Official PyTorch implementation of Learning Intra-Batch Connections for Deep Metric Learning (ICML 2021) published at International Conference on Machine Learning

Overview

About

This repository the official PyTorch implementation of Learning Intra-Batch Connections for Deep Metric Learning. The config files contain the same parameters as used in the paper.

We use torch 1.7.1 and torchvision 0.6.0. While the training and inference should be able to be done correctly with the newer versions of the libraries, be aware that at times the network trained and tested using versions might diverge or reach lower results. We provide a evironment.yaml file to create a corresponding conda environment.

We also support mixed-precision training via Nvidia Apex and describe how to use it in usage.

As in the paper we support training on 4 datasets: CUB-200-2011, CARS 196, Stanford Online Products and In-Shop datasets.

The majority of experiments are done using ResNet50. We provide support for the entire family of ResNet and DenseNet as well as BN-Inception.

Set up

  1. Clone and enter this repository:

     git clone https://github.com/dvl-tum/intra_batch.git
    
     cd intra_batch
    
  2. Create an Anaconda environment for this project: To set up a conda environment containing all used packages, please fist install anaconda and then run

    1.   conda env create -f environment.yml
      
    2.  conda activate intra_batch_dml
      
    3.  pip install torch-scatter==2.0.5 -f https://pytorch-geometric.com/whl/torch-1.5.0+cu102.html
      
    4. If you want to use Apex, please follow the installation instructions on https://github.com/NVIDIA/apex
  3. Download datasets: Make a data directory by typing

     mkdir data
    

    Then download the datasets using the following links and unzip them in the data directory:

    We also provide a parser for Stanford Online Products and In-Shop datastes. You can find dem in the dataset/ directory. The datasets are expected to be structured as dataset/images/class/, where dataset is either CUB-200-2011, CARS, Stanford_Online_Products or In_shop and class are the classes of a given dataset. Example for CUB-200-2011:

         CUB_200_2011/images/001
         CUB_200_2011/images/002
         CUB_200_2011/images/003
         ...
         CUB_200_2011/images/200
    
  4. Download our models: Please download the pretrained weights by using

     wget https://vision.in.tum.de/webshare/u/seidensc/intra_batch_connections/best_weights.zip
    

    and unzip them.

Usage

You can find config files for training and testing on each of the datasets in the config/ directory. For training and testing, you will have to input which one you want to use (see below). You will only be able to adapt some basic variables over the command line. For all others please refer to the yaml file directly.

Testing

To test to networks choose one of the config files for testing, e.g., config_cars_test.yaml to evaluate the performance on Cars196 and run:

python train.py --config_path config_cars_test.yaml --dataset_path <path to dataset> 

The default dataset path is data.

Training

To train a network choose one of the config files for training like config_cars_train.yaml to train on Cars196 and run:

python train.py --config_path config_cars_train.yaml --dataset_path <path to dataset> --net_type <net type you want to use>

Again, if you don't specify anything, the default setting will be used. For the net type you have the following options:

resnet18, resnet32, resnet50, resnet101, resnet152, densenet121, densenet161, densenet16, densenet201, bn_inception

If you want to use apex add --is_apex 1 to the command.

Results

[email protected] [email protected] [email protected] [email protected] NMI
CUB-200-2011 70.3 80.3 87.6 92.7 73.2
Cars196 88.1 93.3 96.2 98.2 74.8
[email protected] [email protected] [email protected] NMI
Stanford Online Products 81.4 91.3 95.9 92.6
[email protected] [email protected] [email protected] [email protected]
In-Shop 92.8 98.5 99.1 99.2

Citation

If you find this code useful, please consider citing the following paper:

@inproceedings{DBLP:conf/icml/SeidenschwarzEL21,
  author    = {Jenny Seidenschwarz and
               Ismail Elezi and
               Laura Leal{-}Taix{\'{e}}},
  title     = {Learning Intra-Batch Connections for Deep Metric Learning},
  booktitle = {Proceedings of the 38th International Conference on Machine Learning,
               {ICML} 2021, 18-24 July 2021, Virtual Event},
  series    = {Proceedings of Machine Learning Research},
  volume    = {139},
  pages     = {9410--9421},
  publisher = {{PMLR}},
  year      = {2021},
}
Owner
Dynamic Vision and Learning Group
Dynamic Vision and Learning Group
Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection

Frequency Spectrum Augmentation Consistency for Domain Adaptive Object Detection Main requirements torch = 1.0 torchvision = 0.2.0 Python 3 Environm

15 Apr 04, 2022
Reinforcement learning models in ViZDoom environment

DoomNet DoomNet is a ViZDoom agent trained by reinforcement learning. The agent is a neural network that outputs a probability of actions given only p

Andrey Kolishchak 126 Dec 09, 2022
High-performance moving least squares material point method (MLS-MPM) solver.

