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Recovering depth from images using adaptive depth from focus

机译:使用自适应焦点深度从图像中恢复深度

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Depth estimation from a sequence of images is a challenging problem in computer vision research. One of the well-known solutions is the depth from focus. However, the drawbacks of this method are the tradeoff between spatial resolution and robustness, and failure in textureless regions. In this paper, a novel approach of depth from focus with multiple images is proposed to improve the two shortcomings. By employing the mean shift segmentation before the step of building Markov random field, the result of segmentation serves as adaptive window for DFF. The edges of the recovered depth map are guaranteed to align with the edges of the original image. After the initial estimation of depth, the hierarchical Markov random field is generated to expand the area to extract depth information according to the structure of the scene. In this way, the experiments show that depth can extract from the textureless regions to some extent.
机译:在计算机视觉研究中,从图像序列进行深度估计是一个具有挑战性的问题。众所周知的解决方案之一就是聚焦深度。但是,这种方法的缺点是在空间分辨率和鲁棒性之间的权衡,以及在无纹理区域中的失败。在本文中,提出了一种新颖的从焦点到多个图像的深度方法,以改善这两个缺点。通过在建立马尔可夫随机场的步骤之前采用平均移位分割,分割的结果可作为DFF的自适应窗口。保证恢复的深度图的边缘与原始图像的边缘对齐。在初步估计深度之后,根据场景的结构,生成分层的马尔可夫随机场以扩展区域以提取深度信息。这样,实验表明深度可以在一定程度上从无纹理区域提取。

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