Signal detection, separation & classification under random noise background

Author(s):  
V. Kus ◽  
J. Tlaskal ◽  
Z. Farova ◽  
S. Dos Santos
2019 ◽  
Vol 67 (1) ◽  
pp. 109-121 ◽  
Author(s):  
Haitao Ma ◽  
Jie Yan ◽  
Yue Li ◽  
Chao Zhang ◽  
Hongbo Lin

1986 ◽  
Vol 19 (5) ◽  
pp. 491-493
Author(s):  
A.N. Yerokhin ◽  
I.V. Time

1955 ◽  
Vol 33 (1) ◽  
pp. 1-10 ◽  
Author(s):  
H. S. Heaps

A noise distributed in phase and power according to a Rayleigh law is studied in terms of its effect upon the detectability of a signal of similar phase and amplitude distribution. An expression is derived for the probability distribution of the ratio of the power of the signal plus noise to that of the noise in the absence of the signal. The corresponding result is given for the ratio of the averages over several observations. Also derived is the probability distribution of the fractional change in noise plus signal power due to a given fractional change in signal power.


2018 ◽  
Vol 619 ◽  
pp. A86 ◽  
Author(s):  
D. del Ser ◽  
O. Fors ◽  
J. Núñez

Context. There have been many efforts to correct systematic effects in astronomical light curves to improve the detection and characterization of planetary transits and astrophysical variability. Algorithms such as the trend filtering algorithm (TFA) use simultaneously-observed stars to measure and remove systematic effects, and binning is used to reduce high-frequency random noise. Aims. We present TFAW, a wavelet-based modified version of TFA. First, TFAW aims to increase the periodic signal detection and second, to return a detrended and denoised signal without modifying its intrinsic characteristics. Methods. We modified TFA’s frequency analysis step adding a stationary wavelet transform filter to perform an initial noise and outlier removal and increase the detection of variable signals. A wavelet-based filter was added to TFA’s signal reconstruction to perform an adaptive characterization of the noise- and trend-free signal and the underlying noise contribution at each iteration while preserving astrophysical signals. We carried out tests over simulated sinusoidal and transit-like signals to assess the effectiveness of the method and applied TFAW to real light curves from TFRM. We also studied TFAW’s application to simulated multiperiodic signals. Results. TFAW improves the signal detection rate by increasing the signal detection efficiency (SDE) up to a factor ∼2.5× for low S/R light curves. For simulated transits, the transit detection rate improves by a factor ∼2 − 5× in the low-S/R regime compared to TFA. TFAW signal approximation performs up to a factor ∼2× better than bin averaging for planetary transits. The standard deviations of simulated and real TFAW light curves are ∼40% better compared to TFA. TFAW yields better MCMC posterior distributions and returns lower uncertainties, less biased transit parameters and narrower (by approximately ten times) credibility intervals for simulated transits. TFAW is also able to improve the characterization of multiperiodic signals. We present a newly-discovered variable star from TFRM.


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