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INFORMED SOURCE SEPARATION: A BAYESIAN TUTORIAL

机译:知情的来源分离:贝叶斯教程

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摘要

Source separation problems are ubiquitous in the physical sciences; any situation where signals are superimposed calls for source separation to estimate the original signals. In this tutorial I will discuss the Bayesian approach to the source separation problem. This approach has a specific advantage in that it requires the designer to explicitly describe the signal model in addition to any other information or assumptions that go into the problem description. This leads naturally to the idea of informed source separation, where the algorithm design incorporates relevant information about the specific problem. This approach promises to enable researchers to design their own high-quality algorithms that are specifically tailored to the problem at hand.
机译:在物理科学中,源分离问题无处不在。信号叠加的任何情况都要求信号源分离以估计原始信号。在本教程中,我将讨论贝叶斯方法来解决源分离问题。这种方法具有一个特殊的优势,因为它要求设计人员除问题描述中包含的任何其他信息或假设外,还明确地描述信号模型。这自然导致了信息源分离的想法,其中算法设计结合了有关特定问题的相关信息。这种方法有望使研究人员能够设计自己的高质量算法,专门针对当前问题进行定制。

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