Official PyTorch implementation of the paper: DeepSIM: Image Shape Manipulation from a Single Augmented Training Sample

Overview

DeepSIM: Image Shape Manipulation from a Single Augmented Training Sample (ICCV 2021 Oral)

Project | Paper

Official PyTorch implementation of the paper: "DeepSIM: Image Shape Manipulation from a Single Augmented Training Sample".

DeepSIM: Given a single real training image (b) and a corresponding primitive representation (a), our model learns to map between the primitive (a) to the target image (b). At inference, the original primitive (a) is manipulated by the user. Then, the manipulated primitive is passed through the network which outputs a corresponding manipulated image (e) in the real image domain.


DeepSIM was trained on a single training pair, shown to the left of each sample. First row "face" output- (left) flipping eyebrows, (right) lifting nose. Second row "dog" output- changing shape of dog's hat, removing ribbon, and making face longer. Second row "car" output- (top) adding wheel, (bottom) conversion to sports car.


DeepSIM: Image Shape Manipulation from a Single Augmented Training Sample
Yael Vinker*, Eliahu Horwitz*, Nir Zabari, Yedid Hoshen
*Equal contribution
https://arxiv.org/pdf/2007.01289

Abstract: We present DeepSIM, a generative model for conditional image manipulation based on a single image. We find that extensive augmentation is key for enabling single image training, and incorporate the use of thin-plate-spline (TPS) as an effective augmentation. Our network learns to map between a primitive representation of the image to the image itself. The choice of a primitive representation has an impact on the ease and expressiveness of the manipulations and can be automatic (e.g. edges), manual (e.g. segmentation) or hybrid such as edges on top of segmentations. At manipulation time, our generator allows for making complex image changes by modifying the primitive input representation and mapping it through the network. Our method is shown to achieve remarkable performance on image manipulation tasks.

Getting Started

Setup

  1. Clone the repo:
git clone https://github.com/eliahuhorwitz/DeepSIM.git
cd DeepSIM
  1. Create a new environment and install the libraries:
python3.7 -m venv deepsim_venv
source deepsim_venv/bin/activate
pip install -r requirements.txt


Training

The input primitive used for training should be specified using --primitive and can be one of the following:

  1. "seg" - train using segmentation only
  2. "edges" - train using edges only
  3. "seg_edges" - train using a combination of edges and segmentation
  4. "manual" - could be anything (for example, a painting)

For the chosen option, a suitable input file should be provided under /"train_" (e.g. ./datasets/car/train_seg). For automatic edges, you can leave the "train_edges" folder empty, and an edge map will be generated automatically. Note that for the segmentation primitive option, you must verify that the input at test time fits exactly the input at train time in terms of colors.

To train on CPU please specify --gpu_ids '-1'.

  • Train DeepSIM on the "face" video using both edges and segmentations (bash ./scripts/train_face_vid_seg_edges.sh):
#!./scripts/train_face_vid_seg_edges.sh
python3.7 ./train.py --dataroot ./datasets/face_video --primitive seg_edges --no_instance --tps_aug 1 --name DeepSIMFaceVideo
  • Train DeepSIM on the "car" image using segmentation only (bash ./scripts/train_car_seg.sh):
#!./scripts/train_car_seg.sh
python3.7 ./train.py --dataroot ./datasets/car --primitive seg --no_instance --tps_aug 1 --name DeepSIMCar
  • Train DeepSIM on the "face" image using edges only (bash ./scripts/train_face_edges.sh):
#!./scripts/train_face_edges.sh
python3.7 ./train.py --dataroot ./datasets/face --primitive edges --no_instance --tps_aug 1 --name DeepSIMFace

