Lytro相机的成本感知深度图估计

Min-Jung Kim, Tae-Hyun Oh, In-So Kweon
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引用次数: 18

摘要

自商用光场相机问世以来,光场相机因其多功能而引起了计算机视觉和图像处理领域的广泛关注。它的大多数特殊功能都是基于估计的深度图,因此可靠的深度估计是至关重要的一步。然而,由于子孔径图像中存在噪声和较短的基线,真实光场相机的深度估计是一个具有挑战性的问题。提出了一种利用对焦信号和光场相机的深度图估计方法。我们将所有子孔径图像的成本按成本体积进行汇总,以减轻噪声影响。利用成本体积的效率,通过离散-连续优化快速实现成本感知深度估计。此外,我们分析了对应和焦点线索的每个属性,并利用它们来选择可靠的锚点。从锚点重建的初始深度图增强了收敛性。我们通过在Lytro相机获得的真实数据集上验证我们的方法,证明我们的方法优于最先进的方法。
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Cost-aware depth map estimation for Lytro camera
Since commercial light field cameras became available, the light field camera has aroused much interest from computer vision and image processing communities due to its versatile functions. Most of its special features are based on an estimated depth map, so reliable depth estimation is a crucial step. However, estimating depth on real light field cameras is a challenging problem due to noise and short baselines among sub-aperture images. We propose a depth map estimation method for light field cameras by exploiting correspondence and focus cues. We aggregate costs among all the sub-aperture images on cost volume to alleviate noise effects. With efficiency of the cost volume, cost-aware depth estimation is quickly achieved by discrete-continuous optimization. In addition, we analyze each property of correspondence and focus cues and utilize them to select reliable anchor points. A well reconstructed initial depth map from the anchors is shown to enhance convergence. We show our method outperforms the state-of-the-art methods by validating it on real datasets acquired with a Lytro camera.
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