This code provides various models combining dilated convolutions with residual networks

Related tags

Deep Learningdrn
Overview

Overview

This code provides various models combining dilated convolutions with residual networks. Our models can achieve better performance with less parameters than ResNet on image classification and semantic segmentation.

If you find this code useful for your publications, please consider citing

@inproceedings{Yu2017,
    title     = {Dilated Residual Networks},
    author    = {Fisher Yu and Vladlen Koltun and Thomas Funkhouser},
    booktitle = {Computer Vision and Pattern Recognition (CVPR)},
    year      = {2017},
}

@inproceedings{Yu2016,
    title     = {Multi-scale context aggregation by dilated convolutions},
    author    = {Yu, Fisher and Koltun, Vladlen},
    booktitle = {International Conference on Learning Representations (ICLR)},
    year      = {2016}
}

Code Highlights

  • The pretrained model can be loaded using Pytorch model zoo api. Example here.
  • Pytorch based image classification and semantic image segmentation.
  • BatchNorm synchronization across multipe GPUs.
  • High-resolution class activiation maps for state-of-the-art weakly supervised object localization.
  • DRN-D-105 gets 76.3% mIoU on Cityscapes with only fine training annotation and no context module.

Image Classification

Image classification is meant to be a controlled study to understand the role of high resolution feature maps in image classification and the class activations rising from it. Based on the investigation, we are able to design more efficient networks for learning high-resolution image representation. They have practical usage in semantic image segmentation, as detailed in image segmentation section.

Models

Comparison of classification error rate on ImageNet validation set and numbers of parameters. It is evaluated on single center 224x224 crop from resized images whose shorter side is 256-pixel long.

Name Top-1 Top-5 Params
ResNet-18 30.4% 10.8% 11.7M
DRN-A-18 28.0% 9.5% 11.7M
DRN-D-22 25.8% 8.2% 16.4M
DRN-C-26 24.9% 7.6% 21.1M
ResNet-34 27.7% 8.7% 21.8M
DRN-A-34 24.8% 7.5% 21.8M
DRN-D-38 23.8% 6.9% 26.5M
DRN-C-42 22.9% 6.6% 31.2M
ResNet-50 24.0% 7.0% 25.6M
DRN-A-50 22.9% 6.6% 25.6M
DRN-D-54 21.2% 5.9% 35.8M
DRN-C-58 21.7% 6.0% 41.6M
ResNet-101 22.4% 6.2% 44.5M
DRN-D-105 20.6% 5.5% 54.8M
ResNet-152 22.2% 6.2% 60.2M

The figure below groups the parameter and error rate comparison based on netwok structures.

comparison

Training and Testing

The code is written in Python using Pytorch. I started with code in torchvision. Please check their license as well if copyright is your concern. Software dependency:

  • Python 3
  • Pillow
  • pytorch
  • torchvision

Note If you want to train your own semantic segmentation model, make sure your Pytorch version is greater than 0.2.0 or includes commit 78020a.

Go to this page to prepare ImageNet 1K data.

To test a model on ImageNet validation set:

python3 classify.py test --arch drn_c_26 -j 4 
   
     --pretrained

   

To train a new model:

python3 classify.py train --arch drn_c_26 -j 8 
   
     --epochs 120

   

Besides drn_c_26, we also provide drn_c_42 and drn_c_58. They are in DRN-C family as described in Dilated Residual Networks. DRN-D models are simplified versions of DRN-C. Their code names are drn_d_22, drn_d_38, drn_d_54, and drn_d_105.

Semantic Image Segmentataion

Models

Comparison of mIoU on Cityscapes and numbers of parameters.

Name mIoU Params
DRN-A-50 67.3% 25.6M
DRN-C-26 68.0% 21.1M
DRN-C-42 70.9% 31.2M
DRN-D-22 68.0% 16.4M
DRN-D-38 71.4% 26.5M
DRN-D-105* 75.6% 54.8M

*trained with poly learning rate, random scaling and rotations.

DRN-D-105 gets 76.3% mIoU on Cityscapes testing set with multi-scale testing, poly learning rate and data augmentation with random rotation and scaling in training. Full results are here.

Prepare Data

The segmentation image data folder is supposed to contain following image lists with names below:

  • train_images.txt
  • train_labels.txt
  • val_images.txt
  • val_labels.txt
  • test_images.txt

The code will also look for info.json in the folder. It contains mean and std of the training images. For example, below is info.json used for training on Cityscapes.

