Adversarial-autoencoders - Tensorflow implementation of Adversarial Autoencoders

Overview

Adversarial Autoencoders (AAE)

  • Tensorflow implementation of Adversarial Autoencoders (ICLR 2016)
  • Similar to variational autoencoder (VAE), AAE imposes a prior on the latent variable z. Howerver, instead of maximizing the evidence lower bound (ELBO) like VAE, AAE utilizes a adversarial network structure to guides the model distribution of z to match the prior distribution.
  • This repository contains reproduce of several experiments mentioned in the paper.

Requirements

Implementation details

  • All the models of AAE are defined in src/models/aae.py.
  • Model corresponds to fig 1 and 3 in the paper can be found here: train and test.
  • Model corresponds to fig 6 in the paper can be found here: train and test.
  • Model corresponds to fig 8 in the paper can be found here: train and test.
  • Examples of how to use AAE models can be found in experiment/aae_mnist.py.
  • Encoder, decoder and all discriminators contain two fully connected layers with 1000 hidden units and RelU activation function. Decoder and all discriminators contain an additional fully connected layer for output.
  • Images are normalized to [-1, 1] before fed into the encoder and tanh is used as the output nonlinear of decoder.
  • All the sub-networks are optimized by Adam optimizer with beta1 = 0.5.

Preparation

  • Download the MNIST dataset from here.
  • Setup path in experiment/aae_mnist.py: DATA_PATH is the path to put MNIST dataset. SAVE_PATH is the path to save output images and trained model.

Usage

The script experiment/aae_mnist.py contains all the experiments shown here. Detailed usage for each experiment will be describe later along with the results.

Argument

  • --train: Train the model of Fig 1 and 3 in the paper.
  • --train_supervised: Train the model of Fig 6 in the paper.
  • --train_semisupervised: Train the model of Fig 8 in the paper.
  • --label: Incorporate label information in the adversarial regularization (Fig 3 in the paper).
  • --generate: Randomly sample images from trained model.
  • --viz: Visualize latent space and data manifold (only when --ncode is 2).
  • --supervise: Sampling from supervised model (Fig 6 in the paper) when --generate is True.
  • --load: The epoch ID of pre-trained model to be restored.
  • --ncode: Dimension of code. Default: 2
  • --dist_type: Type of the prior distribution used to impose on the hidden codes. Default: gaussian. gmm for Gaussian mixture distribution.
  • --noise: Add noise to encoder input (Gaussian with std=0.6).
  • --lr: Initial learning rate. Default: 2e-4.
  • --dropout: Keep probability for dropout. Default: 1.0.
  • --bsize: Batch size. Default: 128.
  • --maxepoch: Max number of epochs. Default: 100.
  • --encw: Weight of autoencoder loss. Default: 1.0.
  • --genw: Weight of z generator loss. Default: 6.0.
  • --disw: Weight of z discriminator loss. Default: 6.0.
  • --clsw: Weight of semi-supervised loss. Default: 1.0.
  • --ygenw: Weight of y generator loss. Default: 6.0.
  • --ydisw: Weight of y discriminator loss. Default: 6.0.

1. Adversarial Autoencoder

Architecture

Architecture Description
The top row is an autoencoder. z is sampled through the re-parameterization trick discussed in variational autoencoder paper. The bottom row is a discriminator to separate samples generate from the encoder and samples from the prior distribution p(z).

Hyperparameters

name value
Reconstruction Loss Weight 1.0
Latent z G/D Loss Weight 6.0 / 6.0
Batch Size 128
Max Epoch 400
Learning Rate 2e-4 (initial) / 2e-5 (100 epochs) / 2e-6 (300 epochs)

Usage

  • Training. Summary, randomly sampled images and latent space during training will be saved in SAVE_PATH.
python aae_mnist.py --train \
  --ncode CODE_DIM \
  --dist_type TYPE_OF_PRIOR (`gaussian` or `gmm`)
  • Random sample data from trained model. Image will be saved in SAVE_PATH with name generate_im.png.
python aae_mnist.py --generate \
  --ncode CODE_DIM \
  --dist_type TYPE_OF_PRIOR (`gaussian` or `gmm`)\
  --load RESTORE_MODEL_ID
  • Visualize latent space and data manifold (only when code dim = 2). Image will be saved in SAVE_PATH with name generate_im.png and latent.png. For Gaussian distribution, there will be one image for data manifold. For mixture of 10 2D Gaussian, there will be 10 images of data manifold for each component of the distribution.
python aae_mnist.py --viz \
  --ncode CODE_DIM \
  --dist_type TYPE_OF_PRIOR (`gaussian` or `gmm`)\
  --load RESTORE_MODEL_ID

Result

  • For 2D Gaussian, we can see sharp transitions (no gaps) as mentioned in the paper. Also, from the learned manifold, we can see almost all the sampled images are readable.
  • For mixture of 10 Gaussian, I just uniformly sample images in a 2D square space as I did for 2D Gaussian instead of sampling along the axes of the corresponding mixture component, which will be shown in the next section. We can see in the gap area between two component, it is less likely to generate good samples.
Prior Distribution Learned Coding Space Learned Manifold

2. Incorporating label in the Adversarial Regularization

Architecture

Architecture Description
The only difference from previous model is that the one-hot label is used as input of encoder and there is one extra class for unlabeled data. For mixture of Gaussian prior, real samples are drawn from each components for each labeled class and for unlabeled data, real samples are drawn from the mixture distribution.

