发明名称 METHOD AND APPARATUS FOR SIGNAL DETECTION, CLASSIFICATION, AND ESTIMATION FROM COMPRESSIVE MEASUREMENTS
摘要 <p>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 measure- ment 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.</p>
申请公布号 WO2007050593(A2) 申请公布日期 2007.05.03
申请号 WO2006US41454 申请日期 2006.10.25
申请人 WILLIAM MARSH RICE UNIVERSITY;BARANIUK, RICHARD, G.;DUARTE, MARCO, F.;DAVENPORT, MARK, A.;WAKIN, MICHAEL, B. 发明人 BARANIUK, RICHARD, G.;DUARTE, MARCO, F.;DAVENPORT, MARK, A.;WAKIN, MICHAEL, B.
分类号 H04L27/00 主分类号 H04L27/00
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