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Method and apparatus for signal detection, classification and estimation from compressive measurements

机译:用于根据压缩测量进行信号检测,分类和估计的方法和装置

摘要

The recently introduced theory of Compressive Sensing (CS) enables a new method for signal recovery from incomplete information (a reduced set of “compressive” linear measurements), based on the assumption that the signal is sparse in some dictionary. Such compressive measurement schemes are desirable in practice for reducing the costs of signal acquisition, storage, and processing. However, the current CS framework considers only a certain task (signal recovery) and only in a certain model setting (sparsity).;We show that compressive measurements are in fact information scalable, allowing one to answer a broad spectrum of questions about a signal when provided only with a reduced set of compressive measurements. These questions range from complete signal recovery at one extreme down to a simple binary detection decision at the other. (Questions in between include, for example, estimation and classification.) We provide techniques such as a “compressive matched filter” for answering several of these questions given the available measurements, often without needing to first reconstruct the signal. In many cases, these techniques can succeed with far fewer measurements than would be required for full signal recovery, and such techniques can also be computationally more efficient. Based on additional mathematical insight, we discuss information scalable algorithms in several model settings, including sparsity (as in CS), but also in parametric or manifold-based settings and in model-free settings for generic statements of detection, classification, and estimation problems.
机译:基于信号在某些字典中稀疏的假设,最近引入的压缩感测(CS)理论为从不完整信息中恢复信号提供了一种新方法(减少了“压缩”线性测量集)。实际上,这种压缩测量方案对于减少信号采集,存储和处理的成本是合乎需要的。但是,当前的CS框架仅考虑特定任务(信号恢复),并且仅考虑特定模型设置(稀疏性)。我们证明了压缩测量实际上是信息可伸缩的,从而可以回答有关信号的各种问题当仅提供一组减少的压缩测量值时。这些问题的范围从一个极端的完全信号恢复到另一个极端的简单二进制检测决策。 (介于两者之间的问题包括,例如,估计和分类。)我们提供了诸如“压缩匹配滤波器”之类的技术,这些技术可以在给定可用测量值的情况下回答其中的几个问题,而通常无需首先重建信号。在许多情况下,这些技术可以通过比完全信号恢复所需的测量少得多的测量获得成功,并且这种技术在计算上也可以更有效。基于更多的数学见解,我们讨论了几种模型设置中的信息可伸缩算法,包括稀疏性(如CS中),还讨论了基于参数或流形的设置以及无模型设置中关于检测,分类和估计问题的通用语句。 。

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