subpixel: A subpixel convnet for super resolution with Tensorflow

Related tags

Deep Learningsubpixel
Overview

subpixel: A subpixel convolutional neural network implementation with Tensorflow

Left: input images / Right: output images with 4x super-resolution after 6 epochs:

See more examples inside the images folder.

In CVPR 2016 Shi et. al. from Twitter VX (previously Magic Pony) published a paper called Real-Time Single Image and Video Super-Resolution Using an Efficient Sub-Pixel Convolutional Neural Network [1]. Here we propose a reimplementation of their method and discuss future applications of the technology.

But first let us discuss some background.

Convolutions, transposed convolutions and subpixel convolutions

Convolutional neural networks (CNN) are now standard neural network layers for computer vision. Transposed convolutions (sometimes referred to as deconvolution) are the GRADIENTS of a convolutional layer. Transposed convolutions were, as far as we know first used by Zeiler and Fergus [2] for visualization purposes while improving their AlexNet model.

For visualization purposes let us check out that convolutions in the present subject are a sequence of inner product of a given filter (or kernel) with pieces of a larger image. This operation is highly parallelizable, since the kernel is the same throughout the image. People used to refer to convolutions as locally connected layers with shared parameters. Checkout the figure bellow by Dumoulin and Visin [3]:

source

Note though that convolutional neural networks can be defined with strides or we can follow the convolution with maxpooling to downsample the input image. The equivalent backward operation of a convolution with strides, in other words its gradient, is an upsampling operation, where zeros a filled in between non-zeros pixels followed by a convolution with the kernel rotated 180 degrees. See representation copied from Dumoulin and Visin again:

source

For classification purposes, all that we need is the feedforward pass of a convolutional neural network to extract features at different scales. But for applications such as image super resolution and autoencoders, both downsampling and upsampling operations are necessary in a feedforward pass. The community took inspiration on how the gradients are implemented in CNNs and applied them as a feedforward layer instead.

But as one may have observed the upsampling operation as implemented above with strided convolution gradients adds zero values to the upscale the image, that have to be later filled in with meaningful values. Maybe even worse, these zero values have no gradient information that can be backpropagated through.

To cope with that problem, Shi et. al [1] proposed what we argue to be one the most useful recent convnet tricks (at least in my opinion as a generative model researcher!) They proposed a subpixel convolutional neural network layer for upscaling. This layer essentially uses regular convolutional layers followed by a specific type of image reshaping called a phase shift. In other words, instead of putting zeros in between pixels and having to do extra computation, they calculate more convolutions in lower resolution and resize the resulting map into an upscaled image. This way, no meaningless zeros are necessary. Checkout the figure below from their paper. Follow the colors to have an intuition about how they do the image resizing. Check this paper for further understanding.

source

Next we will discuss our implementation of this method and later what we foresee to be the implications of it everywhere where upscaling in convolutional neural networks was necessary.

Subpixel CNN layer

Following Shi et. al. the equation for implementing the phase shift for CNNs is:

source

In numpy, we can write this as

def PS(I, r):
  assert len(I.shape) == 3
  assert r>0
  r = int(r)
  O = np.zeros((I.shape[0]*r, I.shape[1]*r, I.shape[2]/(r*2)))
  for x in range(O.shape[0]):
    for y in range(O.shape[1]):
      for c in range(O.shape[2]):
        c += 1
        a = np.floor(x/r).astype("int")
        b = np.floor(y/r).astype("int")
        d = c*r*(y%r) + c*(x%r)
        print a, b, d
        O[x, y, c-1] = I[a, b, d]
  return O

To implement this in Tensorflow we would have to create a custom operator and its equivalent gradient. But after staring for a few minutes in the image depiction of the resulting operation we noticed how to write that using just regular reshape, split and concatenate operations. To understand that note that phase shift simply goes through different channels of the output convolutional map and builds up neighborhoods of r x r pixels. And we can do the same with a few lines of Tensorflow code as:

def _phase_shift(I, r):
    # Helper function with main phase shift operation
    bsize, a, b, c = I.get_shape().as_list()
    X = tf.reshape(I, (bsize, a, b, r, r))
    X = tf.transpose(X, (0, 1, 2, 4, 3))  # bsize, a, b, 1, 1
    X = tf.split(1, a, X)  # a, [bsize, b, r, r]
    X = tf.concat(2, [tf.squeeze(x) for x in X])  # bsize, b, a*r, r
    X = tf.split(1, b, X)  # b, [bsize, a*r, r]
    X = tf.concat(2, [tf.squeeze(x) for x in X])  #
    bsize, a*r, b*r
    return tf.reshape(X, (bsize, a*r, b*r, 1))

def PS(X, r, color=False):
  # Main OP that you can arbitrarily use in you tensorflow code
  if color:
    Xc = tf.split(3, 3, X)
    X = tf.concat(3, [_phase_shift(x, r) for x in Xc])
  else:
    X = _phase_shift(X, r)
  return X

The reminder of this library is an implementation of a subpixel CNN using the proposed PS implementation for super resolution of celeb-A image faces. The code was written on top of carpedm20/DCGAN-tensorflow, as so, follow the same instructions to use it:

$ python download.py --dataset celebA  # if this doesn't work, you will have to download the dataset by hand somewhere else
$ python main.py --dataset celebA --is_train True --is_crop True

Subpixel CNN future is bright

Here we want to forecast that subpixel CNNs are going to ultimately replace transposed convolutions (deconv, conv grad, or whatever you call it) in feedforward neural networks. Phase shift's gradient is much more meaningful and resizing operations are virtually free computationally. Our implementation is a high level one, using default Tensorflow OPs. But next we will rewrite everything with Keras so that an even larger community can use it. Plus, a cuda backend level implementation would be even more appreciated.

But for now we want to encourage the community to experiment replacing deconv layers with subpixel operatinos everywhere. By everywhere we mean:

  • Conv-deconv autoencoders
    Similar to super-resolution, include subpixel in other autoencoder implementations, replace deconv layers
  • Style transfer networks
    This didn't work in a lazy plug and play in our experiments. We have to look more carefully
  • Deep Convolutional Autoencoders (DCGAN)
    We started doing this, but as predicted we have to change hyperparameters. The network power is totally different from deconv layers.
  • Segmentation Networks (SegNets)
    ULTRA LOW hanging fruit! This one will be the easiest. Free paper, you're welcome!
  • wherever upscaling is done with zero padding

Join us in the revolution to get rid of meaningless zeros in feedfoward convnets, give suggestions here, try our code!

Sample results

The top row is the input, the middle row is the output, and the bottom row is the ground truth.

by @dribnet

References

[1] Real-Time Single Image and Video Super-Resolution Using an Efficient Sub-Pixel Convolutional Neural Network. By Shi et. al.
[2] Visualizing and Understanding Convolutional Networks. By Zeiler and Fergus.
[3] A guide to convolution arithmetic for deep learning. By Dumoulin and Visin.

Further reading

Alex J. Champandard made a really interesting analysis of this topic in this thread.
For discussions about differences between phase shift and straight up resize please see the companion notebook and this thread.

Owner
Atrium LTS
Atrium LTS
TensorFlow (Python) implementation of DeepTCN model for multivariate time series forecasting.

DeepTCN TensorFlow TensorFlow (Python) implementation of multivariate time series forecasting model introduced in Chen, Y., Kang, Y., Chen, Y., & Wang

Flavia Giammarino 21 Dec 19, 2022
Implementation of Monocular Direct Sparse Localization in a Prior 3D Surfel Map (DSL)

DSL Project page: https://sites.google.com/view/dsl-ram-lab/ Monocular Direct Sparse Localization in a Prior 3D Surfel Map Authors: Haoyang Ye, Huaiya

Haoyang Ye 93 Nov 30, 2022
Unbalanced Feature Transport for Exemplar-based Image Translation (CVPR 2021)

UNITE and UNITE+ Unbalanced Feature Transport for Exemplar-based Image Translation (CVPR 2021) Unbalanced Intrinsic Feature Transport for Exemplar-bas

Fangneng Zhan 183 Nov 09, 2022
A non-linear, non-parametric Machine Learning method capable of modeling complex datasets

Fast Symbolic Regression Symbolic Regression is a non-linear, non-parametric Machine Learning method capable of modeling complex data sets. fastsr aim

VAMSHI CHOWDARY 3 Jun 22, 2022
Python parser for DTED data.