{
    "mean": [
        0.290101,
        0.328081,
        0.286964
    ],
    "std": [
        0.182954,
        0.186566,
        0.184475
    ]
}

Each line in the list is a path to an input image or its label map relative to the segmentation folder.

For example, if the data folder is "/foo/bar" and train_images.txt in it contains

leftImg8bit/train/aachen/aachen_000000_000019_leftImg8bit.png
leftImg8bit/train/aachen/aachen_000001_000019_leftImg8bit.png

and train_labels.txt contrains

gtFine/train/aachen/aachen_000000_000019_gtFine_trainIds.png
gtFine/train/aachen/aachen_000001_000019_gtFine_trainIds.png

Then the first image path is expected at

/foo/bar/leftImg8bit/train/aachen/aachen_000000_000019_leftImg8bit.png

and its label map is at

/foo/bar/gtFine/train/aachen/aachen_000000_000019_gtFine_trainIds.png

In training phase, both train_* and val_* are assumed to be in the data folder. In validation phase, only val_images.txt and val_labels.txt are needed. In testing phase, when there are no available labels, only test_images.txt is needed. segment.py has a command line option --phase and the corresponding acceptable arguments are train, val, and test.

To set up Cityscapes data, please check this document.

Optimization Setup

The current segmentation models are trained on basic data augmentation (random crops + flips). The learning rate is changed by steps, where it is decreased by a factor of 10 at each step.

Training

To train a new model, use

python3 segment.py train -d 
   
     -c 
    
      -s 896 \
    --arch drn_d_22 --batch-size 32 --epochs 250 --lr 0.01 --momentum 0.9 \
    --step 100

    
   

category_number is the number of categories in segmentation. It is 19 for Cityscapes and 11 for Camvid. The actual label maps should contain values in the range of [0, category_number). Invalid pixels can be labeled as 255 and they will be ignored in training and evaluation. Depends on the batch size, lr and momentum can be 0.01/0.9 or 0.001/0.99.

If you want to train drn_d_105 to achieve best results on cityscapes dataset, you need to turn on data augmentation and use poly learning rate:

python3 segment.py train -d 
   
     -c 19 -s 840 --arch drn_d_105 --random-scale 2 --random-rotate 10 --batch-size 16 --epochs 500 --lr 0.01 --momentum 0.9 -j 16 --lr-mode poly --bn-sync

   

Note:

  • If you use 8 GPUs for 16 crops per batch, the memory for each GPU is more than 12GB. If you don't have enough GPU memory, you can try smaller batch size or crop size. Smaller crop size usually hurts the performance more.
  • Batch normalization synchronization across multiple GPUs is necessary to train very deep convolutional networks for semantic segmentation. We provide an implementation as a pytorch extenstion in lib/. However, it is not for the faint-hearted to build from scratch, although an Makefile is provided. So a built binary library for 64-bit Ubuntu is provided. It is tested on Ubuntu 16.04. Also remember to add lib/ to your PYTHONPATH.

Testing

Evaluate models on testing set or any images without ground truth labels using our related pretrained model:

python3 segment.py test -d 
   
     -c 
    
      --arch drn_d_22 \
    --pretrained 
     
       --phase test --batch-size 1

     
    
   

You can download the pretrained DRN models on Cityscapes here: http://go.yf.io/drn-cityscapes-models.

If you want to evaluate a checkpoint from your own training, use --resume instead of --pretrained:

python3 segment.py test -d 
   
     -c 
    
      --arch drn_d_22 \
    --resume 
     
       --phase test --batch-size 1

     
    
   

You can also turn on multi-scale testing for better results by adding --ms:

python3 segment.py test -d 
   
     -c 
    
      --arch drn_d_105 \
    --resume 
     
       --phase val --batch-size 1 --ms

     
    
   
A universal memory dumper using Frida

Fridump Fridump (v0.1) is an open source memory dumping tool, primarily aimed to penetration testers and developers. Fridump is using the Frida framew

551 Jan 07, 2023
The official implementation of A Unified Game-Theoretic Interpretation of Adversarial Robustness.

This repository is the official implementation of A Unified Game-Theoretic Interpretation of Adversarial Robustness. Requirements pip install -r requi

Jie Ren 17 Dec 12, 2022
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
Dataloader tools for language modelling

