This is the source code of the 1st place solution for segmentation task (with Dice 90.32%) in 2021 CCF BDCI challenge.

Overview

1st place solution in CCF BDCI 2021 ULSEG challenge

This is the source code of the 1st place solution for ultrasound image angioma segmentation task (with Dice 90.32%) in 2021 CCF BDCI challenge.

[Challenge leaderboard ๐Ÿ† ]

1 Pipeline of our solution

Our solution includes data pre-processing, network training, ensemble inference and data post-processing.

drawing

Ultrasound images of hemangioma segmentation framework

1.1 Data pre-processing

To improve our performance on the leaderboard, 5-fold cross validation is used to evaluate the performance of our proposed method. In our opinion, it is necessary to keep the size distribution of tumor in the training and validation sets. We calculate the tumor area for each image and categorize the tumor size into classes: 1) less than 3200 pixels, 2) less than 7200 pixels and greater than 3200 pixels, and 3) greater than 7200 pixels. These two thresholds, 3200 pixels and 7200 pixels, are close to the tertiles. We divide images in each size grade group into 5 folds and combined different grades of single fold into new single fold. This strategy ensured that final 5 folds had similar size distribution.

drawing

Tumors of different sizes

1.2 Network training

Due to the small size of the training set, for this competition, we chose a lightweight network structure: Linknet with efficientnet-B6 encoder. Following methods are performed in data augmentation (DA): 1) horizontal flipping, 2) vertical flipping, 3) random cropping, 4) random affine transformation, 5) random scaling, 6) random translation, 7) random rotation, and 8) random shearing transformation. In addition, one of the following methods was randomly selected for enhanced data augmentation (EDA): 1) sharpening, 2) local distortion, 3) adjustment of contrast, 4) blurring (Gaussian, mean, median), 5) addition of Gaussian noise, and 6) erasing.

1.3 Ensemble inference

We ensemble five models (five folds) and do test time augmentation (TTA) for each model. TTA generally improves the generalization ability of the segmentation model. In our framework, the TTA includes vertical flipping, horizontal flipping, and rotation of 180 degrees for the segmentation task.

1.4 Data post-processing

We post-processe the obtained binary mask by removing small isolated points (RSIP) and edge median filtering (EMF) . The edge part of our predicted tumor is not smooth enough, which is not quite in line with the manual annotation of the physician, so we adopt a small trick, i.e., we do a median filtering specifically for the edge part, and the experimental results show that this can improve the accuracy of tumor segmentation.

2 Segmentation results on 2021 CCF BDCI dataset

We test our method on 2021 CCD BDCI dataset (215 for training and 107 for testing). The segmentation results of 5-fold CV based on "Linknet with efficientnet-B6 encoder" are as following:

fold Linknet Unet Att-Unet DeeplabV3+ Efficient-b5 Efficient-b6 Resnet-34 DA EDA TTA RSIP EMF Dice (%)
1 โˆš 85.06
1 โˆš โˆš 84.48
1 โˆš โˆš 84.72
1 โˆš โˆš 84.93
1 โˆš โˆš 86.52
1 โˆš โˆš 86.18
1 โˆš โˆš 86.91
1 โˆš โˆš โˆš 87.38
1 โˆš โˆš โˆš 88.36
1 โˆš โˆš โˆš โˆš 89.05
1 โˆš โˆš โˆš โˆš โˆš 89.20
1 โˆš โˆš โˆš โˆš โˆš โˆš 89.52
E โˆš โˆš โˆš โˆš โˆš โˆš 90.32

3 How to run this code?

Here, we split the whole process into 5 steps so that you can easily replicate our results or perform the whole pipeline on your private custom dataset.

  • step0, preparation of environment
  • step1, run the script preprocess.py to perform the preprocessing
  • step2, run the script train.py to train our model
  • step3, run the script inference.py to inference the test data.
  • step4, run the script postprocess.py to perform the preprocessing.

You should prepare your data in the format of 2021 CCF BDCI dataset, this is very simple, you only need to prepare: two folders store png format images and masks respectively. You can download them from [Homepage].

