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Minimum Entropy Blind Signal Deconvolution with Non Minimum Phase FIR Filters

机译:具有非最小阶段FIR滤波器的最小熵盲信号解卷积

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In the following paper we investigate two algorithms for blind signal deconvolution that has been proposed in the literature. We derive a clear interpretation of the information theoretic objective function in terms of signal processing and show that only one is appropriate to solve the deconvolution problem, while the other will only work if the unknown filter is constrained to be minimum phase. Moreover we argue that the blind deconvolution task is more sensitive to a mismatch of the density model than currently expected. While there exist theoretical arguments and practical evidence that blind signal separation requires only a rough approximation of the signal density this is not the case for blind signal deconvolution. We give a simple example that supports our argumentation and formulate a sufficiently adaptive density model to properly solve that problem.
机译:在下文中,我们研究了在文献中提出的盲信号折耦合的两种算法。我们在信号处理方面获得了对信息理论物目标函数的清晰解释,并显示只有一个适合解决解构问题,而另一个将仅在未知过滤器被约束为最小阶段时工作。此外,我们认为盲折叠任务比目前预期的密度模型不匹配更敏感。虽然存在理论争论和实际证据,但盲信号分离只需要信号密度的粗略近似,这不是盲信号解卷积的情况。我们给出了一个简单的例子,支持我们的论点,并制定了足够自适应的密度模型,以正确解决该问题。

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