• Stars
    star
    1,497
  • Rank 31,357 (Top 0.7 %)
  • Language
    Python
  • License
    Other
  • Created about 5 years ago
  • Updated 10 months ago

Reviews

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

Repository Details

an implementation of 3D Ken Burns Effect from a Single Image using PyTorch

3d-ken-burns

This is a reference implementation of 3D Ken Burns Effect from a Single Image [1] using PyTorch. Given a single input image, it animates this still image with a virtual camera scan and zoom subject to motion parallax. Should you be making use of our work, please cite our paper [1].

Paper

setup

Several functions are implemented in CUDA using CuPy, which is why CuPy is a required dependency. It can be installed using pip install cupy or alternatively using one of the provided binary packages as outlined in the CuPy repository. Please also make sure to have the CUDA_HOME environment variable configured.

In order to generate the video results, please also make sure to have pip install moviepy installed.

usage

To run it on an image and generate the 3D Ken Burns effect fully automatically, use the following command.

python autozoom.py --in ./images/doublestrike.jpg --out ./autozoom.mp4

To start the interface that allows you to manually adjust the camera path, use the following command. You can then navigate to http://localhost:8080/ and load an image using the button on the bottom right corner. Please be patient when loading an image and saving the result, there is a bit of background processing going on.

python interface.py

To run the depth estimation to obtain the raw depth estimate, use the following command. Please note that this script does not perform the depth adjustment, see #22 for information on how to add it.

python depthestim.py --in ./images/doublestrike.jpg --out ./depthestim.npy

To benchmark the depth estimation, run python benchmark-ibims.py or python benchmark-nyu.py. You can use it to easily verify that the provided implementation runs as expected.

colab

If you do not have a suitable environment to run this projects then you could give Colab a try. It allows you to run the project in the cloud, free of charge. There are several people who provide Colab notebooks that should get you started. A few that I am aware of include one from Arnaldo Gabriel, one from Vlad Alex, and one from Ahmed Harmouche.

dataset

This dataset is licensed under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International Public License (CC BY-NC-SA 4.0) and may only be used for non-commercial purposes. Please see the LICENSE file for more information.

scene mode color depth normal
asdf flying 3.7 GB 1.0 GB 2.9 GB
asdf walking 3.6 GB 0.9 GB 2.7 GB
blank flying 3.2 GB 1.0 GB 2.8 GB
blank walking 3.0 GB 0.9 GB 2.7 GB
chill flying 5.4 GB 1.1 GB 10.8 GB
chill walking 5.2 GB 1.0 GB 10.5 GB
city flying 0.8 GB 0.2 GB 0.9 GB
city walking 0.7 GB 0.2 GB 0.8 GB
environment flying 1.9 GB 0.5 GB 3.5 GB
environment walking 1.8 GB 0.5 GB 3.3 GB
fort flying 5.0 GB 1.1 GB 9.2 GB
fort walking 4.9 GB 1.1 GB 9.3 GB
grass flying 1.1 GB 0.2 GB 1.9 GB
grass walking 1.1 GB 0.2 GB 1.6 GB
ice flying 1.2 GB 0.2 GB 2.1 GB
ice walking 1.2 GB 0.2 GB 2.0 GB
knights flying 0.8 GB 0.2 GB 1.0 GB
knights walking 0.8 GB 0.2 GB 0.9 GB
outpost flying 4.8 GB 1.1 GB 7.9 GB
outpost walking 4.6 GB 1.0 GB 7.4 GB
pirates flying 0.8 GB 0.2 GB 0.8 GB
pirates walking 0.7 GB 0.2 GB 0.8 GB
shooter flying 0.9 GB 0.2 GB 1.1 GB
shooter walking 0.9 GB 0.2 GB 1.0 GB
shops flying 0.2 GB 0.1 GB 0.2 GB
shops walking 0.2 GB 0.1 GB 0.2 GB
slums flying 0.5 GB 0.1 GB 0.8 GB
slums walking 0.5 GB 0.1 GB 0.7 GB
subway flying 0.5 GB 0.1 GB 0.9 GB
subway walking 0.5 GB 0.1 GB 0.9 GB
temple flying 1.7 GB 0.4 GB 3.1 GB
temple walking 1.7 GB 0.3 GB 2.8 GB
titan flying 6.2 GB 1.1 GB 11.5 GB
titan walking 6.0 GB 1.1 GB 11.3 GB
town flying 1.7 GB 0.3 GB 3.0 GB
town walking 1.8 GB 0.3 GB 3.0 GB
underland flying 5.4 GB 1.2 GB 12.1 GB
underland walking 5.1 GB 1.2 GB 11.4 GB
victorian flying 0.5 GB 0.1 GB 0.8 GB
victorian walking 0.4 GB 0.1 GB 0.7 GB
village flying 1.6 GB 0.3 GB 2.8 GB
village walking 1.6 GB 0.3 GB 2.7 GB
warehouse flying 0.9 GB 0.2 GB 1.5 GB
warehouse walking 0.8 GB 0.2 GB 1.4 GB
western flying 0.8 GB 0.2 GB 0.9 GB
western walking 0.7 GB 0.2 GB 0.8 GB

