Official implementation of the paper "Topographic VAEs learn Equivariant Capsules"

Overview

Topographic Variational Autoencoder

Paper: https://arxiv.org/abs/2109.01394

Getting Started

Install requirements with Anaconda:

conda env create -f environment.yml

Activate the conda environment

conda activate tvae

Install the tvae package

Install the tvae package inside of your conda environment. This allows you to run experiments with the tvae command. At the root of the project directory run (using your environment's pip): pip3 install -e .

If you need help finding your environment's pip, try which python, which should point you to a directory such as .../anaconda3/envs/tvae/bin/ where it will be located.

(Optional) Setup Weights & Biases:

This repository uses Weight & Biases for experiment tracking. By deafult this is set to off. However, if you would like to use this (highly recommended!) functionality, all you have to do is set 'wandb_on': True in the experiment config, and set your account's project and entity names in the tvae/utils/logging.py file.

For more information on making a Weight & Biases account see (creating a weights and biases account) and the associated quickstart guide.

Running an experiment

To rerun the experiment from Figure 3, you can run:

  • tvae --name 'tvae_2d_mnist'

To rerun the experiments from Figure 4, you can run:

  • tvae --name 'tvae_Lpartial_mnist'
  • tvae --name 'tvae_Lpartial_dsprites'

To rerun the experiments from Tables 1, you can run:

  • tvae --name 'tvae_Lhalf_mnist'
  • tvae --name 'tvae_Lshort_mnist'
  • tvae --name 'bubbles_mnist'
  • tvae --name 'tvae_L0_mnist'
  • tvae --name 'nontvae_mnist'

To rerun the experiments from Tables 2, you can run:

  • tvae --name 'tvae_Lhalf_dsprites'
  • tvae --name 'tvae_Lpartial_dsprites'
  • tvae --name 'tvae_Lshort_dsprites'
  • tvae --name 'bubbles_dsprites'
  • tvae --name 'tvae_L0_dsprites'
  • tvae --name 'nontvae_dsprites'

To rerun the generalization experiment described in Section B.4 (resulting in Figures 1 and 6), you can run:

  • tvae --name 'tvae_Lpartial_mnist_generalization'

To rerun the experiments from Figures 22 and 23 (training on complex combined transformations), you can run:

  • tvae --name 'tvae_Lpartial_perspective_mnist'
  • tvae --name 'tvae_Lpartial_rotcolor_mnist'

Basics of the framework

  • All models are built using the TVAE module (see tvae/containers/tvae.py) which requires a z-encoder, a u-encoder, a decoder, and a 'grouper'. The grouper module defines the topographic structure of the latent space through a model (equivalent to W in the paper), and a padder which defines the boundary conditions.
  • All experiments can be found in tvae/experiments/, and begin with the model specification, followed by the experiment config where important values such as L (group_kernel) and K (n_off_diag) can be set.

Model Architecutre Options

  • 'n_caps': int, Number of independnt capsules
  • 'cap_dim': int, Size of each capsule
  • 'n_transforms': int, Length of the total transformation sequence (denoted S in the paper)
  • 'mu_init': int, Initalization value for mu parameter
  • 'n_off_diag': int, determines the spatial extent of the grouping within a single timestep (denoted K in the paper), n_off_diag=1 gives K=3, while n_off_diag=0 gives K=1.
  • 'group_kernel': tuple of int, defines the size of the kernel used by the grouper, exact definition and relationship to W varies for each experiment.

Training Options

  • 'wandb_on': bool, if True, use weights & biases logging
  • 'lr': float, learning rate
  • 'momentum': float, standard momentum used in SGD
  • 'max_epochs': int, total training epochs
  • 'eval_epochs': int, epochs between evaluation on the test (for MNIST)
  • 'batch_size': int, number of samples per batch
  • 'n_is_samples': int, number of importance samples when computing the log-likelihood on MNIST.
  • 'max_transform_len': int, (for dSprites) controls the subset of the dataset

Acknowledgements

The Robert Bosch GmbH is acknowledged for financial support.

Owner
T. Andy Keller
PhD Student at UvA
T. Andy Keller
PyTorch version of Stable Baselines, reliable implementations of reinforcement learning algorithms.

PyTorch version of Stable Baselines, reliable implementations of reinforcement learning algorithms.

DLR-RM 4.7k Jan 01, 2023
Self-Supervised Image Denoising via Iterative Data Refinement

Self-Supervised Image Denoising via Iterative Data Refinement Yi Zhang1, Dasong Li1, Ka Lung Law2, Xiaogang Wang1, Hongwei Qin2, Hongsheng Li1 1CUHK-S

Zhang Yi 72 Jan 01, 2023
Capsule endoscopy detection DACON challenge

capsule_endoscopy_detection (DACON Challenge) Overview Yolov5, Yolor, mmdetection기반의 모델을 사용 (총 11개 모델 앙상블) 모든 모델은 학습 시 Pretrained Weight을 yolov5, yolo

MAILAB 11 Nov 25, 2022
kullanışlı ve işinizi kolaylaştıracak bir araç

Hey merhaba! işte çok sorulan sorularının cevabı ve sorunlarının çözümü; Soru= İçinde var denilen birçok şeyi göremiyorum bunun sebebi nedir? Cevap= B

Sexettin 16 Dec 17, 2022
A Multi-modal Model Chinese Spell Checker Released on ACL2021.

