TensorFlow (Python API) implementation of Neural Style

Overview

neural-style-tf

This is a TensorFlow implementation of several techniques described in the papers:

Additionally, techniques are presented for semantic segmentation and multiple style transfer.

The Neural Style algorithm synthesizes a pastiche by separating and combining the content of one image with the style of another image using convolutional neural networks (CNN). Below is an example of transferring the artistic style of The Starry Night onto a photograph of an African lion:

Transferring the style of various artworks to the same content image produces qualitatively convincing results:

Here we reproduce Figure 3 from the first paper, which renders a photograph of the Neckarfront in Tübingen, Germany in the style of 5 different iconic paintings The Shipwreck of the Minotaur, The Starry Night, Composition VII, The Scream, Seated Nude:

Content / Style Tradeoff

The relative weight of the style and content can be controlled.

Here we render with an increasing style weight applied to Red Canna:

Multiple Style Images

More than one style image can be used to blend multiple artistic styles.

Top row (left to right): The Starry Night + The Scream, The Scream + Composition VII, Seated Nude + Composition VII
Bottom row (left to right): Seated Nude + The Starry Night, Oversoul + Freshness of Cold, David Bowie + Skull

Style Interpolation

When using multiple style images, the degree of blending between the images can be controlled.

Top row (left to right): content image, .2 The Starry Night + .8 The Scream, .8 The Starry Night + .2 The Scream
Bottom row (left to right): .2 Oversoul + .8 Freshness of Cold, .5 Oversoul + .5 Freshness of Cold, .8 Oversoul + .2 Freshness of Cold

Transfer style but not color

The color scheme of the original image can be preserved by including the flag --original_colors. Colors are transferred using either the YUV, YCrCb, CIE L*a*b*, or CIE L*u*v* color spaces.

Here we reproduce Figure 1 and Figure 2 in the third paper using luminance-only transfer:

Left to right: content image, stylized image, stylized image with the original colors of the content image

Textures

The algorithm is not constrained to artistic painting styles. It can also be applied to photographic textures to create pareidolic images.

Segmentation

Style can be transferred to semantic segmentations in the content image.

Multiple styles can be transferred to the foreground and background of the content image.

Left to right: content image, foreground style, background style, foreground mask, background mask, stylized image

Video

Animations can be rendered by applying the algorithm to each source frame. For the best results, the gradient descent is initialized with the previously stylized frame warped to the current frame according to the optical flow between the pair of frames. Loss functions for temporal consistency are used to penalize pixels excluding disoccluded regions and motion boundaries.


Top row (left to right): source frames, ground-truth optical flow visualized
Bottom row (left to right): disoccluded regions and motion boundaries, stylized frames

Big thanks to Mike Burakoff for finding a bug in the video rendering.

Gradient Descent Initialization

The initialization of the gradient descent is controlled using --init_img_type for single images and --init_frame_type or --first_frame_type for video frames. White noise allows an arbitrary number of distinct images to be generated. Whereas, initializing with a fixed image always converges to the same output.

Here we reproduce Figure 6 from the first paper:

Top row (left to right): Initialized with the content image, the style image, white noise (RNG seed 1)
Bottom row (left to right): Initialized with white noise (RNG seeds 2, 3, 4)

Layer Representations

The feature complexities and receptive field sizes increase down the CNN heirarchy.

Here we reproduce Figure 3 from the original paper:

1 x 10^-5 1 x 10^-4 1 x 10^-3 1 x 10^-2
conv1_1
conv2_1
conv3_1
conv4_1
conv5_1

Rows: increasing subsets of CNN layers; i.e. 'conv4_1' means using 'conv1_1', 'conv2_1', 'conv3_1', 'conv4_1'.
Columns: alpha/beta ratio of the the content and style reconstruction (see Content / Style Tradeoff).

Setup

Dependencies:

Optional (but recommended) dependencies:

After installing the dependencies:

  • Download the VGG-19 model weights (see the "VGG-VD models from the Very Deep Convolutional Networks for Large-Scale Visual Recognition project" section). More info about the VGG-19 network can be found here.
  • After downloading, copy the weights file imagenet-vgg-verydeep-19.mat to the project directory.

Usage

Basic Usage

Single Image

  1. Copy 1 content image to the default image content directory ./image_input
  2. Copy 1 or more style images to the default style directory ./styles
  3. Run the command:
bash stylize_image.sh <path_to_content_image> <path_to_style_image>

Example:

bash stylize_image.sh ./image_input/lion.jpg ./styles/kandinsky.jpg

Note: Supported image formats include: .png, .jpg, .ppm, .pgm

Note: Paths to images should not contain the ~ character to represent your home directory; you should instead use a relative path or the absolute path.

