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A transformer-inspired neural network for surgical action triplet recognition from laparoscopic videos.

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PyTorch TensorFlow

Rendezvous: Attention Mechanisms for the Recognition of Surgical Action Triplets in Endoscopic Videos

C.I. Nwoye, T. Yu, C. Gonzalez, B. Seeliger, P. Mascagni, D. Mutter, J. Marescaux, and N. Padoy

This repository contains the implementation code, inference demo, and evaluation scripts.
Read on ArXiv Journal Publication PWC

Abstract

Out of all existing frameworks for surgical workflow analysis in endoscopic videos, action triplet recognition stands out as the only one aiming to provide truly fine-grained and comprehensive information on surgical activities. This information, presented as <instrument, verb, target> combinations, is highly challenging to be accurately identified. Triplet components can be difficult to recognize individually; in this task, it requires not only performing recognition simultaneously for all three triplet components, but also correctly establishing the data association between them.

To achieve this task, we introduce our new model, the Rendezvous (RDV), which recognizes triplets directly from surgical videos by leveraging attention at two different levels. We first introduce a new form of spatial attention to capture individual action triplet components in a scene; called Class Activation Guided Attention Mechanism (CAGAM). This technique focuses on the recognition of verbs and targets using activations resulting from instruments. To solve the association problem, our RDV model adds a new form of semantic attention inspired by Transformer networks; Multi-Head of Mixed Attention (MHMA). This technique uses several cross and self attentions to effectively capture relationships between instruments, verbs, and targets.

We also introduce CholecT50 - a dataset of 50 endoscopic videos in which every frame has been annotated with labels from 100 triplet classes. Our proposed RDV model significantly improves the triplet prediction mAP by over 9% compared to the state-of-the-art methods on this dataset.


News and Updates

  • [2023.02.20]: CholecT50 can now be accessed on CAMMA website.
  • [2022.05.09]: TensorFlow v2 implementation code released!
  • [2022.05.09]: TensorFlow v1 implementation code released!
  • [2022.05.03]: PyTorch implementation code released!
  • [2022.04.12]: CholecT45: 45 videos subset of CholecT50 can now be accessed on CAMMA website.
  • [2022.03.22]: Paper accepted at Elsevier journal, Medical Image Analysis 2022!
  • [2022.04.01]: Demo code and pre-trained model released!

Model Overview

The RDV model is composed of:

  • Feature Extraction layer: extract high and low level features from input image from a video
  • Encoder: for triplet components encoding
    • Weakly-Supervised Localization (WSL) Layer: for localizing the instruments
    • Class Activation Guided Attention Mechanism (CAGAM): for detecting the verbs and targets leveraging attention resulting from instrument activations. (channel anad position spatial attentions are used here)
    • Bottleneck layer: for collecting unfiltered features for initial scene understanding
  • Decoder: for triplet assocaition decoding over L successive layers
    • Multi-Head of Mixed Attention (MHMA): for learning to associate instrument-verb-target using successive self- and cross-attention mechanism
    • Feed-forward layer: for triplet feature refinement
  • Classifier: for final triplet classification

We hope this repo will help researches/engineers in the development of surgical action recognition systems. For algorithm development, we provide training data, baseline models and evaluation methods to make a level playground. For application usage, we also provide a small video demo that takes raw videos as input without any bells and whistles.


Performance

Results Table

Components AP Association AP
API APV APT APIV APIT APIVT
92.0 60.7 38.3 39.4 36.9 29.9

Video Demo

Available on Youtube.


Installation

Requirements

The model depends on the following libraries:

  1. sklearn
  2. PIL
  3. Python >= 3.5
  4. ivtmetrics
  5. Developer's framework:
    1. For Tensorflow version 1:
      • TF >= 1.10
    2. For Tensorflow version 2:
      • TF >= 2.1
    3. For PyTorch version:
      • Pyorch >= 1.10.1
      • TorchVision >= 0.11

System Requirements:

The code has been test on Linux operating system. It runs on both CPU and GPU. Equivalence of basic OS commands such as unzip, cd, wget, etc. will be needed to run in Windows or Mac OS.


