Point detection through multi-instance deep heatmap regression for sutures in endoscopy

Overview

Suture detection PyTorch

This repo contains the reference implementation of suture detection model in PyTorch for the paper

Point detection through multi-instance deep heatmap regression for sutures in endoscopy

Lalith Sharan, Gabriele Romano, Julian Brand, Halvar Kelm, Matthias Karck, Raffaele De Simone, Sandy Engelhardt

Accepted, IJCARS 2021

Please see the license file for terms os use of this repo. If you find our work useful in your research please consider citing our paper:

Sharan, L., Romano, G., Brand, J. et al. Point detection through multi-instance deep heatmap regression for 
sutures in endoscopy. Int J CARS (2021). https://doi.org/10.1007/s11548-021-02523-w

Setup

A conda environment is recommended for setting up an environment for model training and prediction. There are two ways this environment can be set up:

  1. Cloning conda environment (recommended)
conda env create -f suture_detection_pytorch.yml
conda activate suture_detection_pytorch

If the installation from .yml file does not work, it may be a cuda error. The solution is to either install the failed packages via pip, or use the pip requirements file here.

  1. Installing requirements
conda intall --file conda_requirements.txt
conda install -c pytorch torchvision=0.7.0
pip install --r requirements.txt

Prediction of suture detection for a single image

You can predict the suture points for a single image with:

python test.py --dataroot ~/data/mkr_dataset/ --exp_dir ~/experiments/unet_baseline_fold_1/ --save_pred_points
  • The command save_pred_points saves the predicted landmark co-ordinates in the resepective op folders in the ../predictions directory.
  • The command save_pred_mask saves the predicted mask that is the output of the model in the resepective op folders in the ../predictions directory. The final points are extracted from this mask.

Dataset preparation

You can download the challenge dataset from the synapse platform by signing up for the AdaptOR 2021 Challenge from the Synapse platform.

  • The Challenge data is present in this format: dataroot --> op_date --> video_folders --> images, point_labels
  • Generate the masks with a blur function and spread by running the following script:
python generate_suture_masks.py --dataroot /path/to/data --blur_func gaussian --spread 2
  • Generate the split files for the generated masks, for cross-validation by running the following script: You can predict depth for a single image with:
python generate_splits.py --splits_name mkr_dataset --num_folds 4

Training a model

Once you have prepared the dataset, you can train the model with:

python train.py --dataroot /path/to/data
Owner
artificial intelligence in the area of cardiovascular healthcare
artificial intelligence in the area of cardiovascular healthcare
Real-time 3D multi-person detection made easy with OpenPose and the ZED

OpenPose ZED This sample show how to simply use the ZED with OpenPose, the deep learning framework that detects the skeleton from a single 2D image. T

blanktec 5 Nov 06, 2020
TSDF++: A Multi-Object Formulation for Dynamic Object Tracking and Reconstruction

TSDF++: A Multi-Object Formulation for Dynamic Object Tracking and Reconstruction TSDF++ is a novel multi-object TSDF formulation that can encode mult

ETHZ ASL 130 Dec 29, 2022
A library to inspect itermediate layers of PyTorch models.

A library to inspect itermediate layers of PyTorch models. Why? It's often the case that we want to inspect intermediate layers of a model without mod

archinet.ai 380 Dec 28, 2022
Code for "ATISS: Autoregressive Transformers for Indoor Scene Synthesis", NeurIPS 2021

ATISS: Autoregressive Transformers for Indoor Scene Synthesis This repository contains the code that accompanies our paper ATISS: Autoregressive Trans

138 Dec 22, 2022
This is our ARTS test set, an enriched test set to probe Aspect Robustness of ABSA.

This is the repository for our 2020 paper "Tasty Burgers, Soggy Fries: Probing Aspect Robustness in Aspect-Based Sentiment Analysis". Data We provide

35 Nov 16, 2022
Pytorch implementation of MaskFlownet

MaskFlownet-Pytorch Unofficial PyTorch implementation of MaskFlownet (https://github.com/microsoft/MaskFlownet). Tested with: PyTorch 1.5.0 CUDA 10.1

Daniele Cattaneo 84 Nov 02, 2022
Computationally efficient algorithm that identifies boundary points of a point cloud.

