...
首页> 外文期刊>IEEE Transactions on Signal Processing >Greedy Sampling of Graph Signals
【24h】

Greedy Sampling of Graph Signals

机译:图形信号的贪婪采样

获取原文
获取原文并翻译 | 示例

摘要

Sampling is a fundamental topic in graph signal processing, having found applications in estimation, clustering, and video compression. In contrast to traditional signal processing, the irregularity of the signal domain makes selecting a sampling set nontrivial and hard to analyze. Indeed, though conditions for graph signal interpolation from noiseless samples exist, they do not lead to a unique sampling set. The presence of noise makes choosing among these sampling sets a hard combinatorial problem. Although greedy sampling schemes are commonly used in practice, they have no performance guarantee. This work takes a twofold approach to address this issue. First, universal performance bounds are derived for the Bayesian estimation of graph signals from noisy samples. In contrast to currently available bounds, they are not restricted to specific sampling schemes and hold for any sampling sets. Second, this paper provides near-optimal guarantees for greedy sampling by introducing the concept of approximate submodularity and updating the classical greedy bound. It then provides explicit bounds on the approximate supermodularity of the interpolation mean-square error showing that it can be optimized with worst case guarantees using greedy search even though it is not supermodular. Simulations illustrate the derived bound for different graph models and show an application of graph signal sampling to reduce the complexity of kernel principal component analysis.
机译:采样是图形信号处理中的一个基本主题,已在估计,聚类和视频压缩中找到了应用。与传统的信号处理相比,信号域的不规则性使得选择采样集变得不平凡且难以分析。实际上,尽管存在从无噪声样本中进行图形信号内插的条件,但它们并不会导致唯一的采样集。噪声的存在使得在这些采样集中进行选择成为一个困难的组合问题。尽管在实践中通常使用贪婪采样方案,但是它们并不能保证性能。这项工作采用双重方法来解决此问题。首先,从噪声样本中得出图形信号的贝叶斯估计的通用性能界限。与当前可用的边界相反,它们不限于特定的采样方案,并且适用于任何采样集。其次,本文通过引入近似子模态的概念并更新经典贪婪边界为贪婪采样提供了近乎最优的保证。然后,它为插值均方误差的近似超模块化提供了明确的界限,显示出即使不是超模块化,也可以使用贪婪搜索以最坏情况的保证对它进行优化。仿真说明了不同图形模型的导出边界,并显示了图形信号采样的应用,以减少内核主成分分析的复杂性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号