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二次曲线拟合算法的统计性能分析与改进
引用本文:杨忠根,姜桂祥,陈红亮.二次曲线拟合算法的统计性能分析与改进[J].上海海事大学学报,2003,24(1):46-51.
作者姓名:杨忠根  姜桂祥  陈红亮
作者单位:上海海运学院,工学院,上海,200135
基金项目:上海市高等学校科学技术发展基金资助项目 ( 0 1G0 2 )
摘    要:传统的二次曲线拟合使用标准特征值分析算法。通过统计分析技术 ,可知该技术在拟合数字二次曲线时 ,存在估计偏差大、均方误差大的缺点。其产生原因是数据噪声的有色性和自相关函数矩阵的条件数过大 ,因此白化数据噪声和正则化变换是提高曲线拟合的有效措施。这从理论上有力地支持了Hartley提出的正则化算法。通过理论分析和计算机仿真实验 ,表明了降维EVD技术固有地同时具备噪声预白化功能和数据正则化功能 ,因此它能给出均方误差相当小的无偏估计。由于它无须进行预白化变换或正则化变换 ,并把最优化过程的维数从 6降为 2 ,所以它还具有计算快速、实现简单方便的优点。

关 键 词:计算机视觉  二次曲线拟合  特征值分解  正则化  降维特征值分解
文章编号:1000-5188(2003)01-0046-0006
修稿时间:2009年11月7日

Statistical Performance Analysis and Improvement of Conic Fitting Algorithm
YANG Zhong gen,JIANG Gui xiang,CHEN Hong liang.Statistical Performance Analysis and Improvement of Conic Fitting Algorithm[J].Journal of Shanghai Maritime University,2003,24(1):46-51.
Authors:YANG Zhong gen  JIANG Gui xiang  CHEN Hong liang
Abstract:The traditional procedure of conic fitting utilizes the standard Eigen Value Decomposition (EVD) algorithm. By means of the statistical analysis, we know that, when the technique is utilized to fit a digital conic, it has the disadvantages of very big estimation bias and mse. Its reason is that the data noise is not white and the condition number of the ACF matrix of the data observation is extremely big. Thus, the effective measure ment to improve the performance of a conic fitting algorithm is whitening the data noise and regulation transformation. This theoretic analysis has strongly supported the regularized EVD algorithm developed by Hartley. Then, we develop a dimension reduced EVD algorithm. The theoretical analysis and computer simulations have demonstrated that the technique has the advantages of intrinsical functions to whiten the data noise and to regulate the condition number of the ACF matrix of the data observation so that it can give a non biased estimation of conic parameter with very small mse. Furthermore, it has neither whitening transformation nor regulation transformation. At the same time, the dimension number of the optimization procedure is reduced from 6 to 2. Therefore the computation complex is largely simplified.
Keywords:computer vision  conic fitting  EVD  regulation  dimension  reduced EVD
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