Video Frames

  1. Copy 1 content video to the default video content directory ./video_input
  2. Copy 1 or more style images to the default style directory ./styles
  3. Run the command:
bash stylize_video.sh <path_to_video> <path_to_style_image>

Example:

bash stylize_video.sh ./video_input/video.mp4 ./styles/kandinsky.jpg

Note: Supported video formats include: .mp4, .mov, .mkv

Advanced Usage

Single Image or Video Frames

  1. Copy content images to the default image content directory ./image_input or copy video frames to the default video content directory ./video_input
  2. Copy 1 or more style images to the default style directory ./styles
  3. Run the command with specific arguments:
python neural_style.py <arguments>

Example (Single Image):

python neural_style.py --content_img golden_gate.jpg \
                       --style_imgs starry-night.jpg \
                       --max_size 1000 \
                       --max_iterations 100 \
                       --original_colors \
                       --device /cpu:0 \
                       --verbose;

To use multiple style images, pass a space-separated list of the image names and image weights like this:

--style_imgs starry_night.jpg the_scream.jpg --style_imgs_weights 0.5 0.5

Example (Video Frames):

python neural_style.py --video \
                       --video_input_dir ./video_input/my_video_frames \
                       --style_imgs starry-night.jpg \
                       --content_weight 5 \
                       --style_weight 1000 \
                       --temporal_weight 1000 \
                       --start_frame 1 \
                       --end_frame 50 \
                       --max_size 1024 \
                       --first_frame_iterations 3000 \
                       --verbose;

Note: When using --init_frame_type prev_warp you must have previously computed the backward and forward optical flow between the frames. See ./video_input/make-opt-flow.sh and ./video_input/run-deepflow.sh

Arguments

  • --content_img: Filename of the content image. Example: lion.jpg
  • --content_img_dir: Relative or absolute directory path to the content image. Default: ./image_input
  • --style_imgs: Filenames of the style images. To use multiple style images, pass a space-separated list. Example: --style_imgs starry-night.jpg
  • --style_imgs_weights: The blending weights for each style image. Default: 1.0 (assumes only 1 style image)
  • --style_imgs_dir: Relative or absolute directory path to the style images. Default: ./styles
  • --init_img_type: Image used to initialize the network. Choices: content, random, style. Default: content
  • --max_size: Maximum width or height of the input images. Default: 512
  • --content_weight: Weight for the content loss function. Default: 5e0
  • --style_weight: Weight for the style loss function. Default: 1e4
  • --tv_weight: Weight for the total variational loss function. Default: 1e-3
  • --temporal_weight: Weight for the temporal loss function. Default: 2e2
  • --content_layers: Space-separated VGG-19 layer names used for the content image. Default: conv4_2
  • --style_layers: Space-separated VGG-19 layer names used for the style image. Default: relu1_1 relu2_1 relu3_1 relu4_1 relu5_1
  • --content_layer_weights: Space-separated weights of each content layer to the content loss. Default: 1.0
  • --style_layer_weights: Space-separated weights of each style layer to loss. Default: 0.2 0.2 0.2 0.2 0.2
  • --original_colors: Boolean flag indicating if the style is transferred but not the colors.
  • --color_convert_type: Color spaces (YUV, YCrCb, CIE L*u*v*, CIE L*a*b*) for luminance-matching conversion to original colors. Choices: yuv, ycrcb, luv, lab. Default: yuv
  • --style_mask: Boolean flag indicating if style is transferred to masked regions.
  • --style_mask_imgs: Filenames of the style mask images (example: face_mask.png). To use multiple style mask images, pass a space-separated list. Example: --style_mask_imgs face_mask.png face_mask_inv.png
  • --noise_ratio: Interpolation value between the content image and noise image if network is initialized with random. Default: 1.0
  • --seed: Seed for the random number generator. Default: 0
  • --model_weights: Weights and biases of the VGG-19 network. Download here. Default:imagenet-vgg-verydeep-19.mat
  • --pooling_type: Type of pooling in convolutional neural network. Choices: avg, max. Default: avg
  • --device: GPU or CPU device. GPU mode highly recommended but requires NVIDIA CUDA. Choices: /gpu:0 /cpu:0. Default: /gpu:0
  • --img_output_dir: Directory to write output to. Default: ./image_output
  • --img_name: Filename of the output image. Default: result
  • --verbose: Boolean flag indicating if statements should be printed to the console.

