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Depth Super-Resolution via Joint Color-Guided Internal and External Regularizations

机译:通过内部和外部联合颜色引导的深度超分辨率

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Depth information is being widely used in many real-world applications. However, due to the limitation of depth sensing technology, the captured depth map in practice usually has much lower resolution than that of color image counterpart. In this paper, we propose to combine the internal smoothness prior and external gradient consistency constraint in graph domain for depth super-resolution. On one hand, a new graph Laplacian regularizer is proposed to preserve the inherent piecewise smooth characteristic of depth, which has desirable filtering properties. A specific weight matrix of the respect graph is defined to make full use of information of both depth and the corresponding guidance image. On the other hand, inspired by an observation that the gradient of depth is small except at edge separating regions, we introduce a graph gradient consistency constraint to enforce that the graph gradient of depth is close to the thresholded gradient of guidance. We reinterpret the gradient thresholding model as variational optimization with sparsity constraint. In this way, we remedy the problem of structure discrepancy between depth and guidance. Finally, the internal and external regularizations are casted into a unified optimization framework, which can be efficiently addressed by ADMM. Experimental results demonstrate that our method outperforms the state-of-the-art with respect to both objective and subjective quality evaluations.
机译:深度信息被广泛应用于许多实际应用中。然而,由于深度感测技术的限制,实际上,所捕获的深度图通常比彩色图像对应物具有更低的分辨率。本文提出将图域中的内部平滑度先验和外部梯度一致性约束相结合,以实现深度超分辨率。一方面,提出了一种新的图拉普拉斯正则化器,以保持深度固有的分段平滑特性,该特性具有理想的滤波特性。定义关系图的特定权重矩阵以充分利用深度信息和相应的引导图像。另一方面,受观察到的深度梯度较小(除了边缘分离区域)的启发,我们引入了图梯度一致性约束来强制深度图梯度接近引导的阈值梯度。我们将梯度阈值模型重新解释为具有稀疏约束的变分优化。这样,我们解决了深度和引导之间的结构差异问题。最后,将内部和外部正则化转换为统一的优化框架,ADMM可以有效地解决此问题。实验结果表明,在客观和主观质量评估方面,我们的方法均优于最新技术。

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