Hyperparameters

Hyperparameters are the same as previous section.

Usage

  • Training. Summary, randomly sampled images and latent space will be saved in SAVE_PATH.
python aae_mnist.py --train --label\
  --ncode CODE_DIM \
  --dist_type TYPE_OF_PRIOR (`gaussian` or `gmm`)
  • Random sample data from trained model. Image will be saved in SAVE_PATH with name generate_im.png.
python aae_mnist.py --generate --ncode 
   
     --label --dist_type 
    
      --load 
     

     
    
   
  • Visualize latent space and data manifold (only when code dim = 2). Image will be saved in SAVE_PATH with name generate_im.png and latent.png. For Gaussian distribution, there will be one image for data manifold. For mixture of 10 2D Gaussian, there will be 10 images of data manifold for each component of the distribution.
python aae_mnist.py --viz --label \
  --ncode CODE_DIM \
  --dist_type TYPE_OF_PRIOR (`gaussian` or `gmm`) \
  --load RESTORE_MODEL_ID

Result

  • Compare with the result in the previous section, incorporating labeling information provides better fitted distribution for codes.
  • The learned manifold images demonstrate that each Gaussian component corresponds to the one class of digit. However, the style representation is not consistently represented within each mixture component as shown in the paper. For example, the right most column of the first row experiment, the lower right of digit 1 tilt to left while the lower right of digit 9 tilt to right.
Number of Label Used Learned Coding Space Learned Manifold
Use full label
10k labeled data and 40k unlabeled data

3. Supervised Adversarial Autoencoders

Architecture

Architecture Description
The decoder takes code as well as a one-hot vector encoding the label as input. Then it forces the network learn the code independent of the label.

Hyperparameters

Usage

  • Training. Summary and randomly sampled images will be saved in SAVE_PATH.
python aae_mnist.py --train_supervised \
  --ncode CODE_DIM
  • Random sample data from trained model. Image will be saved in SAVE_PATH with name sample_style.png.
python aae_mnist.py  --generate --supervise\
  --ncode CODE_DIM \
  --load RESTORE_MODEL_ID

Result

  • The result images are generated by using the same code for each column and the same digit label for each row.
  • When code dimension is 2, we can see each column consists the same style clearly. But for dimension 10, we can hardly read some digits. Maybe there are some issues of implementation or the hyper-parameters are not properly picked, which makes the code still depend on the label.
Code Dim=2 Code Dim=10

4. Semi-supervised learning

Architecture

Architecture Description
The encoder outputs code z as well as the estimated label y. Encoder again takes code z and one-hot label y as input. A Gaussian distribution is imposed on code z and a Categorical distribution is imposed on label y. In this implementation, the autoencoder is trained by semi-supervised classification phase every ten training steps when using 1000 label images and the one-hot label y is approximated by output of softmax.

Hyperparameters

name value
Dimention of z 10
Reconstruction Loss Weight 1.0
Letant z G/D Loss Weight 6.0 / 6.0
Letant y G/D Loss Weight 6.0 / 6.0
Batch Size 128
Max Epoch 250
Learning Rate 1e-4 (initial) / 1e-5 (150 epochs) / 1e-6 (200 epochs)

Usage

  • Training. Summary will be saved in SAVE_PATH.
python aae_mnist.py \
  --ncode 10 \
  --train_semisupervised \
  --lr 2e-4 \
  --maxepoch 250

Result

  • 1280 labels are used (128 labeled images per class)

learning curve for training set (computed only on the training set with labels) train

learning curve for testing set

  • The accuracy on testing set is 97.10% around 200 epochs. valid
Owner
Qian Ge
ECE PhD candidate at NCSU
Qian Ge
This repository contains the source code of an efficient 1D probabilistic model for music time analysis proposed in ICASSP2022 venue.

