The 1st Place Solution of the Facebook AI Image Similarity Challenge (ISC21) : Descriptor Track.

Overview

ISC21-Descriptor-Track-1st

The 1st Place Solution of the Facebook AI Image Similarity Challenge (ISC21) : Descriptor Track.

You can check our solution tech report from: Contrastive Learning with Large Memory Bank and Negative Embedding Subtraction for Accurate Copy Detection

setup

OS

Ubuntu 18.04

CUDA Version

11.1

environment

Run this for python env

conda env create -f environment.yml

data download

mkdir -p input/{query,reference,train}_images
aws s3 cp s3://drivendata-competition-fb-isc-data/all/query_images/ input/query_images/ --recursive --no-sign-request
aws s3 cp s3://drivendata-competition-fb-isc-data/all/reference_images/ input/reference_images/ --recursive --no-sign-request
aws s3 cp s3://drivendata-competition-fb-isc-data/all/train_images/ input/train_images/ --recursive --no-sign-request
aws s3 cp s3://drivendata-competition-fb-isc-data/all/query_images_phase2/ input/query_images_phase2/ --recursive --no-sign-request

train

Run below lines step by step.

cd exp

CUDA_VISIBLE_DEVICES=0,1,2,3 python v83.py \
  -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 9 \
  --epochs 5 --lr 0.1 --wd 1e-6 --batch-size 128 --ncrops 2 \
  --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.0 \
  --input-size 256 --sample-size 1000000 --memory-size 20000 \
  ../input/training_images/
CUDA_VISIBLE_DEVICES=0,1,2,3 python v83.py \
  -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 90 \
  --epochs 10 --lr 0.1 --wd 1e-6 --batch-size 128 --ncrops 2 \
  --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.0 \
  --input-size 256 --sample-size 1000000 --memory-size 20000 \
  --resume ./v83/train/checkpoint_0004.pth.tar \
  ../input/training_images/

CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 python v86.py \
  -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 99 \
  --epochs 7 --lr 0.1 --wd 1e-6 --batch-size 128 --ncrops 2 \
  --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.0 \
  --input-size 384 --sample-size 1000000 --memory-size 20000 --weight ./v83/train/checkpoint_0005.pth.tar \
  ../input/training_images/

python v98.py \
  -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 999 \
  --epochs 3 --lr 0.1 --wd 1e-6 --batch-size 64 --ncrops 2 \
  --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.0 --weight ./v86/train/checkpoint_0005.pth.tar \
  --input-size 512 --sample-size 1000000 --memory-size 20000 \
  ../input/training_images/

python v107.py \
  -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 99999 \
  --epochs 10 --lr 0.5 --wd 1e-6 --batch-size 16 --ncrops 2 \
  --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.1 --weight ./v98/train/checkpoint_0001.pth.tar \
  --input-size 512 --sample-size 1000000 --memory-size 1000 \
  ../input/training_images/

The final model weight can be downloaded from here: https://drive.google.com/file/d/1ySea-NJp_J0aWvma_WmVbc3Hnwf5LHUf/view?usp=sharing You can execute inference code without run training with this model weight. To locate the model weight to suitable location, run following commands after downloaded the model weight.

mkdir -p exp/v107/train
mv checkpoint_009.pth.tar exp/v107/train/

inference

Note that faiss doesn't work with A100, so I used 4x GTX 1080 Ti for post-process.

cd exp

python v107.py -a tf_efficientnetv2_m_in21ft1k --batch-size 128 --mode extract --gem-eval-p 1.0 --weight ./v107/train/checkpoint_0009.pth.tar --input-size 512 --target-set qrt ../input/

# this script generates final prediction result files
python ../scripts/postprocess.py

Submission files are outputted here:

  • exp/v107/extract/v107_iso.h5 # descriptor track
  • exp/v107/extract/v107_iso.csv # matching track

descriptor track local evaluation score:

{
  "average_precision": 0.9479039085717805,
  "recall_p90": 0.9192546583850931
}
Comments
  • Bugs?

    Bugs?