ReaLiSe ReaLiSe is a multi-modal Chinese spell checking model. This the office code for the paper Read, Listen, and See: Leveraging Multimodal Informa

DaDa 106 Dec 29, 2022
Yolov5+SlowFast: Realtime Action Detection Based on PytorchVideo

Yolov5+SlowFast: Realtime Action Detection A realtime action detection frame work based on PytorchVideo. Here are some details about our modification:

WuFan 181 Dec 30, 2022
Temporal Dynamic Convolutional Neural Network for Text-Independent Speaker Verification and Phonemetic Analysis

TDY-CNN for Text-Independent Speaker Verification Official implementation of Temporal Dynamic Convolutional Neural Network for Text-Independent Speake

Seong-Hu Kim 16 Oct 17, 2022
Code to reproduce the results in "Visually Grounded Reasoning across Languages and Cultures", EMNLP 2021.

marvl-code [WIP] This is the implementation of the approaches described in the paper: Fangyu Liu*, Emanuele Bugliarello*, Edoardo M. Ponti, Siva Reddy

25 Nov 15, 2022
DGN pymarl - Implementation of DGN on Pymarl, which could be trained by VDN or QMIX

This is the implementation of DGN on Pymarl, which could be trained by VDN or QM

4 Nov 23, 2022
시각 장애인을 위한 스마트 지팡이에 활용될 딥러닝 모델 (DL Model Repo)

SmartCane-DL-Model Smart Cane using semantic segmentation 참고한 Github repositoy 🔗 https://github.com/JunHyeok96/Road-Segmentation.git 데이터셋 🔗 https://

반드시 졸업한다 (Team Just Graduate) 4 Dec 03, 2021
Run Keras models in the browser, with GPU support using WebGL

**This project is no longer active. Please check out TensorFlow.js.** The Keras.js demos still work but is no longer updated. Run Keras models in the

Leon Chen 4.9k Dec 29, 2022
SSL_SLAM2: Lightweight 3-D Localization and Mapping for Solid-State LiDAR (mapping and localization separated) ICRA 2021

SSL_SLAM2 Lightweight 3-D Localization and Mapping for Solid-State LiDAR (Intel Realsense L515 as an example) This repo is an extension work of SSL_SL

Wang Han 王晗 1.3k Jan 08, 2023
Implementation of the paper titled "Using Sampling to Estimate and Improve Performance of Automated Scoring Systems with Guarantees"

Using Sampling to Estimate and Improve Performance of Automated Scoring Systems with Guarantees Implementation of the paper titled "Using Sampling to

MIDAS, IIIT Delhi 2 Aug 29, 2022
OpenCV, MediaPipe Pose Estimation, Affine Transform for Icon Overlay

Yoga Pose Identification and Icon Matching Project Goal Detect yoga poses performed by a user and overlay a corresponding icon image. Running the main

Anna Garverick 1 Dec 03, 2021
using yolox+deepsort for object-tracker

YOLOX_deepsort_tracker yolox+deepsort实现目标跟踪 最新的yolox尝尝鲜~~(yolox正处在频繁更新阶段,因此直接链接yolox仓库作为子模块) Install Clone the repository recursively: git clone --rec

245 Dec 26, 2022
This repository contains the code for the CVPR 2020 paper "Differentiable Volumetric Rendering: Learning Implicit 3D Representations without 3D Supervision"

Differentiable Volumetric Rendering Paper | Supplementary | Spotlight Video | Blog Entry | Presentation | Interactive Slides | Project Page This repos

697 Jan 06, 2023
Data-driven reduced order modeling for nonlinear dynamical systems

SSMLearn Data-driven Reduced Order Models for Nonlinear Dynamical Systems This package perform data-driven identification of reduced order model based

Haller Group, Nonlinear Dynamics 27 Dec 13, 2022
Reducing Information Bottleneck for Weakly Supervised Semantic Segmentation (NeurIPS 2021)

Reducing Information Bottleneck for Weakly Supervised Semantic Segmentation (NeurIPS 2021) The implementation of Reducing Infromation Bottleneck for W

Jungbeom Lee 81 Dec 16, 2022
Prompts - Read a textfile of prompts and import into anki via ankiconnect

prompts read a textfile of prompts and import into anki via ankiconnect Usage In

Alexander Cobleigh 2 Jul 28, 2022
A PyTorch Implementation of FaceBoxes

FaceBoxes in PyTorch By Zisian Wong, Shifeng Zhang A PyTorch implementation of FaceBoxes: A CPU Real-time Face Detector with High Accuracy. The offici

Zi Sian Wong 797 Dec 17, 2022