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AI-based ultrasound imaging simulator
Key Investigators
- Junichi Tokuda (BWH)
- Xihan Ma (WPI)
- Simon Leonard (JHU)
- Laura Connolly (Queen's)
- Haichong (Kai) Zhang (WPI)
Presenter location: In-person
Project Description
We will discuss strategies to integrate AI-based ultrasound imaging simulators in multiple platforms for medical robotics and IGT, including the Gazebo dynamic simulator and PLUS.
Demo video is available at GitHub
Objective
- Model Improve the model - make the simulated ultrasound image more realistic
- Architecture Explore the fast way to package the model into applications.
Approach and Plan
- Model improvement
- The current model doesn’t take account of tissue attenuation properties. Explore the use of CT segmentation data (or total segmentator).
- To use the neuron network to accelerate the computation speed. (The current version is physics-based)
- Architecture
- Create an independent library for CT-ultrasound conversion. This library takes a 2D resampled CT data that is aligned to the (virtual) ultrasound probe, and generate a corresponding simulated ultrasound image.
- Integration with existing platforms, including Gazebo, Slicer, PLUS (to be discussed with the community)
Progress and Next Steps
- Describe specific steps you have actually done.
Illustrations
No response
Background and References
No response