TY - BOOK AU - Bellocchio,Francesco AU - Borghese,N.Alberto AU - Ferrari,Stefano AU - Piuri,Vincenzo ED - SpringerLink (Online service) TI - 3D Surface Reconstruction: Multi-Scale Hierarchical Approaches SN - 9781461456322 AV - TA1637-1638 U1 - 006.6 23 PY - 2013/// CY - New York, NY PB - Springer New York, Imprint: Springer KW - Computer Science KW - Computer Communication Networks KW - Artificial intelligence KW - Computer vision KW - Image Processing and Computer Vision KW - Artificial Intelligence (incl. Robotics) KW - Information Systems Applications (incl. Internet) KW - Computer Imaging, Vision, Pattern Recognition and Graphics N1 - Introduction -- Scanner systems -- Reconstruction -- Surface fitting as a regression problem -- Hierarchical Radial Basis Functions Networks -- Hierarchical Support Vector Regression -- Conclusion N2 - 3D Surface Reconstruction: Multi-Scale Hierarchical Approaches presents methods to model 3D objects in an incremental way so as to capture more finer details at each step. The configuration of the model parameters, the rationale and solutions are described and discussed in detail so the reader has a strong understanding of the methodology. Modeling starts from data captured by 3D digitizers and makes the process even more clear and engaging. Innovative approaches, based on two popular machine learning paradigms, namely Radial Basis Functions and the Support Vector Machines, are also introduced. These paradigms are innovatively extended to a multi-scale incremental structure, based on a hierarchical scheme. The resulting approaches allow readers to achieve high accuracy with limited computational complexity, and makes the approaches appropriate for online, real-time operation. Applications can be found in any domain in which regression is required. 3D Surface Reconstruction: Multi-Scale Hierarchical Approaches is designed as a secondary text book or reference for advanced-level students and researchers in computer science. This book also targets practitioners working in computer vision or machine learning related fields UR - http://dx.doi.org/10.1007/978-1-4614-5632-2 ER -