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Total Variation Minimization with Separable Sensing Operator

机译:可分离的感应器使总变化最小

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摘要

Compressed Imaging is the theory that studies the problem of image recovery from an under-determined system of linear measurements. One of the most popular methods in this field is Total Variation (TV) Minimization, known for accuracy and computational efficiency. This paper applies a recently developed Separable Sensing Operator approach to TV Minimization, using the Split Bregman framework as the optimization approach. The internal cycle of the algorithm is performed by efficiently solving coupled Sylvester equations rather than by an iterative optimization procedure as it is done conventionally. Such an approach requires less computer memory and computational time than any other algorithm published to date. Numerical simulations show the improved - by an order of magnitude or more - time vs. image quality compared to two conventional algorithms.
机译:压缩成像是研究不确定的线性测量系统中的图像恢复问题的理论。该领域最流行的方法之一是总变异(TV)最小化,以准确性和计算效率着称。本文将最近开发的可分离传感算子方法应用于电视最小化,并使用Split Bregman框架作为优化方法。该算法的内部循环是通过有效地求解耦合的Sylvester方程来执行的,而不是像通常那样通过迭代优化过程来执行的。与迄今为止发布的任何其他算法相比,这种方法所需的计算机内存和计算时间更少。数值模拟表明,与两种传统算法相比,图像质量相对于图像质量的改善时间提高了一个数量级或更多。

著录项

  • 来源
    《Image and signal processing》|2010年|p.86-93|共8页
  • 会议地点 Trois-Rivieres(CA);Trois-Rivieres(CA)
  • 作者单位

    United Technologies Research Center, 411 Silver Ln, MS 129-15, East Hartford. CT 06108, USA;

    United Technologies Research Center, 411 Silver Ln, MS 129-15, East Hartford. CT 06108, USA;

    United Technologies Research Center, 411 Silver Ln, MS 129-15, East Hartford. CT 06108, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 信息处理(信息加工);
  • 关键词

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