Parameter Estimation of Linear FM Signals Embedded in White Gaussian Noise
نویسنده
چکیده
The subject of parameter estimation in linear FM signals embedded in White Gaussian Noise has been extensively studied. This paper will present an accurate means of estimating the unknown initial frequency f0 and frequency sweep rate m for a sinusoidal signal. Experimental results from an arbitrary signal will also be presented.
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