Literature DB >> 22629108

A Physics-driven Neural Networks-based Simulation System (PhyNNeSS) for multimodal interactive virtual environments involving nonlinear deformable objects.

Suvranu De1, Dhannanjay Deo, Ganesh Sankaranarayanan, Venkata S Arikatla.   

Abstract

BACKGROUND: While an update rate of 30 Hz is considered adequate for real time graphics, a much higher update rate of about 1 kHz is necessary for haptics. Physics-based modeling of deformable objects, especially when large nonlinear deformations and complex nonlinear material properties are involved, at these very high rates is one of the most challenging tasks in the development of real time simulation systems. While some specialized solutions exist, there is no general solution for arbitrary nonlinearities.
METHODS: In this work we present PhyNNeSS - a Physics-driven Neural Networks-based Simulation System - to address this long-standing technical challenge. The first step is an off-line pre-computation step in which a database is generated by applying carefully prescribed displacements to each node of the finite element models of the deformable objects. In the next step, the data is condensed into a set of coefficients describing neurons of a Radial Basis Function network (RBFN). During real-time computation, these neural networks are used to reconstruct the deformation fields as well as the interaction forces.
RESULTS: We present realistic simulation examples from interactive surgical simulation with real time force feedback. As an example, we have developed a deformable human stomach model and a Penrose-drain model used in the Fundamentals of Laparoscopic Surgery (FLS) training tool box.
CONCLUSIONS: A unique computational modeling system has been developed that is capable of simulating the response of nonlinear deformable objects in real time. The method distinguishes itself from previous efforts in that a systematic physics-based pre-computational step allows training of neural networks which may be used in real time simulations. We show, through careful error analysis, that the scheme is scalable, with the accuracy being controlled by the number of neurons used in the simulation. PhyNNeSS has been integrated into SoFMIS (Software Framework for Multimodal Interactive Simulation) for general use.

Entities:  

Year:  2011        PMID: 22629108      PMCID: PMC3357955          DOI: 10.1162/pres_a_00054

Source DB:  PubMed          Journal:  Presence (Camb)        ISSN: 1054-7460


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6.  Hybrid network architecture for interactive multi-user surgical simulator with scalable deformable models.

Authors:  Ganesh Sankaranarayanan; Dhanannjay Deo; Suvranu De
Journal:  Stud Health Technol Inform       Date:  2009

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10.  CAD-based graphical computer simulation in endoscopic surgery.

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  2 in total

1.  A physics-based algorithm for real-time simulation of electrosurgery procedures in minimally invasive surgery.

Authors:  Zhonghua Lu; Venkata S Arikatla; Zhongqing Han; Brian F Allen; Suvranu De
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Review 2.  Surgical model-view-controller simulation software framework for local and collaborative applications.

Authors:  Anderson Maciel; Ganesh Sankaranarayanan; Tansel Halic; Venkata Sreekanth Arikatla; Zhonghua Lu; Suvranu De
Journal:  Int J Comput Assist Radiol Surg       Date:  2010-08-17       Impact factor: 2.924

  2 in total

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