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首页> 外文期刊>Journal of visual communication & image representation >Guided filtering based data fusion for light field depth estimation with L_0 gradient minimization
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Guided filtering based data fusion for light field depth estimation with L_0 gradient minimization

机译:基于导引滤波的数据融合用于L_0梯度最小化的光场深度估计

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摘要

In this paper, we propose guided filtering based data fusion for light field depth estimation with L-0 gradient minimization. Stereo disparity produces good depth edge, while defocus response yields good depth information in homogeneous regions. We fuse stereo disparity and defocus response from light filed data in a guided filtering framework. In the guided filtering framework, we adopt L-0 gradient minimization as the regularization term instead of penalizing linear coefficients to consider depth characteristics that have similar depth in the same object. Moreover, we utilize edge direction in stereo matching to prevent the confusion caused by occlusion. Experimental results on both synthetic and real light field datasets show that the proposed method achieves clearer edge and less error in depth than state-of-the-arts.
机译:在本文中,我们提出了一种基于导引滤波的数据融合技术,用于以L-0梯度最小化进行光场深度估计。立体视差会产生良好的深度边缘,而散焦响应会在均匀区域产生良好的深度信息。我们在导引的过滤框架中融合了来自视场数据的立体视差和散焦响应。在引导滤波框架中,我们采用L-0梯度最小化作为正则化项,而不是对线性系数进行惩罚,以考虑在同一对象中具有相似深度的深度特征。此外,我们在立体匹配中利用边缘方向来防止遮挡引起的混淆。在合成和真实光场数据集上的实验结果表明,与最新技术相比,该方法可实现更清晰的边缘和更小的深度误差。

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