Adaptive kernel design in the generalized marginals domain for time-frequency analysis

S. Krishnamachari, W. J. Williams
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引用次数: 12

Abstract

A signal-adaptive kernel designed in the generalized marginals(GM) domain is introduced. This new kernel exploits the mechanism by which the cross-terms are created in the GM domain. It is shown that the cross-terms are created by a simple squaring process and the region of support for the cross terms is a subset of the region of support of the auto-terms. The generalized marginals of the Wigner distribution (WD) are always positive and real. The generalized marginals of all distributions which have a radially Gaussian kernel in the ambiguity domain are positive. This positivity is exploited for applying information measures in the construction of the adaptive kernel. The cross-term suppression is done in the GM domain and the time-frequency distribution is constructed using the filtered back-projection method. Moyal's formula is utilized to calculate the GM as the projections of the signal on linear chirps.<>
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广义边际域的时频分析自适应核设计
介绍了一种在广义边际域设计的信号自适应核。这个新内核利用了在GM域中创建交叉项的机制。结果表明,交叉项由一个简单的平方过程生成,交叉项的支持区域是自动项支持区域的一个子集。Wigner分布(WD)的广义边际总是正实的。所有在模糊域具有径向高斯核的分布的广义边际都是正的。这种积极性被用于在自适应核的构造中应用信息度量。在GM域中进行交叉项抑制,并使用滤波后的反投影法构造时频分布。利用Moyal公式计算GM作为信号在线性啁啾上的投影。
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