DTED Parser This is a package written in pure python (with help from numpy) to parse and investigate Digital Terrain Elevation Data (DTED) files. This

Ben Bonenfant 12 Dec 18, 2022
DirectVoxGO reconstructs a scene representation from a set of calibrated images capturing the scene.

DirectVoxGO reconstructs a scene representation from a set of calibrated images capturing the scene. We achieve NeRF-comparable novel-view synthesis quality with super-fast convergence.

sunset 709 Dec 31, 2022
Datasets and pretrained Models for StyleGAN3 ...

Datasets and pretrained Models for StyleGAN3 ... Dear arfiticial friend, this is a collection of artistic datasets and models that we have put togethe

lucid layers 34 Oct 06, 2022
This repository contains an implementation of ConvMixer for the ICLR 2022 submission "Patches Are All You Need?".

Patches Are All You Need? 🤷 This repository contains an implementation of ConvMixer for the ICLR 2022 submission "Patches Are All You Need?". Code ov

ICLR 2022 Author 934 Dec 30, 2022
Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time.

BBB Face Recognizer Face recognition system using MTCNN, FACENET, SVM and FAST API to track participants of Big Brother Brasil in real time. Instalati

Rafael Azevedo 232 Dec 24, 2022
Styleformer - Official Pytorch Implementation

Styleformer -- Official PyTorch implementation Styleformer: Transformer based Generative Adversarial Networks with Style Vector(https://arxiv.org/abs/

Jeeseung Park 159 Dec 12, 2022
Privacy as Code for DSAR Orchestration: Privacy Request automation to fulfill GDPR, CCPA, and LGPD data subject requests.

Meet Fidesops: Privacy as Code for DSAR Orchestration A part of the greater Fides ecosystem. ⚡ Overview Fidesops (fee-dez-äps, combination of the Lati

Ethyca 44 Dec 06, 2022
wgan, wgan2(improved, gp), infogan, and dcgan implementation in lasagne, keras, pytorch

Generative Adversarial Notebooks Collection of my Generative Adversarial Network implementations Most codes are for python3, most notebooks works on C

tjwei 1.5k Dec 16, 2022
Python KNN model: Predicting a probability of getting a work visa. Tableau: Non-immigrant visas over the years.

The value of international students to the United States. Probability of getting a non-immigrant visa. Project timeline: Jan 2021 - April 2021 Project

Zinaida Dvoskina 2 Nov 21, 2021
MMdet2-based reposity about lightweight detection model: Nanodet, PicoDet.

Lightweight-Detection-and-KD MMdet2-based reposity about lightweight detection model: Nanodet, PicoDet. This repo also includes detection knowledge di

Egqawkq 12 Jan 05, 2023
This is the official pytorch implementation of AutoDebias, an automatic debiasing method for recommendation.

AutoDebias This is the official pytorch implementation of AutoDebias, a debiasing method for recommendation system. AutoDebias is proposed in the pape

Dong Hande 77 Nov 25, 2022
Generating synthetic mobility data for a realistic population with RNNs to improve utility and privacy

lbs-data Motivation Location data is collected from the public by private firms via mobile devices. Can this data also be used to serve the public goo

Alex 11 Sep 22, 2022
An All-MLP solution for Vision, from Google AI

MLP Mixer - Pytorch An All-MLP solution for Vision, from Google AI, in Pytorch. No convolutions nor attention needed! Yannic Kilcher video Install $ p

Phil Wang 784 Jan 06, 2023
Self-Supervised Learning with Kernel Dependence Maximization

Self-Supervised Learning with Kernel Dependence Maximization This is the code for SSL-HSIC, a self-supervised learning loss proposed in the paper Self

DeepMind 29 Dec 29, 2022
Lightweight stereo matching network based on MobileNetV1 and MobileNetV2

MobileStereoNet: Towards Lightweight Deep Networks for Stereo Matching

Cognitive Systems Research Group 139 Nov 30, 2022
PyTorch implementation for the ICLR 2020 paper "Understanding the Limitations of Variational Mutual Information Estimators"

Smoothed Mutual Information ``Lower Bound'' Estimator PyTorch implementation for the ICLR 2020 paper Understanding the Limitations of Variational Mutu

50 Nov 09, 2022