基于随机游走的多图像分割:准凸性结果和基于 GPU 的解决方案

Maxwell D Collins, Jia Xu, Leo Grady, Vikas Singh
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引用次数: 0

摘要

我们使用随机沃克(RW)分割作为核心分割算法,而不是迄今为止文献中采用的传统 MRF 方法,重新构建了 Cosegmentation 问题。我们的方法与之前的方法类似,也允许使用非参数模型进行 Cosegmentation 约束(即从 ≥ 2 幅图像中提取的对象之间必须保持一致)。然而,之前的几种非参数共同分割方法都有一个严重的局限性,即它们需要为每一对相似的像素添加一个辅助节点(或变量)(这实际上限制了这些方法只能描述那些具有高熵外观模型的物体)。相比之下,我们提出的模型完全消除了这种限制性的依赖关系--由此带来的改进相当显著。我们的模型还允许利用准凸性优化基于模型的分割方案,而不依赖于分割前景的比例。最后,我们展示了优化可以用稀疏矩阵上的线性代数运算来表示,这些运算很容易映射到 GPU 架构上。我们利用这一特殊结构为 Cosegmentation 提供了高度专业化的 CUDA 库,并报告了显示这些优势的实验结果。
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Random walks based multi-image segmentation: Quasiconvexity results and GPU-based solutions.

We recast the Cosegmentation problem using Random Walker (RW) segmentation as the core segmentation algorithm, rather than the traditional MRF approach adopted in the literature so far. Our formulation is similar to previous approaches in the sense that it also permits Cosegmentation constraints (which impose consistency between the extracted objects from ≥ 2 images) using a nonparametric model. However, several previous nonparametric cosegmentation methods have the serious limitation that they require adding one auxiliary node (or variable) for every pair of pixels that are similar (which effectively limits such methods to describing only those objects that have high entropy appearance models). In contrast, our proposed model completely eliminates this restrictive dependence -the resulting improvements are quite significant. Our model further allows an optimization scheme exploiting quasiconvexity for model-based segmentation with no dependence on the scale of the segmented foreground. Finally, we show that the optimization can be expressed in terms of linear algebra operations on sparse matrices which are easily mapped to GPU architecture. We provide a highly specialized CUDA library for Cosegmentation exploiting this special structure, and report experimental results showing these advantages.

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