Testing

  • Test DeepSIM on the "face" video using both edges and segmentations (bash ./scripts/test_face_vid_seg_edges.sh):
#!./scripts/test_face_vid_seg_edges.sh
python3.7 ./test.py --dataroot ./datasets/face_video --primitive seg_edges --phase "test" --no_instance --name DeepSIMFaceVideo --vid_mode 1 --test_canny_sigma 0.5
  • Test DeepSIM on the "car" image using segmentation only (bash ./scripts/test_car_seg.sh):
#!./scripts/test_car_seg.sh
python3.7 ./test.py --dataroot ./datasets/car --primitive seg --phase "test" --no_instance --name DeepSIMCar
  • Test DeepSIM on the "face" image using edges only (bash ./scripts/test_face_edges.sh):
#!./scripts/test_face_edges.sh
python3.7 ./test.py --dataroot ./datasets/face --primitive edges --phase "test" --no_instance --name DeepSIMFace

Additional Augmentations

As shown in the supplementary, adding augmentations on top of TPS may lead to better results

  • Train DeepSIM on the "face" video using both edges and segmentations with sheer, rotations, "cutmix", and canny sigma augmentations (bash ./scripts/train_face_vid_seg_edges_all_augmentations.sh):
#!./scripts/train_face_vid_seg_edges_all_augmentations.sh
python3.7 ./train.py --dataroot ./datasets/face_video --primitive seg_edges --no_instance --tps_aug 1 --name DeepSIMFaceVideoAugmentations --cutmix_aug 1 --affine_aug "shearx_sheary_rotation" --canny_aug 1
  • When using edges or seg_edges, it may be beneficial to have white edges instead of black ones, to do so add the --canny_color 1 option
  • Check ./options/base_options.py for more augmentation related settings
  • When using edges or seg_edges and adding edges manually at test time, it may be beneficial to apply "skeletonize" (e.g skimage skeletonize )on the edges in order for them to resemble the canny edges

More Results

Top row - primitive images. Left - original pair used for training. Center- switching the positions between the two rightmost cars. Right- removing the leftmost car and inpainting the background.


The leftmost column shows the source image, then each column demonstrate the result of our model when trained on the specified primitive. We manipulated the image primitives, adding a right eye, changing the point of view and shortening the beak. Our results are presented next to each manipulated primitive. The combined primitive performed best on high-level changes (e.g. the eye), and low-level changes (e.g. the background).


On the left is the training image pair, in the middle are the manipulated primitives and on the right are the manipulated outputs- left to right: dress length, strapless, wrap around the neck.

Single Image Animation

Animation to Video

Video to Animation

Citation

If you find this useful for your research, please use the following.

@InProceedings{Vinker_2021_ICCV,
    author    = {Vinker, Yael and Horwitz, Eliahu and Zabari, Nir and Hoshen, Yedid},
    title     = {Image Shape Manipulation From a Single Augmented Training Sample},
    booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    month     = {October},
    year      = {2021},
    pages     = {13769-13778}
}

Acknowledgments

PyTorch code for SENTRY: Selective Entropy Optimization via Committee Consistency for Unsupervised DA

PyTorch Code for SENTRY: Selective Entropy Optimization via Committee Consistency for Unsupervised Domain Adaptation Viraj Prabhu, Shivam Khare, Deeks

Viraj Prabhu 46 Dec 24, 2022
Cryptocurrency Prediction with Artificial Intelligence (Deep Learning via LSTM Neural Networks)

Cryptocurrency Prediction with Artificial Intelligence (Deep Learning via LSTM Neural Networks)- Emirhan BULUT

Emirhan BULUT 102 Nov 18, 2022
A Python library that provides a simplified alternative to DBAPI 2

A Python library that provides a simplified alternative to DBAPI 2. It provides a facade in front of DBAPI 2 drivers.

