract video frames of case17-r.mp4 to folder /right. After the frame extracation, each folder should contain 400 jpg files. The file names should be indexed properly. (e.g. 001.jpg 002.jpg ...). A script video2frames.m is provided. Modify the filename

  2. You may need to install CVX if you have not.

  3. Set MATLAB path to /Stitching-1.1.0, run RunStitching.m. The generated output frames will be in the auto-created subfolder under /case-cuhk_lib. (res_demo if you didn't change the output path). Warning: the motion segmentation code from Shankar Rao is very slow, if your video doesn't have large foreground object, set SKIP_BACKGROUND_SEGMENTATION = true in RunStitching.m and treat all trajectories as background. For further details, see the code comments.

  4. Build the OpenCV project in /SeamCut (You need to set OpenCV's include and library path manually) and copy the executable (e.g. SeamCut.exe) to the folder containing the output frames (1.jpg, A1.jpg, B1.jpg, 2.jpg, A2.jpg, B2.jpg, ...). This program finds the continuous optimal seam by GraphCut algorithm and use OpenCV's multi-band blending function.

  5. Run ./SeamCut 5 1 400 1 0.2 to see the final result. Blended frames are saved as D1.jpg, D2.jpg, ...

For more details, please read the comments

Please cite our papers if you use the code or our dataset.

@article{nie2018dynamic, title={Dynamic Video Stitching via Shakiness Removing}, author={Nie, Yongwei and Su, Tan and Zhang, Zhensong and Sun, Hanqiu and Li, Guiqing}, journal={IEEE Transactions on Image Processing}, volume={27}, number={1}, pages={164--178}, year={2018}, publisher={IEEE} }

@inproceedings{su2016video, title={Video stitching for handheld inputs via combined video stabilization}, author={Su, Tan and Nie, Yongwei and Zhang, Zhensong and Sun, Hanqiu and Li, Guiqing}, booktitle={SIGGRAPH ASIA 2016 Technical Briefs}, pages={25}, year={2016}, organization={ACM} }

Code by Tan Su, Zhensong Zhang and Yongwei Nie. For research purpose ONLY. 996.icu