多视图几何参数估计的增强连续禁忌搜索

Guoqing Zhou, Qing Wang
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引用次数: 1

摘要

利用l_inty范数进行优化已成为解决多视点几何参数估计问题的有效方法。但随着测量数据量的增加,计算成本迅速增加。虽然已经提出了一些策略来提高l_inty优化的效率,但它仍然是一个开放的问题。本文提出了一种基于增强连续禁忌搜索(ECTS)框架的多视图几何通用参数估计方法。ECTS是人工智能领域的一种优化方法,它具有一种有趣的能力,即通过促进远离当前解的搜索,并不断降低陷入局部极小值的可能性,从而覆盖广泛的解空间。并以三角网为例,在ECTS、多样化和集约化的关键环节提出了相应的对策。并给出了保证搜索全局收敛概率为1的理论证明。实验结果表明,基于ECTS的方法能够有效地获得全局最优,特别是对于大尺度的参数。这种新的基于ECTS的算法可以应用于多视图几何的许多应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Continuous Tabu Search for Parameter Estimation in Multiview Geometry
Optimization using the L_infty norm has been becoming an effective way to solve parameter estimation problems in multiview geometry. But the computational cost increases rapidly with the size of measurement data. Although some strategies have been presented to improve the efficiency of L_infty optimization, it is still an open issue. In the paper, we propose a novel approach under the framework of enhanced continuous tabu search (ECTS) for generic parameter estimation in multiview geometry. ECTS is an optimization method in the domain of artificial intelligence, which has an interesting ability of covering a wide solution space by promoting the search far away from current solution and consecutively decreasing the possibility of trapping in the local minima. Taking the triangulation as an example, we propose the corresponding ways in the key steps of ECTS, diversification and intensification. We also present theoretical proof to guarantee the global convergence of search with probability one. Experimental results have validated that the ECTS based approach can obtain global optimum efficiently, especially for large scale dimension of parameter. Potentially, the novel ECTS based algorithm can be applied in many applications of multiview geometry.
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