论文标题
深度图像使用核标准和学习图模型降级
Depth image denoising using nuclear norm and learning graph model
论文作者
论文摘要
当今的深度图像越来越多地成为热门研究主题,因为它们反映了三维(3D)场景,并且可以在计算机视觉的各个领域应用。但是从深度摄像机获得的深度图像通常包含污渍,例如噪声,这极大地损害了与深度相关的应用的性能。在本文中,考虑到基于群体的图像恢复方法在收集斑块之间的相似性方面更有效,因此提出了基于组的核标准和学习图(GNNLG)模型。对于每个补丁,我们在搜索窗口中找到并分组最相似的补丁。在我们的模型中利用了分组贴片的固有低级属性。此外,我们研究了多种学习方法,并设计了一种有效的优化学习策略,以获取图形拉普拉斯矩阵(反映了图像的拓扑结构),以进一步将平滑的先验施加到DeNo的深度图像上。为了达到快速速度和高收敛性,提出了乘数的交替方向方法(ADMM)来解决我们的GNNLG。实验结果表明,在主观和客观标准中,该提出的方法优于其他当前最新的denoising方法。
The depth images denoising are increasingly becoming the hot research topic nowadays because they reflect the three-dimensional (3D) scene and can be applied in various fields of computer vision. But the depth images obtained from depth camera usually contain stains such as noise, which greatly impairs the performance of depth related applications. In this paper, considering that group-based image restoration methods are more effective in gathering the similarity among patches, a group based nuclear norm and learning graph (GNNLG) model was proposed. For each patch, we find and group the most similar patches within a searching window. The intrinsic low-rank property of the grouped patches is exploited in our model. In addition, we studied the manifold learning method and devised an effective optimized learning strategy to obtain the graph Laplacian matrix, which reflects the topological structure of image, to further impose the smoothing priors to the denoised depth image. To achieve fast speed and high convergence, the alternating direction method of multipliers (ADMM) is proposed to solve our GNNLG. The experimental results show that the proposed method is superior to other current state-of-the-art denoising methods in both subjective and objective criterion.