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Bryan Willimon, Steven Hickson, Ian Walker, and Stan Birchfield IROS 2012 Vila Moura, Algarve An Energy Minimization Approach to 3D Non- Rigid Deformable Surface Estimation Using RGBD Data
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We propose an algorithm that uses energy minimization to estimate the current configuration of a non-rigid object. Our approach relies on a 3D nonlinear energy minimization framework to solve for the configuration using a semi-implicit scheme. Overview
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Previous Related Work on Pose Estimation Elbrechter et al. (IROS 2011) compare a purely mathematical representation of the paper manifold with a soft-body-physics model and demonstrate the use of their visual tracking method. Bersch et al. (IROS 2011) describe a method to compute valid grasp poses on the cloth which accounts for deformability.
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The purpose of this approach is to minimize the energy equation of a mesh model that involves 4 terms: Smoothness term data Correspondence term Depth term Boundary term Energy Minimization Approach
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The purpose of this approach is to minimize the energy equation of a mesh model that involves 4 terms: Energy Minimization Approach
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Mesh Initialization Energy Minimization Approach
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Smoothness term Energy Minimization Approach
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Smoothness term Energy Minimization Approach
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data Correspondence term Energy Minimization Approach
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Depth term Energy Minimization Approach Front ViewTop View
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Boundary term Without BoundaryWith Boundary Energy Minimization Approach
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Experimental Results We captured RGBD video sequences of shirts and posters to test our proposed method’s ability to handle different non-rigid objects in a variety of scenarios. Four experiments were conducted: 1)Illustrating the contribution of the depth term 2)Illustrating the contribution of the boundary term 3)Partial self-occlusion 4)Textureless shirt sequence
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Experimental Results Illustrating the contribution of the depth term
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Experimental Results Illustrating the contribution of the boundary term
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Experimental Results Partial self-occlusion
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Experimental Results Textureless shirt sequence
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Conclusion We have presented an algorithm to estimate the 3D configuration of a non-rigid object through a video sequence using feature point correspondence, depth, and boundary information. The next step is to integrate this algorithm into a robotic system that can grasp and handle non-rigid objects in an unstructured environment.
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