    Congratulations! We really appreciate the work. When I run the

    python v107.py \
      -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 99999 \
      --epochs 10 --lr 0.5 --wd 1e-6 --batch-size 16 --ncrops 2 \
      --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.1 --weight ./v98/train/checkpoint_0001.pth.tar \
      --input-size 512 --sample-size 1000000 --memory-size 1000 \
      ../input/training_images/
    

    I come across

    Traceback (most recent call last):                                              
      File "v107.py", line 774, in <module>
        train(args)
      File "v107.py", line 425, in train
        mp.spawn(main_worker, nprocs=ngpus_per_node, args=(ngpus_per_node, args))
      File "/home/wangwenhao/anaconda3/envs/ISC/lib/python3.7/site-packages/torch/multiprocessing/spawn.py", line 230, in spawn
        return start_processes(fn, args, nprocs, join, daemon, start_method='spawn')
      File "/home/wangwenhao/anaconda3/envs/ISC/lib/python3.7/site-packages/torch/multiprocessing/spawn.py", line 188, in start_processes
        while not context.join():
      File "/home/wangwenhao/anaconda3/envs/ISC/lib/python3.7/site-packages/torch/multiprocessing/spawn.py", line 150, in join
        raise ProcessRaisedException(msg, error_index, failed_process.pid)
    torch.multiprocessing.spawn.ProcessRaisedException: 
    
    -- Process 5 terminated with the following error:
    Traceback (most recent call last):
      File "/home/wangwenhao/anaconda3/envs/ISC/lib/python3.7/site-packages/torch/multiprocessing/spawn.py", line 59, in _wrap
        fn(i, *args)
      File "/home/wangwenhao/fbisc-descriptor-1st/exp/v107.py", line 573, in main_worker
        train_one_epoch(train_loader, model, loss_fn, optimizer, scaler, epoch, args)
      File "/home/wangwenhao/fbisc-descriptor-1st/exp/v107.py", line 595, in train_one_epoch
        labels = torch.cat([torch.tile(i, dims=(args.ncrops,)), torch.tensor(j)])
    ValueError: only one element tensors can be converted to Python scalars
    

    Do you know how to fix it? Thanks.

    opened by WangWenhao0716 14
  • data augment is wrong

    data augment is wrong

    train_dataset = ISCDataset(
        train_paths,
        NCropsTransform(
            transforms.Compose(aug_moderate),
            transforms.Compose(aug_hard),
            args.ncrops,
        ),
    )
    

    error log: apply_transform() takes from 2 to 3 positional arguments but 5 were given

    opened by AItechnology 5
  • Cannot load state dict for model

    Cannot load state dict for model

    Thanks for your amazing work. But I encounter a problem, when I use checkpoint_0009.pth.tar checkpoint,

    • When I don't remove model = nn.DataParallel(model), I encouter error:
            size mismatch for module.backbone.bn1.weight: copying a param with shape torch.Size([24]) from checkpoint, the shape in current model is 
    torch.Size([64]).
            size mismatch for module.backbone.bn1.bias: copying a param with shape torch.Size([24]) from checkpoint, the shape in current model is torch.Size([64]).
            size mismatch for module.backbone.bn1.running_mean: copying a param with shape torch.Size([24]) from checkpoint, the shape in current model is torch.Size([64]).
            size mismatch for module.backbone.bn1.running_var: copying a param with shape torch.Size([24]) from checkpoint, the shape in current model is torch.Size([64]).
            size mismatch for module.fc.weight: copying a param with shape torch.Size([256, 512]) from checkpoint, the shape in current model is torch.Size([256, 2048])
    
    • Then I remove line model = nn.DataParallel(model), the model seems to load checkpoint successfully, but I feed same input to model, the output feature vector if different for different time I run. I guess the model is not loaded successfully when load state dict, so model will use the weight initialized randomly.
    • Then I change strict=True in model.load_state_dict(state_dict=state_dict, strict=False), I encounter error RuntimeError: Error(s) in loading state_dict for ISCNet: Missing key(s) in state_dict:, I found that the key of state_dict in model and checkpoint totally diffrent even name pattern. Key of model state dict and checkpoint state dict I attached below. checkpoint.txt model.txt How can I solve the this problem?
    opened by NguyenThanhAI 2
  • Unable to reproduce Stage 1 results

    Unable to reproduce Stage 1 results

    Hi, I attempted to reproduce the Stage 1 training using your provided code, but was unable to obtain the reported muAP of 0.5831. I instead obtained this result at epoch 9 (indexed from 0):

    Average Precision: 0.49554
    Recall at P90    : 0.32701
    Threshold at P90 : -0.375733
    Recall at rank 1:  0.62448
    Recall at rank 10: 0.65961
    

    I also saw that you continued training from epoch 5, but these are the results I obtained at epoch 5:

