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Variational Fusion of Time-of-Flight and Stereo Data for Depth Estimation Using Edge-Selective Joint Filtering

机译:使用边缘选择联合滤波对飞行时间和立体声数据进行深度融合的深度估计

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摘要

In this paper, we propose variational fusion of time-of-flight (TOF) and stereo data for depth estimation using edge-selective joint filtering (ESJF). ESJF is able to adaptively select edges for depth upsampling from the TOF depth map, stereo matching-based disparity map, and stereo images. We adopt ESJF to produce high-resolution (HR) depth maps with accurate edge information from low-resolution ones captured by the TOF camera. First, we measure confidences of TOF and stereo data based on a Gaussian function to be used as fusion weights. Then, we upsample the TOF depth map using ESJF and extract vertical and horizontal discontinuity maps from it. Finally, we perform variational fusion of TOF and stereo depth data guided by the discontinuity maps. Experimental results show that the proposed method successfully produces HR depth maps and outperforms the state of the art in preserving edges and removing noise.
机译:在本文中,我们提出了使用边缘选择性联合滤波(ESJF)对飞行时间(TOF)和立体数据进行深度融合的深度融合估计。 ESJF能够从TOF深度图,基于立体匹配的视差图和立体图像中自适应选择边缘以进行深度向上采样。我们采用ESJF来生成高分辨率(HR)深度图,并从TOF摄像机捕获的低分辨率图像中获取准确的边缘信息。首先,我们基于高斯函数测量TOF和立体声数据的置信度,以用作融合权重。然后,我们使用ESJF对TOF深度图进行上采样,并从中提取垂直和水平不连续图。最后,我们在不连续图的指导下进行TOF和立体深度数据的变体融合。实验结果表明,该方法能够成功生成HR深度图,并且在保留边缘和去除噪声方面优于现有技术。

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