Jump Reward Inference for 1D Music Rhythmic State Spaces An implementation of the probablistic jump reward inference model for music rhythmic informat

Mojtaba Heydari 25 Dec 16, 2022
Labelbox is the fastest way to annotate data to build and ship artificial intelligence applications

Labelbox Labelbox is the fastest way to annotate data to build and ship artificial intelligence applications. Use this github repository to help you s

labelbox 1.7k Dec 29, 2022
Implementation of Convolutional enhanced image Transformer

CeiT : Convolutional enhanced image Transformer This is an unofficial PyTorch implementation of Incorporating Convolution Designs into Visual Transfor

Rishikesh (ऋषिकेश) 82 Dec 13, 2022
CRNN With PyTorch

CRNN-PyTorch Implementation of https://arxiv.org/abs/1507.05717

Vadim 4 Sep 01, 2022
Putting NeRF on a Diet: Semantically Consistent Few-Shot View Synthesis Implementation

Putting NeRF on a Diet: Semantically Consistent Few-Shot View Synthesis Implementation This project attempted to implement the paper Putting NeRF on a

254 Dec 27, 2022
S2-BNN: Bridging the Gap Between Self-Supervised Real and 1-bit Neural Networks via Guided Distribution Calibration (CVPR 2021)

S2-BNN (Self-supervised Binary Neural Networks Using Distillation Loss) This is the official pytorch implementation of our paper: "S2-BNN: Bridging th

Zhiqiang Shen 52 Dec 24, 2022
A Python package for performing pore network modeling of porous media

Overview of OpenPNM OpenPNM is a comprehensive framework for performing pore network simulations of porous materials. More Information For more detail

PMEAL 336 Dec 30, 2022
This library is a location of the LegacyLogger for PyTorch Lightning.

neptune-contrib Documentation See neptune-contrib documentation site Installation Get prerequisites python versions 3.5.6/3.6 are supported Install li

neptune.ai 26 Oct 07, 2021
Train an RL agent to execute natural language instructions in a 3D Environment (PyTorch)

Gated-Attention Architectures for Task-Oriented Language Grounding This is a PyTorch implementation of the AAAI-18 paper: Gated-Attention Architecture

Devendra Chaplot 234 Nov 05, 2022
BEAMetrics: Benchmark to Evaluate Automatic Metrics in Natural Language Generation

BEAMetrics: Benchmark to Evaluate Automatic Metrics in Natural Language Generation Installing The Dependencies $ conda create --name beametrics python

7 Jul 04, 2022
Official PyTorch Implementation of paper "NeLF: Neural Light-transport Field for Single Portrait View Synthesis and Relighting", EGSR 2021.

NeLF: Neural Light-transport Field for Single Portrait View Synthesis and Relighting Official PyTorch Implementation of paper "NeLF: Neural Light-tran

Ken Lin 38 Dec 26, 2022
Prompt-BERT: Prompt makes BERT Better at Sentence Embeddings

Prompt-BERT: Prompt makes BERT Better at Sentence Embeddings Results on STS Tasks Model STS12 STS13 STS14 STS15 STS16 STSb SICK-R Avg. unsup-prompt-be

196 Jan 08, 2023
Building a real-time environment using webcam frame division in OpenCV and classify cropped images using a fine-tuned vision transformers on hybryd datasets samples for facial emotion recognition.

Visual Transformer for Facial Emotion Recognition (FER) This project has the aim to build an efficient Visual Transformer for the Facial Emotion Recog

Mario Sessa 8 Dec 12, 2022
Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022)

Blockwise Sequential Model Learning Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022) For ins

2 Jun 17, 2022
A framework for analyzing computer vision models with simulated data

3DB: A framework for analyzing computer vision models with simulated data Paper Quickstart guide Blog post Installation Follow instructions on: https:

3DB 112 Jan 01, 2023
Implementation for Stankevičiūtė et al. "Conformal time-series forecasting", NeurIPS 2021.

Conformal time-series forecasting Implementation for Stankevičiūtė et al. "Conformal time-series forecasting", NeurIPS 2021. If you use our code in yo

Kamilė Stankevičiūtė 36 Nov 21, 2022
RADIal is available now! Check the download section

Latest news: RADIal is available now! Check the download section. However, because we are currently working on the data anonymization, we provide for

valeo.ai 55 Jan 03, 2023
Multi-agent reinforcement learning algorithm and environment

Multi-agent reinforcement learning algorithm and environment [en/cn] Pytorch implements multi-agent reinforcement learning algorithms including IQL, Q

万鲲鹏 7 Sep 20, 2022
This is the repo of the manuscript "Dual-branch Attention-In-Attention Transformer for speech enhancement"

DB-AIAT: A Dual-branch attention-in-attention transformer for single-channel SE

Guochen Yu 68 Dec 16, 2022
Optimize Trading Strategies Using Freqtrade

Optimize trading strategy using Freqtrade Short demo on building, testing and optimizing a trading strategy using Freqtrade. The DevBootstrap YouTube

DevBootstrap 139 Jan 01, 2023