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Multi-view 3D scene reconstruction using ant colony optimization techniques

机译:使用蚁群优化技术的多视图3D场景重建

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摘要

This paper presents a new method performing high-quality 3D object reconstruction of complex shapes derived from multiple, calibrated photographs of the same scene. The novelty of this research is found in two basic elements, namely: (i) a novel voxel dissimilarity measure, which accommodates the elimination of the lighting variations of the models and (ii) the use of an ant colony approach for further refinement of the final 3D models. The proposed reconstruction procedure employs a volumetric method based on a novel projection test for the production of a visual hull. While the presented algorithm shares certain aspects with the space carving algorithm, it is, nevertheless, first enhanced with the lightness compensating image comparison method, and then refined using ant colony optimization. The algorithm is fast, computationally simple and results in accurate representations of the input scenes. In addition, compared to previous publications, the particular nature of the proposed algorithm allows accurate 3D volumetric measurements under demanding lighting environmental conditions, due to the fact that it can cope with uneven light scenes, resulting from the characteristics of the voxel dissimilarity measure applied. Besides, the intelligent behavior of the ant colony framework provides the opportunity to formulate the process as a combinatorial optimization problem, which can then be solved by means of a colony of cooperating artificial ants, resulting in very promising results. The method is validated with several real datasets, along with qualitative comparisons with other state-of-the-art 3D reconstruction techniques, following the Middlebury benchmark.
机译:本文提出了一种执行高质量3D对象重构的新方法,该方法可从同一场景的多个校准照片中得出的复杂形状。这项研究的新颖性来自两个基本要素,即:(i)一种新颖的体素差异度量,可以消除模型的光照变化,以及(ii)使用蚁群方法进一步完善模型。最终的3D模型。拟议的重建程序采用一种基于新颖投影测试的容积法生产视觉船体。虽然本文提出的算法与空间雕刻算法具有某些共同点,但是首先要通过亮度补偿图像比较方法对其进行增强,然后使用蚁群优化算法对其进行完善。该算法速度快,计算简单,并且可以准确表示输入场景。此外,与以前的出版物相比,该算法的特殊性质允许在苛刻的照明环境条件下进行精确的3D体积测量,这是由于该算法可以应付由于所应用体素相异性度量的特性而导致的不均匀光照场景。此外,蚁群框架的智能行为提供了将过程表述为组合优化问题的机会,然后可以通过合作的人工蚁群来解决该问题,从而获得非常可喜的结果。遵循Middlebury基准测试,该方法已通过多个真实数据集以及与其他最新3D重建技术的定性比较进行了验证。

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