International audienceIn this paper we present an approach combining a finite element method and a deep neural network to learn complex elastic deformations with the objective of providing augmented reality during hep-atic surgery. Derived from the U-Net architecture, our network is built entirely from physically-based simulations of a preoperative segmenta-tion of the organ. These simulations are performed using an immersed-boundary method, which offers several numerical and practical benefits, such as not requiring boundary-conforming volume elements. We perform a quantitative assessment of the method using synthetic and ex vivo patient data. Results show that the network is capable of solving the deformed state of the organ using only a ...
International audienceThis paper presents a method for real-time augmentation of vas- cular network ...
Purpose: The current study aimed to propose a Deep Learning (DL) and Augmented Reality (AR) based so...
The computational power and advantages of the Finite Element Method (FEM) are noticeable. When deali...
International audienceIn this paper we present an approach combining a finite element method and a d...
Many engineering applications require accurate numerical simulations of non-linear structures in rea...
Many engineering applications require accurate numerical simulations of non-linear structures in rea...
International audienceTo build an augmented view of an organ during surgery, it is essential to have...
This thesis addresses the problem soft tissue simulation for augmented reality applications in liver...
International audienceIntroductionIntraoperative navigation during liver resection remains difficult...
International audiencePurpose:Augmented reality can improve the outcome of hepatic surgeries, assumi...
Robotic patients show great potential for helping to improve medical palpation training, as they can...
Objectives Accurate reconstruction and visualisation of soft tissue deformation in real time is cruc...
International audienceThis paper presents a method for real-time augmented reality of internal liver...
International audienceIn this paper we introduce a method for augmenting the laparoscopic view durin...
International audienceThis paper presents a method for real-time augmentation of vas- cular network ...
Purpose: The current study aimed to propose a Deep Learning (DL) and Augmented Reality (AR) based so...
The computational power and advantages of the Finite Element Method (FEM) are noticeable. When deali...
International audienceIn this paper we present an approach combining a finite element method and a d...
Many engineering applications require accurate numerical simulations of non-linear structures in rea...
Many engineering applications require accurate numerical simulations of non-linear structures in rea...
International audienceTo build an augmented view of an organ during surgery, it is essential to have...
This thesis addresses the problem soft tissue simulation for augmented reality applications in liver...
International audienceIntroductionIntraoperative navigation during liver resection remains difficult...
International audiencePurpose:Augmented reality can improve the outcome of hepatic surgeries, assumi...
Robotic patients show great potential for helping to improve medical palpation training, as they can...
Objectives Accurate reconstruction and visualisation of soft tissue deformation in real time is cruc...
International audienceThis paper presents a method for real-time augmented reality of internal liver...
International audienceIn this paper we introduce a method for augmenting the laparoscopic view durin...
International audienceThis paper presents a method for real-time augmentation of vas- cular network ...
Purpose: The current study aimed to propose a Deep Learning (DL) and Augmented Reality (AR) based so...
The computational power and advantages of the Finite Element Method (FEM) are noticeable. When deali...