Tony Locke 44 Nov 17, 2021
Learning RGB-D Feature Embeddings for Unseen Object Instance Segmentation

Unseen Object Clustering: Learning RGB-D Feature Embeddings for Unseen Object Instance Segmentation Introduction In this work, we propose a new method

NVIDIA Research Projects 132 Dec 13, 2022
Adaptive FNO transformer - official Pytorch implementation

Adaptive Fourier Neural Operators: Efficient Token Mixers for Transformers This repository contains PyTorch implementation of the Adaptive Fourier Neu

NVIDIA Research Projects 77 Dec 29, 2022
Aligning Latent and Image Spaces to Connect the Unconnectable

About This repo contains the official implementation of the Aligning Latent and Image Spaces to Connect the Unconnectable paper. It is a GAN model whi

Ivan Skorokhodov 203 Jan 03, 2023
Stochastic gradient descent with model building

Stochastic Model Building (SMB) This repository includes a new fast and robust stochastic optimization algorithm for training deep learning models. Th

S. Ilker Birbil 22 Jan 19, 2022
CTF challenges and write-ups for MicroCTF 2021.

MicroCTF 2021 Qualifications About This repository contains CTF challenges and official write-ups for MicroCTF 2021 Qualifications. License Distribute

Shellmates 12 Dec 27, 2022
Neural Re-rendering for Full-frame Video Stabilization

NeRViS: Neural Re-rendering for Full-frame Video Stabilization Project Page | Video | Paper | Google Colab Setup Setup environment for [Yu and Ramamoo

Yu-Lun Liu 9 Jun 17, 2022
On Uncertainty, Tempering, and Data Augmentation in Bayesian Classification

Understanding Bayesian Classification This repository hosts the code to reproduce the results presented in the paper On Uncertainty, Tempering, and Da

Sanyam Kapoor 18 Nov 17, 2022
This repository contains the code for "Self-Diagnosis and Self-Debiasing: A Proposal for Reducing Corpus-Based Bias in NLP".

Self-Diagnosis and Self-Debiasing This repository contains the source code for Self-Diagnosis and Self-Debiasing: A Proposal for Reducing Corpus-Based

Timo Schick 62 Dec 12, 2022
Tensors and neural networks in Haskell

Hasktorch Hasktorch is a library for tensors and neural networks in Haskell. It is an independent open source community project which leverages the co

hasktorch 920 Jan 04, 2023
Ray tracing of a Schwarzschild black hole written entirely in TensorFlow.

TensorGeodesic Ray tracing of a Schwarzschild black hole written entirely in TensorFlow. Dependencies: Python 3 TensorFlow 2.x numpy matplotlib About

5 Jan 15, 2022
Summary Explorer is a tool to visually explore the state-of-the-art in text summarization.

Summary Explorer Summary Explorer is a tool to visually inspect the summaries from several state-of-the-art neural summarization models across multipl

Webis 42 Aug 14, 2022
This is a custom made virus code in python, using tkinter module.

skeleterrorBetaV0.1-Virus-code This is a custom made virus code in python, using tkinter module. This virus is not harmful to the computer, it only ma

AR 0 Nov 21, 2022
Ian Covert 130 Jan 01, 2023
A lightweight library designed to accelerate the process of training PyTorch models by providing a minimal

A lightweight library designed to accelerate the process of training PyTorch models by providing a minimal, but extensible training loop which is flexible enough to handle the majority of use cases,

Chris Hughes 110 Dec 23, 2022
Evaluating saliency methods on artificial data with different background types

Evaluating saliency methods on artificial data with different background types This repository contains the relevant code for the MedNeurips 2021 subm

2 Jul 05, 2022
This project aims at providing a concise, easy-to-use, modifiable reference implementation for semantic segmentation models using PyTorch.

Semantic Segmentation on PyTorch (include FCN, PSPNet, Deeplabv3, Deeplabv3+, DANet, DenseASPP, BiSeNet, EncNet, DUNet, ICNet, ENet, OCNet, CCNet, PSANet, CGNet, ESPNet, LEDNet, DFANet)

2.4k Jan 08, 2023
Repository of 3D Object Detection with Pointformer (CVPR2021)

3D Object Detection with Pointformer This repository contains the code for the paper 3D Object Detection with Pointformer (CVPR 2021) [arXiv]. This wo

Zhuofan Xia 117 Jan 06, 2023