Source code for the BMVC-2021 paper "SimReg: Regression as a Simple Yet Effective Tool for Self-supervised Knowledge Distillation".

Overview

SimReg: A Simple Regression Based Framework for Self-supervised Knowledge Distillation

Source code for the paper "SimReg: Regression as a Simple Yet Effective Tool for Self-supervised Knowledge Distillation".
Paper accepted at British Machine Vision Conference (BMVC), 2021

Overview

We present a simple framework to improve performance of regression based knowledge distillation from self-supervised teacher networks. The teacher is trained using a standard self-supervised learning (SSL) technique. The student network is then trained to directly regress the teacher features (using MSE loss on normalized features). Importantly, the student architecture contains an additional multi-layer perceptron (MLP) head atop the CNN backbone during the distillation (training) stage. A deeper architecture provides the student higher capacity to predict the teacher representations. This additional MLP head can be removed during inference without hurting downstream performance. This is especially surprising since only the output of the MLP is trained to mimic the teacher and the backbone CNN features have a high MSE loss with the teacher features. This observation allows us to obtain better student models by using deeper models during distillation without altering the inference architecture. The train and test stage architectures are shown in the figure below.

Requirements

All our experiments use the PyTorch library. We recommend installing the following package versions:

  • python=3.7.6
  • pytorch=1.4
  • torchvision=0.5.0
  • faiss-gpu=1.6.1 (required for k-NN evaluation alone)

Instructions for PyTorch installation can be found here. GPU version of the FAISS package is necessary for k-NN evaluation of trained models. It can be installed using the following command:

pip install faiss-gpu

Dataset

We use the ImageNet-1k dataset in our experiments. Download and prepare the dataset using the PyTorch ImageNet training example code. The dataset path needs to be set in the bash scripts used for training and evaluation.

Training

Distillation can be performed by running the following command:

bash run.sh

Training with ResNet-50 teacher and ResNet-18 student requires nearly 2.5 days on 4 2080ti GPUs (~26m/epoch). The defualt hyperparameters values are set to ones used in the paper. Modify the teacher and student architectures as necessary. Set the approapriate paths for the ImageNet dataset root and the experiment root. The current code will generate a directory named exp_dir containing checkpoints and logs sub-directories.

Evaluation

Set the experiment name and checkpoint epoch in the evaluation bash scripts. The trained checkpoints are assumed to be stored as exp_dir/checkpoints/ckpt_epoch_<num>.pth. Edit the weights argument to load model parameters from a custom checkpoint.

k-NN Evaluation

k-NN evaluation requires FAISS-GPU package installation. We evaluate the performance of the CNN backbone features. Run k-NN evaluation using:

bash knn_eval.sh

The image features and results for k-NN (k=1 and 20) evaluation are stored in exp_dir/features/ path.

Linear Evaluation

Here, we train a single linear layer atop the CNN backbone using an SGD optimizer for 40 epochs. The evaluation can be performed using the following code:

bash lin_eval.sh

The evaluation results are stored in exp_dir/linear/ path. Set the use_cache argument in the bash script to use cached features for evaluation. Using this argument will result in a single round of feature calculation for caching and 40 epochs of linear layer training using the cached features. While it usually results in slightly reduced performance, it can be used for faster evaluation of intermediate checkpoints.

Pretrained Models

To evaluate the pretrained models, create an experiment root directory exp_dir and place the checkpoint in exp_dir/checkpoints/. Set the exp argument in the evaluation bash scripts to perform k-NN and linear evaluation. We provide the pretrained teacher (obtained using the officially shared checkpoints for the corresponding SSL teacher) and our distilled student model weights. We use cached features of the teacher in some of our experiments for faster training.

Teacher Student 1-NN Linear
MoCo-v2 ResNet-50 MobileNet-v2 55.5 69.1
MoCo-v2 ResNet-50 ResNet-18 54.8 65.1
SimCLR ResNet-50x4 ResNet-50 (cached) 60.3 74.2
BYOL ResNet-50 ResNet-18 (cached) 56.7 66.8
SwAV ResNet-50 (cached) ResNet-18 54.0 65.8

TODO

  • Add code for transfer learning evaluation
  • Reformat evaluation codes
  • Add code to evaluate models at different stages of CNN backbone and MLP head

Citation

If you make use of the code, please cite the following work:

@inproceedings{navaneet2021simreg,
 author = {Navaneet, K L and Koohpayegani, Soroush Abbasi and Tejankar, Ajinkya and Pirsiavash, Hamed},
 booktitle = {British Machine Vision Conference (BMVC)},
 title = {SimReg: Regression as a Simple Yet Effective Tool for Self-supervised Knowledge Distillation},
 year = {2021}
}

License

This project is under the MIT license.

Sequential Model-based Algorithm Configuration

SMAC v3 Project Copyright (C) 2016-2018 AutoML Group Attention: This package is a reimplementation of the original SMAC tool (see reference below). Ho

AutoML-Freiburg-Hannover 778 Jan 05, 2023
Course about deep learning for computer vision and graphics co-developed by YSDA and Skoltech.

