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Signal modeling and detection using cone classes

机译:使用锥体类进行信号建模和检测

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摘要

A new signal model-the cone classes-is presented. These models include classical models such as subspaces but are more general and potentially more useful than some existing signal models. Examples of cone classes include time-frequency concentrated classes and subspaces with bounded mismatch. The maximum likelihood detector for a cone class of signals in the presence of Gaussian noise is derived, and a simple algorithm is suggested as a possible detector implementation. The detector is examined in the specific case of subspaces with bounded mismatch. It is shown that there are conditions under which this detector has a higher detection probability for fixed false alarm than that of a comparable subspace detector and energy detector.
机译:提出了一种新的信号模型-锥类。这些模型包括经典模型(例如子空间),但比某些现有信号模型更通用,并且可能更有用。锥体类的示例包括时频集中类和具有有限失配的子空间。推导了在存在高斯噪声的情况下针对信号锥类的最大似然检测器,并提出了一种简单的算法作为可能的检测器实现。在具有有限失配的子空间的特定情况下检查检测器。结果表明,在某些情况下,与固定子虚假探测器和能量探测器相比,该探测器对固定虚假警报的探测概率更高。

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