Optimization Arguments

  • --optimizer: Loss minimization optimizer. L-BFGS gives better results. Adam uses less memory. Choices: lbfgs, adam. Default: lbfgs
  • --learning_rate: Learning-rate parameter for the Adam optimizer. Default: 1e0

  • --max_iterations: Max number of iterations for the Adam or L-BFGS optimizer. Default: 1000
  • --print_iterations: Number of iterations between optimizer print statements. Default: 50
  • --content_loss_function: Different constants K in the content loss function. Choices: 1, 2, 3. Default: 1

Video Frame Arguments

  • --video: Boolean flag indicating if the user is creating a video.
  • --start_frame: First frame number. Default: 1
  • --end_frame: Last frame number. Default: 1
  • --first_frame_type: Image used to initialize the network during the rendering of the first frame. Choices: content, random, style. Default: random
  • --init_frame_type: Image used to initialize the network during the every rendering after the first frame. Choices: prev_warped, prev, content, random, style. Default: prev_warped
  • --video_input_dir: Relative or absolute directory path to input frames. Default: ./video_input
  • --video_output_dir: Relative or absolute directory path to write output frames to. Default: ./video_output
  • --content_frame_frmt: Format string of input frames. Default: frame_{}.png
  • --backward_optical_flow_frmt: Format string of backward optical flow files. Default: backward_{}_{}.flo
  • --forward_optical_flow_frmt: Format string of forward optical flow files. Default: forward_{}_{}.flo
  • --content_weights_frmt: Format string of optical flow consistency files. Default: reliable_{}_{}.txt
  • --prev_frame_indices: Previous frames to consider for longterm temporal consistency. Default: 1
  • --first_frame_iterations: Maximum number of optimizer iterations of the first frame. Default: 2000
  • --frame_iterations: Maximum number of optimizer iterations for each frame after the first frame. Default: 800

Questions and Errata

Send questions or issues:

Memory

By default, neural-style-tf uses the NVIDIA cuDNN GPU backend for convolutions and L-BFGS for optimization. These produce better and faster results, but can consume a lot of memory. You can reduce memory usage with the following:

  • Use Adam: Add the flag --optimizer adam to use Adam instead of L-BFGS. This should significantly reduce memory usage, but will require tuning of other parameters for good results; in particular you should experiment with different values of --learning_rate, --content_weight, --style_weight
  • Reduce image size: You can reduce the size of the generated image with the --max_size argument.

Implementation Details

All images were rendered on a machine with:

  • CPU: Intel Core i7-6800K @ 3.40GHz × 12
  • GPU: NVIDIA GeForce GTX 1080/PCIe/SSE2
  • OS: Linux Ubuntu 16.04.1 LTS 64-bit
  • CUDA: 8.0
  • python: 2.7.12
  • tensorflow: 0.10.0rc
  • opencv: 2.4.9.1

Acknowledgements

The implementation is based on the projects:

  • Torch (Lua) implementation 'neural-style' by jcjohnson
  • Torch (Lua) implementation 'artistic-videos' by manuelruder

Source video frames were obtained from:

Artistic images were created by the modern artists:

Artistic images were created by the popular historical artists:

Bash shell scripts for testing were created by my brother Sheldon Smith.

Citation

If you find this code useful for your research, please cite:

@misc{Smith2016,
  author = {Smith, Cameron},
  title = {neural-style-tf},
  year = {2016},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/cysmith/neural-style-tf}},
}
Owner
Cameron
Cameron
Official PyTorch implementation of the paper "Recycling Discriminator: Towards Opinion-Unaware Image Quality Assessment Using Wasserstein GAN", accepted to ACM MM 2021 BNI Track.

RecycleD Official PyTorch implementation of the paper "Recycling Discriminator: Towards Opinion-Unaware Image Quality Assessment Using Wasserstein GAN

Yunan Zhu 23 Nov 05, 2022
Python-experiments - A Repository which contains python scripts to automate things and make your life easier with python

Python Experiments A Repository which contains python scripts to automate things

Vivek Kumar Singh 11 Sep 25, 2022
🛰️ List of earth observation companies and job sites

Earth Observation Companies & Jobs source Portals & Jobs Geospatial Geospatial jobs newsletter: ~biweekly newsletter with geospatial jobs by Ali Ahmad

Dahn 64 Dec 27, 2022
Nodule Generation Algorithm Baseline and template code for node21 generation track

Nodule Generation Algorithm This codebase implements a simple baseline model, by following the main steps in the paper published by Litjens et al. for

node21challenge 10 Apr 21, 2022
gtfs2vec - Learning GTFS Embeddings for comparing PublicTransport Offer in Microregions

gtfs2vec This is a companion repository for a gtfs2vec - Learning GTFS Embeddings for comparing PublicTransport Offer in Microregions publication. Vis

Politechnika Wrocławska - repozytorium dla informatyków 5 Oct 10, 2022
Object DGCNN and DETR3D, Our implementations are built on top of MMdetection3D.