The complete file structure is as follows:

  |--- CCF-BDCI-2021-ULSEG-Rank1st
      |--- segmentation_models_pytorch_4TorchLessThan120
          |--- ...
          |--- ...
      |--- saved_model
          |--- pred
          |--- weights
      |--- best_model
          |--- best_model1.pth
          |--- ...
          |--- best_model5.pth
      |--- train_data
          |--- img
          |--- label
          |--- train.csv
      |--- test_data
          |--- img
          |--- predict
      |--- dataset.py
      |--- inference.py
      |--- losses.py
      |--- metrics.py
      |--- ploting.py
      |--- preprocess.py
      |--- postprocess.py
      |--- util.py
      |--- train.py
      |--- visualization.py
      |--- requirement.txt

3.1 Step0 preparation of environment

We have tested our code in following environment๏ผš

For installing these, run the following code:

pip install -r requirements.txt

3.2 Step1 preprocessing

In step1, you should run the script and train.csv can be generated under train_data fold:

python preprocess.py \
--image_path="./train_data/label" \
--csv_path="./train_data/train.csv"

3.3 Step2 training

With the csv file train.csv, you can directly perform K-fold cross validation (default is 5-fold), and the script uses a fixed random seed to ensure that the K-fold cv of each experiment is repeatable. Run the following code:

python train.py \
--input_channel=1 \
--output_class=1 \
--image_resolution=256 \
--epochs=100 \
--num_workers=2 \
--device=0 \
--batch_size=8 \
--backbone="efficientnet-b6" \
--network="Linknet" \
--initial_learning_rate=1e-7 \
--t_max=110 \
--folds=5 \
--k_th_fold=1 \
--fold_file_list="./train_data/train.csv" \
--train_dataset_path="./train_data/img" \
--train_gt_dataset_path="./train_data/label" \
--saved_model_path="./saved_model" \
--visualize_of_data_aug_path="./saved_model/pred" \
--weights_path="./saved_model/weights" \
--weights="./saved_model/weights/best_model.pth" 

By specifying the parameter k_th_fold from 1 to folds and running repeatedly, you can complete the training of all K folds. After each fold training, you need to copy the .pth file from the weights path to the best_model folder.

3.4 Step3 inference (test)

Before running the script, make sure that you have generated five models and saved them in the best_model folder. Run the following code:

python inference.py \
--input_channel=1 \
--output_class=1 \
--image_resolution=256 \
--device=0 \
--backbone="efficientnet-b6" \
--network="Linknet" \
--weights1="./saved_model/weights/best_model1.pth" \
--weights2="./saved_model/weights/best_model2.pth" \
--weights3="./saved_model/weights/best_model3.pth" \
--weights4="./saved_model/weights/best_model4.pth" \
--weights5="./saved_model/weights/best_model5.pth" \
--test_path="./test_data/img" \
--saved_path="./test_data/predict" 

The results of the model inference will be saved in the predict folder.

3.5 Step4 postprocessing

Run the following code:

python postprocess.py \
--image_path="./test_data/predict" \
--threshood=50 \
--kernel=20 

Alternatively, if you want to observe the overlap between the predicted result and the original image, we also provide a visualization script visualization.py. Modify the image path in the code and run the script directly.

drawing

Visualization of tumor margins

4 Acknowledgement

  • Thanks to the organizers of the 2021 CCF BDCI challenge.
  • Thanks to the 2020 MICCCAI TNSCUI TOP 1 for making the code public.
  • Thanks to qubvel, the author of smg and ttach, all network and TTA used in this code come from his implement.
Owner
Chenxu Peng
Data Science, Deep Learning
Chenxu Peng
This repository contains a PyTorch implementation of the paper Learning to Assimilate in Chaotic Dynamical Systems.

Amortized Assimilation This repository contains a PyTorch implementation of the paper Learning to Assimilate in Chaotic Dynamical Systems. Abstract: T

4 Aug 16, 2022
Complete system for facial identity system

Complete system for facial identity system. Include one-shot model, database operation, features visualization, monitoring

4 May 02, 2022
Dogs classification with Deep Metric Learning using some popular losses

Tsinghua Dogs classification with Deep Metric Learning 1. Introduction Tsinghua Dogs dataset Tsinghua Dogs is a fine-grained classification dataset fo

QuocThangNguyen 45 Nov 09, 2022
use machine learning to recognize gesture on raspberrypi

