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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Depth Estimation with Occlusion Modeling Using Light-Field Cameras
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Depth Estimation with Occlusion Modeling Using Light-Field Cameras

机译:使用光场相机进行遮挡建模的深度估计

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摘要

Light-field cameras have become widely available in both consumer and industrial applications. However, most previous approaches do not model occlusions explicitly, and therefore fail to capture sharp object boundaries. A common assumption is that for a Lambertian scene, a pixel will exhibit photo-consistency, which means all viewpoints converge to a single point when focused to its depth. However, in the presence of occlusions this assumption fails to hold, making most current approaches unreliable precisely where accurate depth information is most important - at depth discontinuities. In this paper, an occlusion-aware depth estimation algorithm is developed; the method also enables identification of occlusion edges, which may be useful in other applications. It can be shown that although photo-consistency is not preserved for pixels at occlusions, it still holds in approximately half the viewpoints. Moreover, the line separating the two view regions (occluded object versus occluder) has the same orientation as that of the occlusion edge in the spatial domain. By ensuring photo-consistency in only the occluded view region, depth estimation can be improved. Occlusion predictions can also be computed and used for regularization. Experimental results show that our method outperforms current state-of-the-art light-field depth estimation algorithms, especially near occlusion boundaries.
机译:光场相机已在消费和工业应用中广泛使用。但是,大多数以前的方法都没有明确地对遮挡建模,因此无法捕捉到清晰的对象边界。常见的假设是,对于朗伯场景,像素将显示出光一致性,这意味着当聚焦到其深度时,所有视点都会聚到单个点。但是,在存在遮挡的情况下,这种假设无法成立,这使得大多数当前方法在精确的深度信息最重要的地方(在深度不连续处)无法精确地可靠。本文提出了一种遮挡感知深度估计算法。该方法还能够识别遮挡边缘,这可能在其他应用中很有用。可以看出,尽管没有为遮挡像素保留光致一致性,但仍保持约一半的视点。此外,在空间域中,将两个视图区域(被遮挡的物体与遮挡物)分开的线的方向与遮挡边缘的方向相同。通过仅在被遮挡的视域中确保光一致性,可以改善深度估计。遮挡预测也可以计算并用于正则化。实验结果表明,我们的方法优于当前的最新光场深度估计算法,尤其是在遮挡边界附近。

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