深度图估计从一个单一的视频序列

Tien-Ying Kuo, Cheng-Hong Hsieh, Yi-Chung Lo
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引用次数: 6

摘要

本文的目标是开发一种基于单视图视频序列的鲁棒深度估计方法。我们利用估计的初始深度建立参考深度,进一步获得可靠的深度信息,然后用时空滤波器对其进行细化。首先,我们使用自适应支持权重块匹配从连续视频帧中提取视差信息。用相机运动补偿视差,然后转换为初始估计的深度。在初始深度的基础上,可以建立两种深度图,即传播深度和光流深度。最后,采用投票合并的方法将这三幅深度图融合在一起,然后应用超像素分割和时空平滑滤波来改善无纹理区域的噪声深度估计。实验表明,该方法不需要像其他工作那样进行额外的预处理和耗时的迭代,可以获得视觉上满意且时间上一致的深度估计结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth map estimation from a single video sequence
The goal of this paper is to develop a robust depth estimation method from a single-view video sequence. We utilize an estimated initial depth to establish a reference depth for further obtaining the reliable depth information, and then it is refined with a temporal-spatial filter. At first, we use adaptive support-weight block matching to extract disparity information from consecutive video frames. The disparity is compensated with the camera motion and then transformed to the initially estimated depth. Based on the initial depth, two kinds of depth maps, the propagation depth and the optical flow depth can be established. Finally, these three depth maps are fused together by using voting merger, and then applied with the superpixel segmentation and a temporal-spatial smoothing filter to improve the noisy depth estimation in the textureless region. The experiments show that the proposed method could achieve visually pleasing and temporally consistent depth estimation results without additional pre-processing and time-consuming iterations as required in other works.
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