Abstract: 
    
            
                    This paper proposes an efficient method to capture and augment highly elastic  
objects from a single view. 3D shape recovery from a monocular video sequence  
is an underconstrained problem and many approaches have been proposed to  
enforce constraints and re-solve the ambiguities. State-of-the art solutions  
enforce smoothness or geometric constraints, consider specific deformation  
properties such as inextensibility or ressort to shading constraints.  
However, few of them can handle properly large elastic deformations. We  
propose in this paper a real-time method which makes use of a mechanical  
model and is able to handle highly elastic objects. Our method is formulated  
as a energy minimization problem accounting for a non-linear elastic model  
constrained by external image points acquired from a monocular camera. This  
method prevents us from formulating restrictive assumptions and specific  
constraint terms in the minimization. The only parameter involved in the  
method is the Young’s modulus but we show in experiments that a rough  
estimate of the Young’s modulus is sufficient to obtain a good  
reconstruction. Our method is compared to existing techniques with  
experiments conducted on computer-generated and real data that show the  
effectiveness of our approach. Experiments in the context of minimally  
invasive liver surgery are also provided.