Monocular Depth Estimation Using Relative Depth Maps

Jae-Han Lee, Chang-Su Kim
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引用次数: 105

Abstract

We propose a novel algorithm for monocular depth estimation using relative depth maps. First, using a convolutional neural network, we estimate relative depths between pairs of regions, as well as ordinary depths, at various scales. Second, we restore relative depth maps from selectively estimated data based on the rank-1 property of pairwise comparison matrices. Third, we decompose ordinary and relative depth maps into components and recombine them optimally to reconstruct a final depth map. Experimental results show that the proposed algorithm provides the state-of-art depth estimation performance.
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使用相对深度图的单目深度估计
提出了一种利用相对深度图进行单目深度估计的新算法。首先,使用卷积神经网络,我们在不同的尺度上估计区域对之间的相对深度,以及普通深度。其次,基于两两比较矩阵的rank-1属性,从选择性估计的数据中恢复相对深度图。第三,将普通深度图和相对深度图分解为多个分量,并进行优化重组,重建最终深度图。实验结果表明,该算法具有较好的深度估计性能。
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