Application of Adaptive Hypergraph Model to Impulsive Noise Detection

Author(s):  
Soufiane Rital ◽  
Alain Bretto ◽  
Driss Aboutajdine ◽  
Hocine Cherifi
2021 ◽  
Vol 11 (21) ◽  
pp. 9870
Author(s):  
Yahui Wang ◽  
Wenxi Zhang ◽  
Zhou Wu ◽  
Xinxin Kong ◽  
Hongxin Zhang

Laser speech measurement is a new sound capture technology based on Laser Doppler Vibrometry (LDV). It avoids the need for contact, is easily concealed and is ideal for remote speech acquisition, which has led to its wide-scale adoption for military and security applications. However, lasers are easily affected by complex detection environments. Thus, speckle noise often appears in the measured speech, seriously affecting its quality and intelligibility. This paper examines all of the characteristics of impulsive noise in laser measured speech and proposes a novel automatic impulsive noise detection and removal method. This method first foregrounds noise using decorrelation based on a linear prediction (LP) model that improves the noise-to-signal ratio (NSR) of the measured signal. This makes it possible to detect the position of noise through a combination of the average short-time energy and kurtosis. The method not only precisely locates small clicks (with a duration of just a few samples), but also finds the location of longer bursts and scratches (with a duration of up to a hundred samples). The located samples can then be replaced by more appropriate samples whose coding is based on the LP model. This strategy avoids unnecessary processing and obviates the need to compromise the quality of the relatively large fraction of samples that are unaffected by speckle noise. Experimental results show that the proposed automatic speckle noise detection and removal method outperforms other related methods across a wide range of degraded audio signals.


Author(s):  
Liang Chang ◽  
◽  
Kun Tang ◽  
Huijuan Cui

2015 ◽  
Vol 101 (4) ◽  
pp. 723-730
Author(s):  
M. Guski ◽  
M. Vorländer

Author(s):  
Thiago Rodrigues Oliveira ◽  
Pedro Correia de Sa ◽  
Sergio Luis de Paula Barbosa ◽  
Moises Vidal Ribeiro ◽  
Cristiano Augusto Gomes Marques

2014 ◽  
Vol 556-562 ◽  
pp. 2783-2786
Author(s):  
Qing Hai Meng

For GPS measurement signal in aircraft experiment is often affected by transmission environment, and interfered with impulsive noise, hereby a SVD combined with wavelet neural network to detect and eliminate the impulsive noise method was proposed. The received GPS data is decomposed by SVD, and the decomposed component is acted as the input of wavelet neural network. Letts criterion is adopted to detect the impulsive noise according to the output residue error of the wavelet neural network. For the detection of the interference points of impulse noise, it can use wavelet network output to replace the measured value, so as to eliminate impulsive noise.


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