Deep Vision and Graphics This repo supplements course "Deep Vision and Graphics" taught at YSDA @fall'21. The course is the successor of "Deep Learnin

Yandex School of Data Analysis 160 Jan 02, 2023
A general, feasible, and extensible framework for classification tasks.

Pytorch Classification A general, feasible and extensible framework for 2D image classification. Features Easy to configure (model, hyperparameters) T

Eugene 26 Nov 22, 2022
Code for Mining the Benefits of Two-stage and One-stage HOI Detection

Status: Archive (code is provided as-is, no updates expected) PPO-EWMA [Paper] This is code for training agents using PPO-EWMA and PPG-EWMA, introduce

OpenAI 33 Dec 15, 2022
Using PyTorch Perform intent classification using three different models to see which one is better for this task

Using PyTorch Perform intent classification using three different models to see which one is better for this task

Yoel Graumann 1 Feb 14, 2022
Pytorch implementation of Generative Models as Distributions of Functions 🌿

Generative Models as Distributions of Functions This repo contains code to reproduce all experiments in Generative Models as Distributions of Function

Emilien Dupont 117 Dec 29, 2022
Rendering Point Clouds with Compute Shaders

Compute Shader Based Point Cloud Rendering This repository contains the source code to our techreport: Rendering Point Clouds with Compute Shaders and

Markus Schütz 460 Jan 05, 2023
Lecture materials for Cornell CS5785 Applied Machine Learning (Fall 2021)

Applied Machine Learning (Cornell CS5785, Fall 2021) This repo contains executable course notes and slides for the Applied ML course at Cornell and Co

Volodymyr Kuleshov 103 Dec 31, 2022
Wider-Yolo Kütüphanesi ile Yüz Tespit Uygulamanı Yap

WIDER-YOLO : Yüz Tespit Uygulaması Yap Wider-Yolo Kütüphanesinin Kullanımı 1. Wider Face Veri Setini İndir Train Dataset Val Dataset Test Dataset Not:

Kadir Nar 6 Aug 22, 2022
Prometheus Exporter for data scraped from datenplattform.darmstadt.de

darmstadt-opendata-exporter Scrapes data from https://datenplattform.darmstadt.de and presents it in the Prometheus Exposition format. Pull requests w

Martin Weinelt 2 Apr 12, 2022
Multi-Horizon-Forecasting-for-Limit-Order-Books

Multi-Horizon-Forecasting-for-Limit-Order-Books This jupyter notebook is used to demonstrate our work, Multi-Horizon Forecasting for Limit Order Books

Zihao Zhang 116 Dec 23, 2022
On Uncertainty, Tempering, and Data Augmentation in Bayesian Classification

Understanding Bayesian Classification This repository hosts the code to reproduce the results presented in the paper On Uncertainty, Tempering, and Da

Sanyam Kapoor 18 Nov 17, 2022
A Pytorch implementation of "Splitter: Learning Node Representations that Capture Multiple Social Contexts" (WWW 2019).

Splitter ⠀⠀ A PyTorch implementation of Splitter: Learning Node Representations that Capture Multiple Social Contexts (WWW 2019). Abstract Recent inte

Benedek Rozemberczki 201 Nov 09, 2022
Segmentation models with pretrained backbones. PyTorch.

Python library with Neural Networks for Image Segmentation based on PyTorch. The main features of this library are: High level API (just two lines to

Pavel Yakubovskiy 6.6k Jan 06, 2023
GLODISMO: Gradient-Based Learning of Discrete Structured Measurement Operators for Signal Recovery

GLODISMO: Gradient-Based Learning of Discrete Structured Measurement Operators for Signal Recovery This is the code to the paper: Gradient-Based Learn

3 Feb 15, 2022
[ICLR 2021] Heteroskedastic and Imbalanced Deep Learning with Adaptive Regularization

Heteroskedastic and Imbalanced Deep Learning with Adaptive Regularization Kaidi Cao, Yining Chen, Junwei Lu, Nikos Arechiga, Adrien Gaidon, Tengyu Ma

Kaidi Cao 29 Oct 20, 2022
Author Disambiguation using Knowledge Graph Embeddings with Literals

Author Name Disambiguation with Knowledge Graph Embeddings using Literals This is the repository for the master thesis project on Knowledge Graph Embe

12 Oct 19, 2022
Histology images query (unsupervised)

110-1-NTU-DBME5028-Histology-images-query Final Project: Histology images query (unsupervised) Kaggle: https://www.kaggle.com/c/histology-images-query

1 Jan 05, 2022
An introduction to satellite image analysis using Python + OpenCV and JavaScript + Google Earth Engine

A Gentle Introduction to Satellite Image Processing Welcome to this introductory course on Satellite Image Analysis! Satellite imagery has become a pr

Edward Oughton 32 Jan 03, 2023