This repository contains a torch implementation for automatically applying optical flow deformations to pairs of images in order to morph between images. The optical flow calculation and loading code is from manuelruder/artistic-videos
, and is based on DeepFlow. Theoretically, you could drop in another optical flow program which outputs .flo
files in the Middlebury format.
This process is inspired by Patrick Feaster's post on Animating Historical Photographs With Image Morphing.
My blog post about this process: Animating Stereograms with Optical Flow Morphing
- torch7
- DeepFlow and DeepMatching binaries in the current directory, as
deepflow2-static
anddeepmatching-static
For input, you need two PNG images of the same dimensions named e.g. filename_0.png
and filename_1.png
. You can then run ./run-torchwarp.sh filename
to run all the steps and output the morphing animation as morphed_filename.gif
.
You can also use ./run-stereogranimator.sh ID
with an image ID from NYPL's Stereogranimator to download an animated GIF at low resolution and run it through the morphing process.
If you sign up for the NYPL Digital Collections API, you can use your API token with the included scripts to work with high-resolution original images. The nypl_recrop.rb
script takes a Stereogranimator image ID as an argument and reads the API token from the NYPL_API_TOKEN
environment variable, and attempts to apply the Stereogranimator's crop values to the original image. The run-stereogranimator-hi-res.sh
script uses this process and passes the high-resolution cropped images to run-torchwarp.sh
. You can also pass the NYPL_API_TOKEN
environment variable in your docker run
command.
I had very little luck getting DeepFlow to work on OS X, so I'm using Docker to run this with the included Dockerfile
.
- Build the Docker image with
docker build -t torch-warp .
- Run the build with
docker run -t -i torch-warp /bin/bash
. You may want to map a host directory as a data volume as well, in order to transfer images back and forth. - Use the scripts as described above inside the Docker container's shell.
I've also made this repository an automated build on Docker Hub: ryanfb/torch-warp