Please note that this is an updated version of the dataset that we have used in our paper. So while it has fewer scenes in total, each sample capture now has a varying focal length which should help with generalizability. Furthermore, some examples are either over- or under-exposed and it would be a good idea to remove these outliers. Please see #37, #39, and #40 for supplementary discussions.

video

Video

license

This is a project by Adobe Research. It is licensed under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International Public License (CC BY-NC-SA 4.0) and may only be used for non-commercial purposes. Please see the LICENSE file for more information.

references

[1]  @article{Niklaus_TOG_2019,
         author = {Simon Niklaus and Long Mai and Jimei Yang and Feng Liu},
         title = {3D Ken Burns Effect from a Single Image},
         journal = {ACM Transactions on Graphics},
         volume = {38},
         number = {6},
         pages = {184:1--184:15},
         year = {2019}
     }

acknowledgment

The video above uses materials under a Creative Common license or with the owner's permission, as detailed at the end.

More Repositories

1

sepconv-slomo

an implementation of Video Frame Interpolation via Adaptive Separable Convolution using PyTorch
Python
1,008
star
2

pytorch-pwc

a reimplementation of PWC-Net in PyTorch that matches the official Caffe version
Python
602
star
3

pytorch-hed

a reimplementation of Holistically-Nested Edge Detection in PyTorch
Python
451
star
4

softmax-splatting

an implementation of softmax splatting for differentiable forward warping using PyTorch
Python
436
star
5

pytorch-liteflownet

a reimplementation of LiteFlowNet in PyTorch that matches the official Caffe version
Python
400
star
6

pytorch-spynet

a reimplementation of Optical Flow Estimation using a Spatial Pyramid Network in PyTorch
Python
298
star
7

wasm-raytracer

a performance comparison of a simple raytracer in JavaScript, asm.js, WebAssembly, and GLSL
HTML
168
star
8

pytorch-unflow

a reimplementation of UnFlow in PyTorch that matches the official TensorFlow version
Python
143
star
9

youtube-watchmarker

a browser extension that keeps track of your YouTube watch history and marks videos that you have already watched
JavaScript
141
star
10

pytorch-extension

an example of a CUDA extension for PyTorch using CuPy which computes the Hadamard product of two tensors
Python
118
star
11

revisiting-sepconv

an implementation of Revisiting Adaptive Convolutions for Video Frame Interpolation using PyTorch
Python
77
star
12

arxiv-doom

a parody of the ever-increasing amount of papers that appear on arXiv
HTML
32
star
13

teaching-vision

the framework for my computer vision class, in which the students are ought to solve various exercises
Python
24
star
14

teaching-webdev

the framework for my full stack web development class, in which the students are ought to solve various exercises
HTML
22
star
15

bookmark-tab

JavaScript
14
star
16

teaching-minichess

the framework for my advanced artificial intelligence class, in which an artificial chess player is ought to be implemented
C
14
star
17

nes-memoryview

visualizing the value of each individual byte in an emulated NES as a time series
HTML
9
star
18

teaching-confour

the framework for my advanced artificial intelligence class, in which an connect-four player is ought to be implemented
C
3
star
19

resume

my personal resume written in LaTeX for others to use
HTML
1
star