    Average Precision: 0.47977
    Recall at P90    : 0.32501
    Threshold at P90 : -0.376619
    Recall at rank 1:  0.61409
    Recall at rank 10: 0.64903
    

    Both sets of results were obtained on the private ground truth set of Phase 1, using image size 512. Is it possible to provide some insight as to what is happening here? Thank you.

    opened by avrilwongaw 1
  • about the train output feature

    about the train output feature

    sorry to bother you again. I want train the model with a small backbone such as resnet50. Because I only have three GPU and I run with command:

    CUDA_VISIBLE_DEVICES=0,1,2 python v83.py  --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 9 \
      --epochs 5 --lr 0.1 --wd 1e-6 --batch-size 96 --ncrops 2 \
      --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.0 \
      --input-size 256 --sample-size 1000000 --memory-size 20000 \
    /root/zhx3/data/fb_train_data/train
    

    I find a strange problem. I test checkpoint_000{0..4}.pth.tar model. only the checkpoint_0002.pth.tar ouput different when the input is different. I mean other model will output same embedding no matter what different you input. thanks in advance. the loss log output such as:

    epoch 5:   0%|          | 0/15873 [00:00<?, ?it/s]=> loading checkpoint './v83/train/checkpoint_0004.pth.tar'
    => loaded checkpoint './v83/train/checkpoint_0004.pth.tar' (epoch 5)
    epoch 6:   0%|          | 0/15873 [00:00<?, ?it/s]epoch=5, loss=1.0154363534772417
    epoch 7:   0%|          | 0/15873 [00:00<?, ?it/s]epoch=6, loss=1.012835873522891
    
    opened by Usernamezhx 1
  • about the memory size

    about the memory size

    python v107.py \
      -a tf_efficientnetv2_m_in21ft1k --dist-url 'tcp://localhost:10001' --multiprocessing-distributed --world-size 1 --rank 0 --seed 99999 \
      --epochs 10 --lr 0.5 --wd 1e-6 \
      --gem-p 1.0 --pos-margin 0.0 --neg-margin 1.1 --weight ./v98/train/checkpoint_0001.pth.tar \
      --input-size 512 --sample-size 1000000 --memory-size 1000 \
      ../input/training_images/
    

    why not set the --memory-size large such as 20000 ? thanks in advance

    opened by Usernamezhx 1
  • will v107 overfit for phase2?

    will v107 overfit for phase2?

    Congratulations and thanks for your sharing.

    i find v107 only use the about 5k query-ref pair (i.e. gt in phase1) as positive. How to know whether it overfits for phase2 ?

    opened by liangzimei 1
  • access denied for dataset on aws

    access denied for dataset on aws

    Thanks for you work! I have problems downloading the dataset from the given aws buckets

    $ aws s3 cp s3://drivendata-competition-fb-isc-data/all/query_images/ input/query_images/ --recursive --no-sign-request
    fatal error: An error occurred (AccessDenied) when calling the ListObjectsV2 operation: Access Denied
    

    Do I need special permissions to download the data?

    opened by sebastianlutter 0
  • Final optimizer state for the model

    Final optimizer state for the model

    Hello @lyakaap

    Thanks a lot for this work. I am trying to take this and finetune over a certain task. Is it possible you can provide the state of final optimizer after 4th stage of training. We want to try an experiment where it will be very useful.

    Thank you.

    opened by shubhamjain0594 11
Owner
lyakaap
Computer Vision, Deep Learning
lyakaap
TensorFlow implementation of Elastic Weight Consolidation

Elastic weight consolidation Introduction A TensorFlow implementation of elastic weight consolidation as presented in Overcoming catastrophic forgetti

James Stokes 67 Oct 11, 2022
[ICLR 2021] Rank the Episodes: A Simple Approach for Exploration in Procedurally-Generated Environments.

[ICLR 2021] RAPID: A Simple Approach for Exploration in Reinforcement Learning This is the Tensorflow implementation of ICLR 2021 paper Rank the Episo

Daochen Zha 48 Nov 21, 2022
Data and analysis code for an MS on SK VOC genomes phenotyping/neutralisation assays

Description Summary of phylogenomic methods and analyses used in "Immunogenicity of convalescent and vaccinated sera against clinical isolates of ance

Finlay Maguire 1 Jan 06, 2022
Header-only library for using Keras models in C++.

frugally-deep Use Keras models in C++ with ease Table of contents Introduction Usage Performance Requirements and Installation FAQ Introduction Would

Tobias Hermann 927 Jan 05, 2023
[ICLR'19] Trellis Networks for Sequence Modeling

TrellisNet for Sequence Modeling This repository contains the experiments done in paper Trellis Networks for Sequence Modeling by Shaojie Bai, J. Zico

CMU Locus Lab 460 Oct 13, 2022
AdelaiDepth is an open source toolbox for monocular depth prediction.

