Moving object detection and its associated background-foreground separation have been widely used in a lot of applications, including computer vision, transportation and surveillance. Due to the presence of the static background, a video can be naturally decomposed into a low-rank background and a sparse foreground. Many regularization techniques, such as matrix nuclear norm, have been imposed on the background. In the meanwhile, sparsity or smoothness based regularizations, such as total variation and $\ell_1$, can be imposed on the foreground. Moreover, graph Laplacians are further imposed to capture the complicated geometry of background images. Recently, weighted regularization techniques including the weighted nuclear norm regularization have been proposed in the image processing community to promote adaptive sparsity while achieving efficient performance. In this paper, we propose a robust dual-graph regularized moving object detection model based on the weighted nuclear norm regularization, which is solved by the alternating direction method of multipliers (ADMM). Numerical experiments on body movement data sets have demonstrated the effectiveness of this method in separating moving objects from background, and the great potential in robotic applications.
翻译:移动物体的探测及其相关的背景前景分野在很多应用中被广泛使用,包括计算机视觉、运输和监视。由于静态背景的存在,视频可以自然地分解成低层次背景和浅浅的前景。许多正规化技术,如矩阵核规范,已经强加在背景上。与此同时,可以对前景强加基于宽度或光滑的正规化,如全面变异和1美元等。此外,还进一步强制使用图解 Laplaceians来捕捉背景图像的复杂几何学。最近,在图像处理界提出了加权正规化技术,包括加权核规范规范正规化,以促进适应性弹性,同时实现高效性。在本文中,我们提出了一个基于加权核规范正规化的双面固定移动物体检测模型,该模型由倍数交替方向法(ADMMM)解决。关于身体移动数据集的数值实验证明了这一方法在将对象与背景分离方面的有效性,以及机器人应用的巨大潜力。