Modeling Category-Selective Cortical Regions with Topographic Variational Autoencoders

Overview

Modeling Category-Selective Cortical Regions with Topographic Variational Autoencoders

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 evaluate the selectivity of pretrained alexnet (the non-topographic baseline), you can run:

  • tvae --name 'ffa_modeling_pretrained_alexnet'

To train and evaluate the selectivity of the TVAE for objects, faces, bodies, and places, you can run:

  • tvae --name 'ffa_modeling_fc6'

To train and evaluate the selectivity of the the TDANN for objects, faces, bodies, and places, you can run:

  • tvae --name 'ffa_modeling_tdann'

To evaluate the selectivity of the TVAE on abstract catagories (animacy vs. inanimacy):

  • tvae --name 'ffa_modeling_fc6_functional'

To evaluate the selectivity of the TDANN on abstract catagories (animacy vs. inanimacy):

  • tvae --name 'ffa_modeling_tdann_functional'

These 'functional' experiment files can also be easily modified to test selectivity to big vs. small objects by simply changing the directories of the input images.

Basics of the framework

  • All experiments can be found in tvae/experiments/, and begin with the model specification, followed by the experiment config.

Model Architecutre Options

  • 'mu_init': int, Initalization value for mu parameter
  • 's_dim': int, Dimensionality of the latent space
  • 'k': int, size of the summation kernel used to define the local topographic structure
  • '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.
Official implementation of cosformer-attention in cosFormer: Rethinking Softmax in Attention

cosFormer Official implementation of cosformer-attention in cosFormer: Rethinking Softmax in Attention Update log 2022/2/28 Add core code License This

120 Dec 15, 2022
Code for Greedy Gradient Ensemble for Visual Question Answering (ICCV 2021, Oral)

Greedy Gradient Ensemble for De-biased VQA Code release for "Greedy Gradient Ensemble for Robust Visual Question Answering" (ICCV 2021, Oral). GGE can

21 Jun 29, 2022
Scales, Chords, and Cadences: Practical Music Theory for MIR Researchers

ISMIR-musicTheoryTutorial This repository has slides and Jupyter notebooks for the ISMIR 2021 tutorial Scales, Chords, and Cadences: Practical Music T

Johanna Devaney 58 Oct 11, 2022
Multi-Scale Progressive Fusion Network for Single Image Deraining

Multi-Scale Progressive Fusion Network for Single Image Deraining (MSPFN) This is an implementation of the MSPFN model proposed in the paper (Multi-Sc

Kuijiang 128 Nov 21, 2022
Masked regression code - Masked Regression

Masked Regression MR - Python Implementation This repositery provides a python implementation of MR (Masked Regression). MR can efficiently synthesize

Arbish Akram 1 Dec 23, 2021
Log4j JNDI inj. vuln scanner

Log-4-JAM - Log 4 Just Another Mess Log4j JNDI inj. vuln scanner Requirements pip3 install requests_toolbelt Usage # make sure target list has http/ht

Ashish Kunwar 66 Nov 09, 2022
A curated list of the latest breakthroughs in AI (in 2021) by release date with a clear video explanation, link to a more in-depth article, and code.

2021: A Year Full of Amazing AI papers- A Review 📌 A curated list of the latest breakthroughs in AI by release date with a clear video explanation, l

Louis-François Bouchard 2.9k Dec 31, 2022
Memory Efficient Attention (O(sqrt(n)) for Jax and PyTorch

Memory Efficient Attention This is unofficial implementation of Self-attention Does Not Need O(n^2) Memory for Jax and PyTorch. Implementation is almo

Amin Rezaei 126 Dec 27, 2022
Certis - Certis, A High-Quality Backtesting Engine

Certis - Backtesting For y'all Certis is a powerful, lightweight, simple backtes

Yeachan-Heo 46 Oct 30, 2022
LogDeep is an open source deeplearning-based log analysis toolkit for automated anomaly detection.

LogDeep is an open source deeplearning-based log analysis toolkit for automated anomaly detection.

donglee 279 Dec 13, 2022
Code for our TKDE paper "Understanding WeChat User Preferences and “Wow” Diffusion"

wechat-wow-analysis Understanding WeChat User Preferences and “Wow” Diffusion. Fanjin Zhang, Jie Tang, Xueyi Liu, Zhenyu Hou, Yuxiao Dong, Jing Zhang,

18 Sep 16, 2022
Look Closer: Bridging Egocentric and Third-Person Views with Transformers for Robotic Manipulation

Look Closer: Bridging Egocentric and Third-Person Views with Transformers for Robotic Manipulation Official PyTorch implementation for the paper Look

Rishabh Jangir 20 Nov 24, 2022
1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for Tracking

Instead, two models for appearance modeling are included, together with the open-source BAGS model and the full set of code for inference. With this code, you can achieve around 79 Oct 08, 2022

Solution to the Weather4cast 2021 challenge

This code was used for the entry by the team "antfugue" for the Weather4cast 2021 Challenge. Below, you can find the instructions for generating predi

Jussi Leinonen 13 Jan 03, 2023
MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

Burak Bagatarhan 12 Mar 29, 2022
Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Moustafa Meshry 16 Oct 05, 2022
For auto aligning, cropping, and scaling HR and LR images for training image based neural networks

ImgAlign For auto aligning, cropping, and scaling HR and LR images for training image based neural networks Usage Make sure OpenCV is installed, 'pip

15 Dec 04, 2022
Official repository for the NeurIPS 2021 paper Get Fooled for the Right Reason: Improving Adversarial Robustness through a Teacher-guided curriculum Learning Approach

Get Fooled for the Right Reason Official repository for the NeurIPS 2021 paper Get Fooled for the Right Reason: Improving Adversarial Robustness throu

Sowrya Gali 1 Apr 25, 2022
Code for our paper at ECCV 2020: Post-Training Piecewise Linear Quantization for Deep Neural Networks

PWLQ Updates 2020/07/16 - We are working on getting permission from our institution to release our source code. We will release it once we are granted

54 Dec 15, 2022