Quick Start

  • clone the git repository: git clone https://github.com/CAMMA-public/rendezvous.git
  • install all the required libraries according to chosen your framework.
  • download the dataset
  • download model's weights
  • train
  • evaluate

Docker Example

coming soon . . .


Dataset Zoo


Data Preparation

  • All frames are resized to 256 x 448 during training and evaluation.
  • Image data are mean normalized.
  • The dataset variants are tagged in this code as follows:
    • cholect50 = CholecT50 with split used in the original paper.
    • cholect50-challenge = CholecT50 with split used in the CholecTriplet challenge.
    • cholect45-crossval = CholecT45 with official cross-val split (currently public released).
    • cholect50-crossval = CholecT50 with official cross-val split.

Evaluation Metrics

The ivtmetrics computes AP for triplet recognition. It also support the evaluation of the recognition of the triplet components.

pip install ivtmetrics

or

conda install -c nwoye ivtmetrics

Usage guide is found on pypi.org.


Running the Model

The code can be run in a trianing mode (-t) or testing mode (-e) or both (-t -e) if you want to evaluate at the end of training :


Training on CholecT45/CholecT50 Dataset

Simple training on CholecT50 dataset:

python run.py -t  --data_dir="/path/to/dataset" --dataset_variant=cholect50 --version=1

You can include more details such as epoch, batch size, cross-validation and evaluation fold, weight initialization, learning rates for all subtasks, etc.:

python3 run.py -t -e  --data_dir="/path/to/dataset" --dataset_variant=cholect45-crossval --kfold=1 --epochs=180 --batch=64 --version=2 -l 1e-2 1e-3 1e-4 --pretrain_dir='path/to/imagenet/weights'

All the flags can been seen in the run.py file. The experimental setup of the published model is contained in the paper.


Testing

python3 run.py -e --data_dir="/path/to/dataset" --dataset_variant=cholect45-crossval --kfold 3 --batch 32 --version=1 --test_ckpt="/path/to/model-k3/weights"

Training on Custom Dataset

Adding custom datasets is quite simple, what you need to do are:

  • organize your annotation files in the same format as in CholecT45 dataset.
  • final model layers can be modified to suit your task by changing the class-size (num_tool_classes, num_verb_classes, num_target_classes, num_triplet_classes) in the argparse.

Model Zoo

  • N.B. Download links to models' weights will not be provided until after the CholecTriplet2022 challenge.

PyTorch

Network Base Resolution Dataset Data split Model Weights
Rendezvous ResNet-18 Low CholecT50 RDV Download
Rendezvous ResNet-18 High CholecT50 RDV [Download]
Rendezvous ResNet-18 Low CholecT50 Challenge Download
Rendezvous ResNet-18 Low CholecT50 crossval k1 Download
Rendezvous ResNet-18 Low CholecT50 crossval k2 Download
Rendezvous ResNet-18 Low CholecT50 crossval k3 Download
Rendezvous ResNet-18 Low CholecT50 crossval k4 Download
Rendezvous ResNet-18 Low CholecT50 crossval k5 Download
Rendezvous ResNet-18 Low CholecT45 crossval k1 Download
Rendezvous ResNet-18 Low CholecT45 crossval k2 Download
Rendezvous ResNet-18 Low CholecT45 crossval k3 Download
Rendezvous ResNet-18 Low CholecT45 crossval k4 Download
Rendezvous ResNet-18 Low CholecT45 crossval k5 Download

TensorFlow v1

Network Base Resolution Dataset Data split Link
Rendezvous ResNet-18 High CholecT50 RDV [Download]
Rendezvous ResNet-18 High CholecT50 Challenge [Download]
Rendezvous ResNet-18 High CholecT50 Challenge [Download]

TensorFlow v2

Network Base Resolution Dataset Data split Link
Rendezvous ResNet-18 High CholecT50 RDV [Download]
Rendezvous ResNet-18 Low CholecT50 RDV [Download]

Baseline Models

TensorFlow v1

Model Layer Size Ablation Component APIVT Link
Rendezvous 1 Proposed 24.6 [Download]
Rendezvous 2 Proposed 27.0 [Download]
Rendezvous 4 Proposed 27.3 [Download]
Rendezvous 8 Proposed 29.9 [Download]
Rendezvous 8 Patch sequence 24.1 [Download]
Rendezvous 8 Temporal sequence --.-- [Download]
Rendezvous 8 Single Self Attention Head 18.8 [Download]
Rendezvous 8 Multiple Self Attention Head 26.1 [Download]
Rendezvous 8 CholecTriplet2021 Challenge Model 32.7 [Download]

Model weights are released periodically because some training are in progress.




