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Temporally consistent dense depth map estimation via Belief Propagation

机译:通过信念传播的时间一致性密集深度图估计

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A method for estimating temporally and spatially consistent dense depth maps in multiple camera setups is presented which is important for reduction of perception artifacts in 3D displays. For this purpose, initially, depth estimation is performed for each camera with the piece-wise planarity assumption and Markov Random Field (MRF) based relaxation at each time instant independently. During the relaxation step, the consistency of depth maps for different cameras is also considered for the reliability of the models. Next, temporal consistency of the depth maps is achieved in two steps. In the first step, median filtering is applied for the static or background pixels, whose intensity levels are constant in time. Such an approach decreases the number of inconsistent depth values significantly. The second step considers the moving pixels and MRF formulation is updated by the additional information from the depth maps of the consequent frames through motion compensation. For the solution of the MRF formulation for both spatial and temporal consistency, Belief Propagation approach is utilized. The experiments indicate that the proposed method provide reliable dense depth map estimates both in spatial and temporal domains.
机译:提出了一种用于估计多个相机设置中的时间和空间上一致的密集深度图的方法,该方法对于减少3D显示中的感知伪影很重要。为此,首先,在每个时刻分别使用分段平面度假设和基于马尔可夫随机场(MRF)的松弛对每个摄像机执行深度估计。在松弛步骤中,出于模型的可靠性,还考虑了不同相机的深度图的一致性。接下来,分两个步骤实现深度图的时间一致性。第一步,对强度水平在时间上恒定的静态或背景像素应用中值滤波。这种方法显着减少了不一致深度值的数量。第二步考虑运动像素,并通过运动补偿通过后续帧的深度图中的附加信息更新MRF公式。对于空间和时间一致性的MRF公式的解决方案,使用了“信念传播”方法。实验表明,该方法在空间和时间域均提供了可靠的密集深度图估计。

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