AdelaiDepth is an open source toolbox for monocular depth prediction.

Adelaide Intelligent Machines (AIM) Group 743 Jan 01, 2023
A PyTorch implementation of Radio Transformer Networks from the paper "An Introduction to Deep Learning for the Physical Layer".

An Introduction to Deep Learning for the Physical Layer An usable PyTorch implementation of the noisy autoencoder infrastructure in the paper "An Intr

Gram.AI 120 Nov 21, 2022
Data & Code for ACCENTOR Adding Chit-Chat to Enhance Task-Oriented Dialogues

ACCENTOR: Adding Chit-Chat to Enhance Task-Oriented Dialogues Overview ACCENTOR consists of the human-annotated chit-chat additions to the 23.8K dialo

Facebook Research 69 Dec 29, 2022
Data augmentation for NLP, accepted at EMNLP 2021 Findings

AEDA: An Easier Data Augmentation Technique for Text Classification This is the code for the EMNLP 2021 paper AEDA: An Easier Data Augmentation Techni

Akbar Karimi 81 Dec 09, 2022
Watch faces morph into each other with StyleGAN 2, StyleGAN, and DCGAN!

FaceMorpher FaceMorpher is an innovative project to get a unique face morph (or interpolation for geeks) on a website. Yes, this means you can see fac

Anish 9 Jun 24, 2022
Source code for ZePHyR: Zero-shot Pose Hypothesis Rating @ ICRA 2021

ZePHyR: Zero-shot Pose Hypothesis Rating ZePHyR is a zero-shot 6D object pose estimation pipeline. The core is a learned scoring function that compare

R-Pad - Robots Perceiving and Doing 18 Aug 22, 2022
Cross-platform-profile-pic-changer - Script to change profile pictures across multiple platforms

cross-platform-profile-pic-changer script to change profile pictures across mult

4 Jan 17, 2022
A developer interface for creating Chat AIs for the Chai app.

ChaiPy A developer interface for creating Chat AIs for the Chai app. Usage Local development A quick start guide is available here, with a minimal exa

Chai 28 Dec 28, 2022
CVPR 2021

Smoothing the Disentangled Latent Style Space for Unsupervised Image-to-image Translation [Paper] | [Poster] | [Codes] Yahui Liu1,3, Enver Sangineto1,

Yahui Liu 37 Sep 12, 2022
Architecture Patterns with Python (TDD, DDD, EDM)

architecture-traning Architecture Patterns with Python (TDD, DDD, EDM) Chapter 5. 높은 기어비와 낮은 기어비의 TDD 5.2 도메인 계층 테스트를 서비스 계층으로 옮겨야 하는가? 도메인 계층 테스트 def

minsung sim 2 Mar 04, 2022
Repository containing the PhD Thesis "Formal Verification of Deep Reinforcement Learning Agents"

Getting Started This repository contains the code used for the following publications: Probabilistic Guarantees for Safe Deep Reinforcement Learning (

Edoardo Bacci 5 Aug 31, 2022
NeuralDiff: Segmenting 3D objects that move in egocentric videos

NeuralDiff: Segmenting 3D objects that move in egocentric videos Project Page | Paper + Supplementary | Video About This repository contains the offic

Vadim Tschernezki 14 Dec 05, 2022
A High-Level Fusion Scheme for Circular Quantities published at the 20th International Conference on Advanced Robotics

Monte Carlo Simulation to the Paper A High-Level Fusion Scheme for Circular Quantities published at the 20th International Conference on Advanced Robotics

Sören Kohnert 0 Dec 06, 2021
AugMix: A Simple Data Processing Method to Improve Robustness and Uncertainty

AugMix Introduction We propose AugMix, a data processing technique that mixes augmented images and enforces consistent embeddings of the augmented ima

Google Research 876 Dec 17, 2022
This is the source code for: Context-aware Entity Typing in Knowledge Graphs.

This is the source code for: Context-aware Entity Typing in Knowledge Graphs.

9 Sep 01, 2022