Occlusion handling in spatio-temporal object-based image sequence matching

S. Nietiedt, P. Helmholz, T. Luhmann
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Abstract

Abstract. Dynamic photogrammetry is an established method for acquiring 3D information of deforming objects or dynamic scenes in various close-range applications. A crucial impact has occlusions caused by object deformations, obstacles or camera movements. Temporal occlusions are highly application-specific and sometimes difficult to predict, resulting in a significant reduction of reconstruction quality or the aborting of image sequence processing. Previous approaches usually model such occlusions as semantic information and consider them using image masks. However, generating these image masks requires complex methods and extensive training data. Due to the unpredictability of the complexity and movements of dynamic scenes, generating training data is challenging in many applications. Therefore, this paper proposes an alternative modelling approach, which can be part of a spatio-temporal matching process. Based on the characteristic high redundancy, occlusions can be detected using robust estimation methods and considered in the optimisation. Therefore, no information about the occlusions and further processing steps are necessary. We evaluate our approach with synthetic and real data of an industrial application regarding the accuracy and ability to detect occlusion simultaneously. The evaluation of the proposed approach shows that the impact of occlusion can be eliminated, and the quality of the results is comparable to conventional methods.
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基于时空对象的图像序列匹配中的遮挡处理
摘要动态摄影测量是在各种近距离应用中获取变形物体或动态场景三维信息的一种成熟方法。物体变形、障碍物或相机移动造成的遮挡是一个重要影响因素。时间遮挡具有很强的应用针对性,有时很难预测,从而导致重建质量大大降低或图像序列处理中止。以往的方法通常将这种遮挡作为语义信息建模,并使用图像掩码来考虑它们。然而,生成这些图像掩码需要复杂的方法和大量的训练数据。由于动态场景的复杂性和运动的不可预测性,生成训练数据在许多应用中都具有挑战性。因此,本文提出了一种可作为时空匹配过程一部分的替代建模方法。基于高冗余度的特点,可以使用鲁棒估计方法检测遮挡物,并在优化过程中加以考虑。因此,不需要闭塞信息和进一步的处理步骤。我们使用工业应用中的合成数据和真实数据对我们的方法进行了评估,以确定其准确性和同时检测遮挡的能力。对建议方法的评估表明,可以消除遮挡的影响,而且结果的质量与传统方法相当。
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