High-Performance MLS-MPM Solver with Cutting and Coupling (CPIC) (MIT License) A Moving Least Squares Material Point Method with Displacement Disconti

Yuanming Hu 2.2k Dec 31, 2022
A Unified Framework and Analysis for Structured Knowledge Grounding

UnifiedSKG 📚 : Unifying and Multi-Tasking Structured Knowledge Grounding with Text-to-Text Language Models Code for paper UnifiedSKG: Unifying and Mu

HKU NLP Group 370 Dec 21, 2022
An Implicit Function Theorem (IFT) optimizer for bi-level optimizations

iftopt An Implicit Function Theorem (IFT) optimizer for bi-level optimizations. Requirements Python 3.7+ PyTorch 1.x Installation $ pip install git+ht

The Money Shredder Lab 2 Dec 02, 2021
Hack Camera, Microphone, Location, Clipboard With Just a Link. Also, Get Many Details About Victim's Device. And So On...

An Automated Tool to Hack Victim's Camera, Microphone, Location, Clipboard. Has 2 Extra Features. Version 1.1 Update Fixed Some Major Bugs Data Saving

ToxicNoob 36 Jan 07, 2023
Dungeons and Dragons randomized content generator

Component based Dungeons and Dragons generator Supports Entity/Monster Generation NPC Generation Weapon Generation Encounter Generation Environment Ge

Zac 3 Dec 04, 2021
Utility tools for the "Divide and Remaster" dataset, introduced as part of the Cocktail Fork problem paper

Divide and Remaster Utility Tools Utility tools for the "Divide and Remaster" dataset, introduced as part of the Cocktail Fork problem paper The DnR d

Darius Petermann 46 Dec 11, 2022
CLIPImageClassifier wraps clip image model from transformers

CLIPImageClassifier CLIPImageClassifier wraps clip image model from transformers. CLIPImageClassifier is initialized with the argument classes, these

Jina AI 6 Sep 12, 2022
PyTorch Implement for Path Attention Graph Network

SPAGAN in PyTorch This is a PyTorch implementation of the paper "SPAGAN: Shortest Path Graph Attention Network" Prerequisites We prefer to create a ne

Yang Yiding 38 Dec 28, 2022
A deep learning based semantic search platform that computes similarity scores between provided query and documents

semanticsearch This is a deep learning based semantic search platform that computes similarity scores between provided query and documents. Documents

1 Nov 30, 2021
PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

943 Jan 07, 2023
Official Pytorch implementation of the paper "Action-Conditioned 3D Human Motion Synthesis with Transformer VAE", ICCV 2021

ACTOR Official Pytorch implementation of the paper "Action-Conditioned 3D Human Motion Synthesis with Transformer VAE", ICCV 2021. Please visit our we

Mathis Petrovich 248 Dec 23, 2022
This repository contains the code for TACL2021 paper: SummaC: Re-Visiting NLI-based Models for Inconsistency Detection in Summarization

SummaC: Summary Consistency Detection This repository contains the code for TACL2021 paper: SummaC: Re-Visiting NLI-based Models for Inconsistency Det

Philippe Laban 24 Jan 03, 2023
PyTorch Implementation of NCSOFT's FastPitchFormant: Source-filter based Decomposed Modeling for Speech Synthesis

FastPitchFormant - PyTorch Implementation PyTorch Implementation of FastPitchFormant: Source-filter based Decomposed Modeling for Speech Synthesis. Qu

Keon Lee 63 Jan 02, 2023
Deploy tensorflow graphs for fast evaluation and export to tensorflow-less environments running numpy.

Deploy tensorflow graphs for fast evaluation and export to tensorflow-less environments running numpy. Now with tensorflow 1.0 support. Evaluation usa

Marcel R. 349 Aug 06, 2022
Code to use Augmented Shapiro Wilks Stopping, as well as code for the paper "Statistically Signifigant Stopping of Neural Network Training"

This codebase is being actively maintained, please create and issue if you have issues using it Basics All data files are included under losses and ea

J K Terry 32 Nov 09, 2021
Generative Handwriting using LSTM Mixture Density Network with TensorFlow

Generative Handwriting Demo using TensorFlow An attempt to implement the random handwriting generation portion of Alex Graves' paper. See my blog post

hardmaru 686 Nov 24, 2022
SPRING is a seq2seq model for Text-to-AMR and AMR-to-Text (AAAI2021).

SPRING This is the repo for SPRING (Symmetric ParsIng aNd Generation), a novel approach to semantic parsing and generation, presented at AAAI 2021. Wi

Sapienza NLP group 98 Dec 21, 2022
[ICCV '21] In this repository you find the code to our paper Keypoint Communities

Keypoint Communities In this repository you will find the code to our ICCV '21 paper: Keypoint Communities Duncan Zauss, Sven Kreiss, Alexandre Alahi,

Duncan Zauss 262 Dec 13, 2022