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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >A Unified Scheme for Super-Resolution and Depth Estimation From Asymmetric Stereoscopic Video
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A Unified Scheme for Super-Resolution and Depth Estimation From Asymmetric Stereoscopic Video

机译:非对称立体视频的超分辨率和深度估计的统一方案

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摘要

Reconstructing a full-resolution stereoscopic video from an asymmetric stereoscopic video is a challenging task. The existing approaches require depth information, which imposes an additional challenge in data acquisition. In this paper, we propose a novel scheme that is capable of obtaining super-resolution and depth estimation simultaneously from an asymmetric stereoscopic video. The proposed scheme models the video super-resolution and stereo matching with a unified energy function. Then, we apply an alternating optimization method to minimize this energy function, which can be implemented with a two-step algorithm. In the first step we calculate the initial depth map by using a region-based cooperative optimization technique while considering the temporal consistency in video. In the second step we resolve the super-resolution problem under the guidance of the depth information. It is effective because each step benefits from the additional improvement over the previous step. We iteratively update the two steps until stable depth and super-resolution results are obtained. We have conducted a series of experiments on public stereoscopic video sequences to evaluate the performance of the proposed method. Both objective indexes and subjective visual comparisons verify that the proposed scheme can achieve satisfactory super-resolution results and high-quality depth map simultaneously. In particular, the subjective evaluation experiments on a 3-D monitor show that this scheme outperforms others and achieves the best visual sharpness.
机译:从非对称立体视频重构全分辨率立体视频是一项艰巨的任务。现有的方法需要深度信息,这在数据获取中带来了额外的挑战。在本文中,我们提出了一种能够从非对称立体视频同时获得超分辨率和深度估计的新颖方案。所提出的方案对具有统一能量函数的视频超分辨率和立体声匹配进行建模。然后,我们应用一种交替优化方法来最小化此能量函数,可以使用两步算法来实现。第一步,我们在考虑视频的时间一致性的同时,使用基于区域的协作优化技术来计算初始深度图。第二步,我们在深度信息的指导下解决超分辨率问题。之所以有效,是因为每个步骤都受益于上一步的额外改进。我们迭代更新这两个步骤,直到获得稳定的深度和超分辨率结果。我们对公共立体视频序列进行了一系列实验,以评估该方法的性能。客观指标和主观视觉比较均证明该方案可同时获得满意的超分辨率结果和高质量的深度图。特别是,在3-D监视器上进行的主观评估实验表明,该方案优于其他方案,并获得了最佳的视觉清晰度。

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