BoundaryTest Included are MATLAB and Python packages, each of which implement efficient algorithms for boundary detection and normal vector estimation

6 Dec 09, 2022
EXplainable Artificial Intelligence (XAI)

EXplainable Artificial Intelligence (XAI) This repository includes the codes for different projects on eXplainable Artificial Intelligence (XAI) by th

4 Nov 28, 2022
Spatial Attentive Single-Image Deraining with a High Quality Real Rain Dataset (CVPR'19)

Spatial Attentive Single-Image Deraining with a High Quality Real Rain Dataset (CVPR'19) Tianyu Wang*, Xin Yang*, Ke Xu, Shaozhe Chen, Qiang Zhang, Ry

Steve Wong 177 Dec 01, 2022
This repository collects 100 papers related to negative sampling methods.

Negative-Sampling-Paper This repository collects 100 papers related to negative sampling methods, covering multiple research fields such as Recommenda

RUCAIBox 119 Dec 29, 2022
An original implementation of "MetaICL Learning to Learn In Context" by Sewon Min, Mike Lewis, Luke Zettlemoyer and Hannaneh Hajishirzi

MetaICL: Learning to Learn In Context This includes an original implementation of "MetaICL: Learning to Learn In Context" by Sewon Min, Mike Lewis, Lu

Meta Research 141 Jan 07, 2023
A fast MoE impl for PyTorch

An easy-to-use and efficient system to support the Mixture of Experts (MoE) model for PyTorch.

Rick Ho 873 Jan 09, 2023
A Decentralized Omnidirectional Visual-Inertial-UWB State Estimation System for Aerial Swar.

Omni-swarm A Decentralized Omnidirectional Visual-Inertial-UWB State Estimation System for Aerial Swarm Introduction Omni-swarm is a decentralized omn

HKUST Aerial Robotics Group 99 Dec 23, 2022
PyTorch implementation of Federated Learning with Non-IID Data, and federated learning algorithms, including FedAvg, FedProx.

Federated Learning with Non-IID Data This is an implementation of the following paper: Yue Zhao, Meng Li, Liangzhen Lai, Naveen Suda, Damon Civin, Vik

Youngjoon Lee 48 Dec 29, 2022
Out-of-Distribution Generalization of Chest X-ray Using Risk Extrapolation

OoD_Gen-Chest_Xray Out-of-Distribution Generalization of Chest X-ray Using Risk Extrapolation Requirements (Installations) Install the following libra

Enoch Tetteh 2 Oct 01, 2022
Ray tracing of a Schwarzschild black hole written entirely in TensorFlow.

TensorGeodesic Ray tracing of a Schwarzschild black hole written entirely in TensorFlow. Dependencies: Python 3 TensorFlow 2.x numpy matplotlib About

5 Jan 15, 2022
ThunderGBM: Fast GBDTs and Random Forests on GPUs

Documentations | Installation | Parameters | Python (scikit-learn) interface What's new? ThunderGBM won 2019 Best Paper Award from IEEE Transactions o

Xtra Computing Group 647 Jan 04, 2023
Benchmark tools for Compressive LiDAR-to-map registration

Benchmark tools for Compressive LiDAR-to-map registration This repo contains the released version of code and datasets used for our IROS 2021 paper: "

Allie 9 Nov 24, 2022
Code for Boundary-Aware Segmentation Network for Mobile and Web Applications

BASNet Boundary-Aware Segmentation Network for Mobile and Web Applications This repository contain implementation of BASNet in tensorflow/keras. comme

Hamid Ali 8 Nov 24, 2022