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Blind deconvolution by a Newton method on the non-unitary hypersphere

机译:非-超球面上的牛顿法盲反卷积

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Blind deconvolution is an inverse filtering technique that has received increasing attention from academia as well as industry because of its theoretical implications and practical applications, such as in speech dere-verberation, nondestructive testing and seismic exploration. An effective blind deconvolution technique is known as 'Bussgang', which relies on the iterative Bayesian estimation of the source sequence. Automatic gain control in blind deconvolution keeps constant the energy of the inverse filter impulse response and controls the magnitude of the estimated source sequence. The aim of the present paper is to introduce a class of Newton-type algorithms to optimize the Bussgang cost function on the inverse-filter parameter space whose geometrical structure is induced by the automatic-gain-control constraint. As the parameter space is a differentiable manifold, the Newton-like optimization method is formulated in terms of differential geometrical concepts. The present paper also discusses convergence issues related to the introduced Newton-type optimization algorithms and illustrates their performance on a comparative basis.
机译:盲反卷积是一种逆滤波技术,由于其理论意义和实际应用(例如在语音去混响,无损检测和地震勘探中的应用)而受到学术界和行业的越来越多的关注。一种有效的盲反卷积技术被称为“ Bussgang”,它依赖于源序列的迭代贝叶斯估计。盲解卷积中的自动增益控制使逆滤波器脉冲响应的能量保持恒定,并控制估计源序列的大小。本文的目的是介绍一类牛顿型算法,以在逆滤波器参数空间上优化其Bussgang成本函数,该参数空间的几何结构是由自动增益控制约束引起的。由于参数空间是可微的流形,因此牛顿式优化方法是根据微分几何概念制定的。本文还讨论了与引入的牛顿型优化算法有关的收敛问题,并在比较的基础上说明了它们的性能。

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