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Multi-view stereo reconstruction and scene flow estimation with a global image-based matching score

机译:具有基于全局图像的匹配分数的多视图立体声重建和场景流估计

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摘要

We present a new variational method for multi-view stereovision and non-rigid three-dimensional motion estimation from multiple video sequences. Our method minimizes the prediction error of the shape and motion estimates. Both problems then translate into a generic image registration task. The latter is entrusted to a global measure of image similarity, chosen depending on imaging conditions and scene properties. Rather than intearating a matching measure computed independently at each surface point, our approach computes a global image-based matching score between the input images and the predicted images. The matching process fully handles projective distortion and partial occlusions. Neighborhood as well as global intensity information can be exploited to improve the robustness to appearance changes due to non-Lambertian materials and illumination changes, without any approximation of shape, motion or visibility. Moreover, our approach results in a simpler, more flexible, and more efficient implementation than in existing methods. The computation time on large datasets does not exceed thirty minutes on a standard workstation. Finally, our method is compliant with a hardware implementation with,graphics processor units. Our stereovision algorithm yields very good results on a variety of datasets including specularities and translucency. We have successfully tested our motion estimation algorithm on a very challenging multi-view video sequence of a non-rigid scene.
机译:我们提出了一种新的变分方法,用于从多个视频序列进行多视图立体视觉和非刚性三维运动估计。我们的方法最大程度地减少了形状和运动估计的预测误差。然后,这两个问题都转化为通用图像注册任务。后者委托给图像相似度的全局度量,该度量取决于成像条件和场景属性。我们的方法不是在每个表面点上独立计算匹配度量,而是计算输入图像和预测图像之间基于全局图像的匹配分数。匹配过程可以完全处理投射失真和部分遮挡。可以利用邻域以及全局强度信息来提高对由于非朗伯材料和照明变化引起的外观变化的鲁棒性,而无需对形状,运动或可见性进行任何近似处理。而且,与现有方法相比,我们的方法可实现更简单,更灵活,更高效的实现。在标准工作站上,大型数据集的计算时间不超过三十分钟。最后,我们的方法符合带有图形处理器单元的硬件实现。我们的立体视觉算法在各种数据集(包括镜面反射和半透明)上产生了非常好的结果。我们已经在非刚性场景的非常具有挑战性的多视图视频序列上成功测试了我们的运动估计算法。

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