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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A mean field annealing approach to accurate free form shape matching
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A mean field annealing approach to accurate free form shape matching

机译:平均场退火方法可实现精确的自由形状匹配

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The SoftAssign algorithm is an elegant free form shape matching algorithm. While its objective function can be interpreted as consisting of three desired terms: minimising a weighted sum of matching errors of combinations of all the points in the two free form shapes to be matched, equalising their weights (probabilities) of being real ones and also maximising the overlapping area between the free form shapes to be matched, the last term has no effect on the optimisation of the parameters of interest due to normalisation. In this paper, we reformulate the last two terms using the inequality about the geometric and algebraic averages and the sum of the powers of these probabilities. For the sake of computational efficiency, instead of considering combinations of all the points in the overlapping free form shapes to be matched, we employ the traditional closest point criterion to establish possible correspondences between the two overlapping free form shapes to be matched. The saddle point solution of the resulting objective function no longer yields a closed form solution to the parameters of interest. For easy computation, we then adopt a pseudo-linearisation method to linearise the first order derivative of the objective function, leading the parameters of interest to be tracked and estimated with a closed form solution. The parameters of interest are finally optimised using the efficient deterministic annealing scheme with the camera motion parameters estimated using the quaternion method in the weighted least squares sense. A comparative study based on both synthetic data and real images with partial overlap has shown that the proposed algorithm is promising for the automatic matching of overlapping 3D free form shapes subject to a large range of motions. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:SoftAssign算法是一种优雅的自由形式形状匹配算法。虽然其目标函数可以解释为由三个期望的项组成:最小化要匹配的两个自由形式形状中所有点的组合的匹配误差的加权总和,使它们的权重(概率)为实数,并且还最大化在要匹配的自由形状之间的重叠区域,由于归一化,最后一项对目标参数的优化没有影响。在本文中,我们使用关于几何和代数平均值的不等式以及这些概率的幂之和来重新表示最后两项。为了计算效率,我们没有考虑要匹配的重叠自由形式中所有点的组合,而是采用传统的最近点准则来建立要匹配的两个重叠自由形式之间的可能对应关系。所得目标函数的鞍点解不再产生关注参数的封闭形式解。为了便于计算,我们然后采用伪线性化方法来线性化目标函数的一阶导数,从而使用封闭形式的解决方案对目标参数进行跟踪和估计。最终,使用有效的确定性退火方案优化目标参数,并使用四元数方法在加权最小二乘意义上估计摄像机运动参数。基于合成数据和具有部分重叠的真实图像的比较研究表明,提出的算法有望在大范围的运动中自动匹配重叠的3D自由形状。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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