Signal modeling and detection using cone classes

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.

[1]  Benjamin Friedlander,et al.  Performance analysis of transient detectors based on a class of linear data transforms , 1992, IEEE Trans. Inf. Theory.

[2]  Edward J. Wegman,et al.  Statistical Signal Processing , 1985 .

[3]  T. W. Parks,et al.  Detection of Time-frequency Concentrated Transient Signals , 1993, Proceedings. IEEE International Symposium on Information Theory.

[4]  H. Trotter,et al.  Calculus of vector functions , 1962 .

[5]  L. Scharf,et al.  Statistical Signal Processing: Detection, Estimation, and Time Series Analysis , 1991 .

[6]  Thomas W. Parks,et al.  The Weyl correspondence and time-frequency analysis , 1994, IEEE Trans. Signal Process..

[7]  T.W. Parks,et al.  General cone classes for signal modeling and detection , 1995, Conference Record of The Twenty-Ninth Asilomar Conference on Signals, Systems and Computers.