Raspberrypi_Gesture-Recognition use machine learning to recognize gesture on raspberrypi ่ชชๆ˜Ž ๅˆฉ็”จ tensorflow lite ่จ“็ทดๆ‰‹้ƒจ่พจ่ญ˜ๆจกๅž‹ ๅˆ†่พจ "ๅ‰ชๅˆ€"ใ€"็Ÿณ้ ญ"ใ€"ๅธƒ" ไน‹ๆ‰‹ๅ‹ข ๅ†ๅฐ‡่จ“็ทดๆจกๅž‹ๅŒฏๅ…ฅ

1 Dec 10, 2021
ICLR 2021: Pre-Training for Context Representation in Conversational Semantic Parsing

SCoRe: Pre-Training for Context Representation in Conversational Semantic Parsing This repository contains code for the ICLR 2021 paper "SCoRE: Pre-Tr

Microsoft 28 Oct 02, 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
DilatedNet in Keras for image segmentation

Keras implementation of DilatedNet for semantic segmentation A native Keras implementation of semantic segmentation according to Multi-Scale Context A

303 Mar 15, 2022
PECOS - Prediction for Enormous and Correlated Spaces

PECOS - Predictions for Enormous and Correlated Output Spaces PECOS is a versatile and modular machine learning (ML) framework for fast learning and i

Amazon 387 Jan 04, 2023
GoodNews Everyone! Context driven entity aware captioning for news images

This is the code for a CVPR 2019 paper, called GoodNews Everyone! Context driven entity aware captioning for news images. Enjoy! Model preview: Huge T

117 Dec 19, 2022
Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs

Project Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs, https://arxiv.org/pdf/2111.01940.pdf. Authors Truong Son Hy

5 Jun 28, 2022
RMNA: A Neighbor Aggregation-Based Knowledge Graph Representation Learning Model Using Rule Mining

RMNA: A Neighbor Aggregation-Based Knowledge Graph Representation Learning Model Using Rule Mining Our code is based on Learning Attention-based Embed

ๅฎ‹ๆœ้ƒฝ 4 Aug 07, 2022
Code for the paper "Adapting Monolingual Models: Data can be Scarce when Language Similarity is High"

Wietse de Vries โ€ข Martijn Bartelds โ€ข Malvina Nissim โ€ข Martijn Wieling Adapting Monolingual Models: Data can be Scarce when Language Similarity is High

Wietse de Vries 5 Aug 02, 2021
Repository of continual learning papers

Continual learning paper repository This repository contains an incomplete (but dynamically updated) list of papers exploring continual learning in ma

29 Jan 05, 2023
Riemannian Geometry for Molecular Surface Approximation (RGMolSA)

Riemannian Geometry for Molecular Surface Approximation (RGMolSA) Introduction Ligand-based virtual screening aims to reduce the cost and duration of

11 Nov 15, 2022
Automatic Video Captioning Evaluation Metric --- EMScore

Automatic Video Captioning Evaluation Metric --- EMScore Overview For an illustration, EMScore can be computed as: Installation modify the encode_text

Yaya Shi 17 Nov 28, 2022
Lighthouse: Predicting Lighting Volumes for Spatially-Coherent Illumination

Lighthouse: Predicting Lighting Volumes for Spatially-Coherent Illumination Pratul P. Srinivasan, Ben Mildenhall, Matthew Tancik, Jonathan T. Barron,

Pratul Srinivasan 65 Dec 14, 2022
Video Frame Interpolation without Temporal Priors (a general method for blurry video interpolation)

Video Frame Interpolation without Temporal Priors (NeurIPS2020) [Paper] [video] How to run Prerequisites NVIDIA GPU + CUDA 9.0 + CuDNN 7.6.5 Pytorch 1

YoujianZhang 31 Sep 04, 2022
This is Unofficial Repo. Lips Don't Lie: A Generalisable and Robust Approach to Face Forgery Detection (CVPR 2021)

Lips Don't Lie: A Generalisable and Robust Approach to Face Forgery Detection This is a PyTorch implementation of the LipForensics paper. This is an U

Minha Kim 2 May 11, 2022
Robotics with GPU computing

Robotics with GPU computing Cupoch is a library that implements rapid 3D data processing for robotics using CUDA. The goal of this library is to imple

Shirokuma 625 Jan 07, 2023
Taming Transformers for High-Resolution Image Synthesis

Taming Transformers for High-Resolution Image Synthesis CVPR 2021 (Oral) Taming Transformers for High-Resolution Image Synthesis Patrick Esser*, Robin

CompVis Heidelberg 3.5k Jan 03, 2023