Years ago I wrote this code, which was most likely the very first Open Source implementation of the Seam Carving algorithm. Looks like even the Wikipedia editors might have been interested in my work (check the photo used in the demos, as well as how the carved seams are visualized etc).
This is a copy of my original blog post of 09/02/2007:
Most people most likely saw the YouTube movie on content-aware image resizing which got blogged quite a lot lately. I read the corresponding paper, and wrote an implementation (not finished/perfect at all, but well) in Python. If it would ever become "production quality" a Gimp and/or GEGL plugin would be nice.
Here's a sample:
Resized using Gimp, cubic interpolation, 150px
Resized image, 150px
Overview of removed pixels
This transformation is done in about 2 seconds (mainly because of some calculations in pure Python. For most calculations I use the Python Imaging Library and SciPy/NumPy, which are mainly C modules and much faster). As you can see the implementation still needs lots of love.
You can see another sample (image resized from 1000 to 250px in 8 seconds) here.
Git repository is here. Please email any patches!
The algorithm itself is surprisingly "simple" and easy to understand, great job by the researchers! More on that later. I should be studying mathematical analysis now, 2nd time I got to redo this exam, bloody university :-(
Update: Using very expensive algorithm
This image was generated by:
- Loading the input image
- 150 times:
- Calculate energy and cost of current working picture
- For every pixel in the top row, calculate the cost of the "best path" starting at this pixel
- Figure out which path is the cheapest
- Create an image which is the working image, minus this best path
- Replace the working image with the image generated in the previous step
This took 273 seconds on my system, as the complexity is something like O(150*N*N*N*N*N*N*M) where M is the complexity of the gradient magnitude calculation.
Conclusion: not a workable solution :D
Do notice there are significant changes between this image and the one posted above. As I wrote this as a quick hack, I didn't include code to show which paths were removed from the original image.