Installation: pip install lm_dataloader Design Philosophy A library to unify lm dataloading at large scale Simple interface, any tokenizer can be inte

5 Mar 25, 2022
Unified unsupervised and semi-supervised domain adaptation network for cross-scenario face anti-spoofing, Pattern Recognition

USDAN The implementation of Unified unsupervised and semi-supervised domain adaptation network for cross-scenario face anti-spoofing, which is accepte

11 Nov 03, 2022
Github project for Attention-guided Temporal Coherent Video Object Matting.

Attention-guided Temporal Coherent Video Object Matting This is the Github project for our paper Attention-guided Temporal Coherent Video Object Matti

71 Dec 19, 2022
Short and long time series classification using convolutional neural networks

time-series-classification Short and long time series classification via convolutional neural networks In this project, we present a novel framework f

35 Oct 22, 2022
SpecAugmentPyTorch - A Pytorch (support batch and channel) implementation of GoogleBrain's SpecAugment: A Simple Data Augmentation Method for Automatic Speech Recognition

SpecAugment An implementation of SpecAugment for Pytorch How to use Install pytorch, version=1.9.0 (new feature (torch.Tensor.take_along_dim) is used

IMLHF 3 Oct 11, 2022
Object-Centric Learning with Slot Attention

Slot Attention This is a re-implementation of "Object-Centric Learning with Slot Attention" in PyTorch (https://arxiv.org/abs/2006.15055). Requirement

Untitled AI 72 Jan 02, 2023
Code for Universal Semi-Supervised Semantic Segmentation models paper accepted in ICCV 2019

USSS_ICCV19 Code for Universal Semi Supervised Semantic Segmentation accepted to ICCV 2019. Full Paper available at https://arxiv.org/abs/1811.10323.

Tarun K 68 Nov 24, 2022
A small fun project using python OpenCV, mediapipe, and pydirectinput

Here I tried a small fun project using python OpenCV, mediapipe, and pydirectinput. Here we can control moves car game when yellow color come to right box (press key 'd') left box (press key 'a') lef

Sameh Elisha 3 Nov 17, 2022
Skyformer: Remodel Self-Attention with Gaussian Kernel and Nystr\"om Method (NeurIPS 2021)

Skyformer This repository is the official implementation of Skyformer: Remodel Self-Attention with Gaussian Kernel and Nystr"om Method (NeurIPS 2021).

Qi Zeng 46 Sep 20, 2022
AdvStyle - Official PyTorch Implementation

AdvStyle - Official PyTorch Implementation Paper | Supp Discovering Interpretable Latent Space Directions of GANs Beyond Binary Attributes. Huiting Ya

Beryl 37 Oct 21, 2022
Convex optimization for fun and profit.

CFMM Optimal Routing This repository contains the code needed to generate the figures used in the paper Optimal Routing for Constant Function Market M

Guillermo Angeris 183 Dec 29, 2022
Arxiv harvester - Poor man's simple harvester for arXiv resources

Poor man's simple harvester for arXiv resources This modest Python script takes

Patrice Lopez 5 Oct 18, 2022
Code for the paper: Sketch Your Own GAN

Sketch Your Own GAN Project | Paper | Youtube Our method takes in one or a few hand-drawn sketches and customizes an off-the-shelf GAN to match the in

677 Dec 28, 2022
🤗 Paper Style Guide

🤗 Paper Style Guide (Work in progress, send a PR!) Libraries to Know booktabs natbib cleveref Either seaborn, plotly or altair for graphs algorithmic

Hugging Face 66 Dec 12, 2022
The code of paper 'Learning to Aggregate and Personalize 3D Face from In-the-Wild Photo Collection'

Learning to Aggregate and Personalize 3D Face from In-the-Wild Photo Collection Pytorch implemetation of paper 'Learning to Aggregate and Personalize

Tencent YouTu Research 136 Dec 29, 2022
《Fst Lerning of Temporl Action Proposl vi Dense Boundry Genertor》(AAAI 2020)

Update 2020.03.13: Release tensorflow-version and pytorch-version DBG complete code. 2019.11.12: Release tensorflow-version DBG inference code. 2019.1

Tencent 338 Dec 16, 2022
Dynamical Wasserstein Barycenters for Time Series Modeling

Dynamical Wasserstein Barycenters for Time Series Modeling This is the code related for the Dynamical Wasserstein Barycenter model published in Neurip

8 Sep 09, 2022