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Third International Symposium on 3D Data Processing, Visualization, and Transmission (3DPVT'06)
Shape Measure for Identifying Perceptually Informative Parts of 3D Objects
University of North Carolina, Chapel Hill, USA
June 14-June 16
ISBN: 0-7695-2825-2
Sreenivas Sukumar, The University of Tennessee, USA
David Page, University of Alabama in Huntsville, USA
Andrei Gribok, University of Alabama in Huntsville, USA
Andreas Koschan, University of Alabama in Huntsville, USA
Mongi Abidi, University of Alabama in Huntsville, USA
We propose a mathematical approach for quantifying shape complexity of 3D surfaces based on perceptual principles of visual saliency. Our curvature variation measure (CVM), as a 3D feature, combines surface curvature and information theory by leveraging bandwidth-optimized kernel density estimators. Using a part decomposition algorithm for digitized 3D objects, represented as triangle meshes, we apply our shape measure to transform the low level mesh representation into a perceptually informative form. Further, we analyze the effects of noise, sensitivity to digitization, occlusions, and descriptiveness to demonstrate our shape measure on laser-scanned real world 3D objects.
Citation:
Sreenivas Sukumar, David Page, Andrei Gribok, Andreas Koschan, Mongi Abidi, "Shape Measure for Identifying Perceptually Informative Parts of 3D Objects," 3dpvt, pp.679-686, Third International Symposium on 3D Data Processing, Visualization, and Transmission (3DPVT'06), 2006
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