针对摄像机位姿问题提出了一种加权线性方法,其关键思想是通过加权使经典线性方法的代数误差近似于重投影算法的几何误差,从而达到接近于最大似然估计(Levenberg.Marquardt简称ML)的精度.通过对经典DLT(directlineartransformation)算法和EPnP算法使用加权的方法,给出了加权DLT算法(WDLT)和加权EPnP算法(WEPnP).大量模拟数据和真实图像实验结果均表明,WDLT和WEPnP算法不仅能提高DLT和EPnP算法的精度,而且在深度较小的情况下优于Lu的非线性算法.
This paper presents a novel weighted linear method for the camera pose estimation. The key idea of this method is to replace the algebraic error in the classic linear method with the weighted algebraic error that closes the geometric error. The method provides a linear solution whose accuracy is close to the accuracy of an ML estimation. Based on the DLT (direct linear transformation) algorithm and EPnP algorithm, the weighted DLT (WDLT) and weighted EPnP (WEPnP) algorithms are obtained by using the weighted linear technique. Experimental results with simulative data and real images show that the WDLT and WEPnP algorithms remarkably outperform the DLT and EPnP algorithms and in the case of small depth ratio, both of them outperform the Lu's nonlinear algorithm.