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Curve and surface reconstruction by using sequential Markov random fields (MRFs)

机译:使用顺序马尔可夫随机场(MRF)进行曲线和曲面重构

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The statistical approach using the coupled Markov random field (MRF) and the maximum a posteriori (MAP) estimate has been proposed in order to satisfy both the preservation of local discontinuities and the smoothing of continuous regions for reconstruction of derivative feature measurements and range data. However, this data reconstruction method has some very difficult problems that it is hard to obtain proper results by finding the global optimal solution correctly. Especially, if the ordinary iteration solutions are used for the noisy and rugged data, it is likely that the convergence happens to be at a local optimal solution depending upon the initial value, and the noise smoothing is insufficient or the edge parts are overslurred. To cope with the difficulties, we propose a recovery method that regards the MAP estimation itself as the basic process and do the computation iteratively while controlling smoothing by changing values of the MRF parameters according to some scheduling. The presented algorithm reduces failures because of the local optimization, and is respected to give better results of reconstruction. The applicability of the method has been verified by several reconstruction experiments.
机译:已经提出了使用耦合马尔可夫随机场(MRF)和最大后验(MAP)估计的统计方法,以便既满足局部不连续性的保留又满足连续区域的平滑化,以重建派生特征量度和范围数据。但是,这种数据重建方法存在一些非常困难的问题,即通过正确地找到全局最优解很难获得适当的结果。尤其是,如果将普通迭代解决方案用于嘈杂和粗糙的数据,则收敛可能恰好是取决于初始值的局部最优解决方案,并且噪声平滑度不足或边缘部分过于模糊。为了解决这些困难,我们提出了一种恢复方法,该方法将MAP估计本身作为基本过程,并且在根据某些调度通过更改MRF参数的值来控制平滑的同时进行迭代计算。所提出的算法减少了由于局部优化而引起的故障,并且被认为可以提供更好的重建结果。该方法的适用性已通过多次重建实验得到验证。

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