Projective non-negative matrix factorization for unsupervised graph clustering

C. Bampis, P. Maragos, A. Bovik
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引用次数: 8

Abstract

We develop an unsupervised graph clustering and image segmentation algorithm based on non-negative matrix factorization. We consider arbitrarily represented visual signals (in 2D or 3D) and use a graph embedding approach for image or point cloud segmentation. We extend a Projective Non-negative Matrix Factorization variant to include local spatial relationships over the image graph. By using properly defined region features, one can apply our method of unsupervised graph clustering for object and image segmentation. To demonstrate this, we apply our ideas on many graph based segmentation tasks such as 2D pixel and super-pixel segmentation and 3D point cloud segmentation. Finally, we show results comparable to those achieved by the only existing work in pixel based texture segmentation using Nonnegative Matrix Factorization, deploying a simple yet effective extension that is parameter free. We provide a detailed convergence proof of our spatially regularized method and various demonstrations as supplementary material. This novel work brings together graph clustering with image segmentation.
无监督图聚类的射影非负矩阵分解
提出了一种基于非负矩阵分解的无监督图聚类和图像分割算法。我们考虑任意表示的视觉信号(2D或3D),并使用图嵌入方法进行图像或点云分割。我们扩展了一个射影非负矩阵分解变体,以包括图像图上的局部空间关系。通过使用适当定义的区域特征,可以将我们的无监督图聚类方法应用于对象和图像分割。为了证明这一点,我们将我们的想法应用于许多基于图的分割任务,如2D像素和超像素分割以及3D点云分割。最后,我们展示了与使用非负矩阵分解的基于像素的纹理分割的唯一现有工作相媲美的结果,部署了一个简单而有效的无参数扩展。我们提供了空间正则化方法的详细收敛证明和各种证明作为补充材料。这项新颖的工作将图聚类与图像分割结合在一起。
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