首页> 外文会议>Conference on Advanced Signal Processing Algorithms, Architectures, and Implementations XIII; Aug 6-8, 2003; San Diego, California, USA >Construction of signal-dependent Cohen's-class time-frequency distributions using iterative blind deconvolution
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Construction of signal-dependent Cohen's-class time-frequency distributions using iterative blind deconvolution

机译:迭代盲反卷积构造依赖信号的Cohen级时频分布

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The problem of kernel design for Cohen time-frequency distributions is formulated as a blind deconvolution problem. It is shown that the iterative blind deconvolution method (IBDM) used in image restoration problems can be successfully applied to solve the kernel design problem. We obtain the following results: (1) the rate of convergence depends on which domains the constraints are imposed (2) certain constraints are needed for algorithm convergence (3) the more constrained the kernel design is, the faster the rate of convergence (4) there are tradeoffs between constraints, e.g., compact support vs. satisfaction of marginals; (5) time-frequency distributions which are more amenable to visual interpretation can be obtained using this algorithm.
机译:将针对Cohen时频分布的内核设计问题表述为盲反卷积问题。结果表明,用于图像恢复问题的迭代盲反卷积方法(IBDM)可以成功地应用于解决内核设计问题。我们得到以下结果:(1)收敛速度取决于施加约束的域(2)算法收敛需要某些约束(3)内核设计越受约束,收敛速度就越快(4 )在约束之间需要权衡,例如紧凑的支持与边际的满意度; (5)使用该算法可以获得更易于视觉解释的时频分布。

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