Statistical Optimization for Geometric Fitting: Theoretical Accuracy Bound and High Order Error Analysis
作者:Kenichi Kanatani
摘要
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric models from noisy data. First, it is pointed out that parameter estimation for vision applications is very different in nature from traditional statistical analysis and hence a different mathematical framework is necessary. After a general framework is formulated, typical numerical techniques are selected, and their accuracy is evaluated up to high order terms. As a byproduct, our analysis leads to a “hyperaccurate” method that outperforms existing methods.
论文关键词:Geometric fitting, Parameter estimation, Error analysis, Hyperaccuracy, KCR lower bound
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论文官网地址:https://doi.org/10.1007/s11263-007-0098-0