This repo contains the implementations of Object DGCNN (https://arxiv.org/abs/2110.06923) and DETR3D (https://arxiv.org/abs/2110.06922). Our implementations are built on top of MMdetection3D.

Wang, Yue 539 Jan 07, 2023
Distance-Ratio-Based Formulation for Metric Learning

Distance-Ratio-Based Formulation for Metric Learning Environment Python3 Pytorch (http://pytorch.org/) (version 1.6.0+cu101) json tqdm Preparing datas

Hyeongji Kim 1 Dec 07, 2022
CSKG is a commonsense knowledge graph that combines seven popular sources into a consolidated representation

CSKG: The CommonSense Knowledge Graph CSKG is a commonsense knowledge graph that combines seven popular sources into a consolidated representation: AT

USC ISI I2 85 Dec 12, 2022
Progressive Domain Adaptation for Object Detection

Progressive Domain Adaptation for Object Detection Implementation of our paper Progressive Domain Adaptation for Object Detection, based on pytorch-fa

96 Nov 25, 2022
Causal estimators for use with WhyNot

WhyNot Estimators A collection of causal inference estimators implemented in Python and R to pair with the Python causal inference library whynot. For

ZYKLS 8 Apr 06, 2022
A list of Machine Learning Art Colabs

ML Visual Art Colabs A list of cool Colabs on Machine Learning Imagemaking or other artistic purposes 3D Ken Burns Effect Ken Burns Effect by Manuel R

Derrick Schultz (he/him) 789 Dec 12, 2022
Multi-Glimpse Network With Python

Multi-Glimpse Network Our code requires Python ≥ 3.8 Installation For example, venv + pip: $ python3 -m venv env $ source env/bin/activate (env) $ pyt

9 May 10, 2022
B-cos Networks: Attention is All we Need for Interpretability

Convolutional Dynamic Alignment Networks for Interpretable Classifications M. Böhle, M. Fritz, B. Schiele. B-cos Networks: Alignment is All we Need fo

58 Dec 23, 2022
Event-forecasting - Event Forecasting Algorithms With Python

event-forecasting Event Forecasting Algorithms Theory Correlating events in comp

Intellia ICT 4 Feb 15, 2022
Drone Task1 - Drone Task1 With Python

Drone_Task1 Matching Results 3.mp4 1.mp4

MLV Lab (Machine Learning and Vision Lab at Korea University) 11 Nov 14, 2022
This is an official implementation for "Swin Transformer: Hierarchical Vision Transformer using Shifted Windows" on Semantic Segmentation.

Swin Transformer for Semantic Segmentation of satellite images This repo contains the supported code and configuration files to reproduce semantic seg

23 Oct 10, 2022
Implicit Model Specialization through DAG-based Decentralized Federated Learning

Federated Learning DAG Experiments This repository contains software artifacts to reproduce the experiments presented in the Middleware '21 paper "Imp

Operating Systems and Middleware Group 5 Oct 16, 2022
Code for NeurIPS2021 submission "A Surrogate Objective Framework for Prediction+Programming with Soft Constraints"

This repository is the code for NeurIPS 2021 submission "A Surrogate Objective Framework for Prediction+Programming with Soft Constraints". Edit 2021/

10 Dec 20, 2022
GNEE - GAT Neural Event Embeddings

GNEE - GAT Neural Event Embeddings This repository contains source code for the GNEE (GAT Neural Event Embeddings) method introduced in the paper: "Se

João Pedro Rodrigues Mattos 0 Sep 15, 2021
Source Code for DialogBERT: Discourse-Aware Response Generation via Learning to Recover and Rank Utterances (https://arxiv.org/pdf/2012.01775.pdf)

DialogBERT This is a PyTorch implementation of the DialogBERT model described in DialogBERT: Neural Response Generation via Hierarchical BERT with Dis

Xiaodong Gu 67 Jan 06, 2023