License

This code, models, and datasets are available for non-commercial scientific research purposes provided by CC BY-NC-SA 4.0 LICENSE attached as LICENSE file. By downloading and using this code you agree to the terms in the LICENSE. Third-party codes are subject to their respective licenses.



Acknowledgment

This work was supported by French state funds managed within the Investissements d'Avenir program by BPI France in the scope of ANR project CONDOR, ANR Labex CAMI, ANR DeepSurg, ANR IHU Strasbourg and ANR National AI Chair AI4ORSafety. We thank the research teams of IHU and IRCAD for their help in the initial annotation of the dataset during the CONDOR project.






Related Resources

  • CholecT45 / CholecT50 Datasets Download dataset GitHub
  • Offical Dataset Splits Official dataset split
  • Tripnet ArXiv paper GitHub
  • Attention Tripnet ArXiv paper GitHub
  • CholecTriplet2021 Challenge Challenge website ArXiv paper GitHub
  • CholecTriplet2022 Challenge Challenge website GitHub


Citation

If you find this repo useful in your project or research, please consider citing the relevant publications:

  • For the CholecT45/CholecT50 Dataset:
@article{nwoye2021rendezvous,
  title={Rendezvous: Attention Mechanisms for the Recognition of Surgical Action Triplets in Endoscopic Videos},
  author={Nwoye, Chinedu Innocent and Yu, Tong and Gonzalez, Cristians and Seeliger, Barbara and Mascagni, Pietro and Mutter, Didier and Marescaux, Jacques and Padoy, Nicolas},
  journal={Medical Image Analysis},
  volume={78},
  pages={102433},
  year={2022}
}
  • For the CholecT45/CholecT50 Official Dataset Splits:
@article{nwoye2022data,
  title={Data Splits and Metrics for Benchmarking Methods on Surgical Action Triplet Datasets},
  author={Nwoye, Chinedu Innocent and Padoy, Nicolas},
  journal={arXiv preprint arXiv:2204.05235},
  year={2022}
}
  • For the Rendezvous or Attention Tripnet Baseline Models or any snippet of code from this repo:
@article{nwoye2021rendezvous,
  title={Rendezvous: Attention Mechanisms for the Recognition of Surgical Action Triplets in Endoscopic Videos},
  author={Nwoye, Chinedu Innocent and Yu, Tong and Gonzalez, Cristians and Seeliger, Barbara and Mascagni, Pietro and Mutter, Didier and Marescaux, Jacques and Padoy, Nicolas},
  journal={Medical Image Analysis},
  volume={78},
  pages={102433},
  year={2022}
}
  • For the Tripnet Baseline Model:
@inproceedings{nwoye2020recognition,
   title={Recognition of instrument-tissue interactions in endoscopic videos via action triplets},
   author={Nwoye, Chinedu Innocent and Gonzalez, Cristians and Yu, Tong and Mascagni, Pietro and Mutter, Didier and Marescaux, Jacques and Padoy, Nicolas},
   booktitle={International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI)},
   pages={364--374},
   year={2020},
   organization={Springer}
}
  • For the models presented @ CholecTriplet2021 Challenge:
@article{nwoye2022cholectriplet2021,
  title={CholecTriplet2021: a benchmark challenge for surgical action triplet recognition},
  author={Nwoye, Chinedu Innocent and Alapatt, Deepak and Vardazaryan, Armine ... Gonzalez, Cristians and Padoy, Nicolas},
  journal={arXiv preprint arXiv:2204.04746},
  year={2022}
}

This repo is maintained by CAMMA. Comments and suggestions on models are welcomed. Check this page for updates.