IET Signal Processing
Volume 12, Issue 1, February 2018
Volumes & issues:
Volume 12, Issue 1
February 2018
-
- Author(s): Wenpeng Zhang ; Yaowen Fu ; Lei Nie ; Guanhua Zhao ; Wei Yang ; Jin Yang
- Source: IET Signal Processing, Volume 12, Issue 1, p. 1 –11
- DOI: 10.1049/iet-spr.2016.0504
- Type: Article
- + Show details - Hide details
-
p.
1
–11
(11)
Micro-range (m-R) signatures which are induced by micro-motion dynamics can be observed from range profiles, providing that the range resolution of radar is high enough. For real scenarios, micro-motion is often mixed with macro-motion (translation). To extract the micro-motion signatures, it is required to remove the macro-motion component. The widely employed range alignment technique fails for rigid-body targets with micro-motion, since the relative distances between different scattering centres on a rigid-body target are varying and it is unable to obtain a stable reference range profile. Thus, the extracted m-R signatures will be accompanied with residual macro-motion, which may lead to the degradation. However, this issue is often ignored in the research of m-R signatures extraction. In this work, by modelling the motions of scattering centres as the superimposition of a polynomial signal (represents macro-motion) and a sinusoidal signal (represents micro-motion), a micro-motion period estimation method based on high-order difference sequence is proposed. The property that the difference operation can decrease the order of polynomial signals while preserve sinusoidal signals with the same frequency enables the proposed method to extract m-R signatures in the presence of macro-motion. The effectiveness of the proposed method is validated by synthetic and measured radar data.
- Author(s): V.P. Ananthi ; P. Balasubramaniam ; P. Raveendran
- Source: IET Signal Processing, Volume 12, Issue 1, p. 12 –21
- DOI: 10.1049/iet-spr.2016.0538
- Type: Article
- + Show details - Hide details
-
p.
12
–21
(10)
In this study, a new fuzzy-based technique is introduced for denoising images corrupted by impulse noise. The proposed method is based on the intuitionistic fuzzy set (IFS), in which the degree of hesitation plays an important role. The degree of hesitation of the pixels is obtained from the values of memberships of the object and the background of the image. After minimising the obtained hesitation function, the IFS is constructed and the noisy pixels are detected outside the neighbourhood of mean intensity of the object and the background of an image. Denoised images are relatively analysed with five other methods: modified decision-based unsymmetric trimmed median filter, noise adaptive fuzzy switched median filter, adaptive fuzzy switching weighted average filter, adaptive weighted mean filter, iterative alpha trimmed mean filter. Performances of the proposed method along with these five state-of the-art methods are evaluated using a peak signal-to-noise ratio and error rate along with the time for computation. Experimentally, derived denoising method showed an improved performance than five other existing techniques in filtering noise in images due to the reduction of uncertainty while choosing the noisy pixels.
- Author(s): Lingfeng Liu ; Shidi Hao ; Jun Lin ; Ze Wang ; Xinyi Hu ; Suoxia Miao
- Source: IET Signal Processing, Volume 12, Issue 1, p. 22 –30
- DOI: 10.1049/iet-spr.2016.0584
- Type: Article
- + Show details - Hide details
-
p.
22
–30
(9)
Advanced in unpredictability, ergodicity and sensitivity to initial conditions and parameters, chaotic maps are widely used in modern image encryption algorithms. In this study, the authors propose a novel image block encryption algorithm based on several widely used chaotic maps. In their algorithm, the image blocking method is variable, and both shuffling and substitution algorithms are adopted based on different chaotic maps. Several simulations are provided to evaluate the performances of this encryption scheme. The results demonstrate that the proposed algorithm is with high security level and fast encryption speed, which can be competitive with some other recently proposed image encryption algorithms.
- Author(s): Guojun Jiang ; Xingpeng Mao ; Yongtan Liu
- Source: IET Signal Processing, Volume 12, Issue 1, p. 31 –36
- DOI: 10.1049/iet-spr.2016.0576
- Type: Article
- + Show details - Hide details
-
p.
31
–36
(6)
Root-MUSIC can be applied to uniform circular array (UCA) to achieve computationally efficient direction of arrival (DOA) estimation via beamspace transformation (BT). When the number of sensors of a UCA is small, the residual errors introduced by the BT will have significant values, resulting in performance degradation for DOA estimation. To solve this problem, an algorithm that enables the modification of the beamspace sample covariance matrix (BSCM) by considering the residual components is proposed. First, the residual components in the BSCM are calculated based on the initial DOAs estimated by the UCA root-MUSIC-based methods. Then the BSCM is modified by removing the undesirable terms. Finally, better DOA estimation performance is obtained by using the revised BSCM. The computational complexity and estimation error are derived. The significant advantages of the proposed algorithm are demonstrated by the simulation results.
- Author(s): Yong Yang ; Dongling Zhang ; Hua Peng
- Source: IET Signal Processing, Volume 12, Issue 1, p. 37 –41
- DOI: 10.1049/iet-spr.2016.0334
- Type: Article
- + Show details - Hide details
-
p.
37
–41
(5)
Paired carrier multiple access (PCMA) is one of the most common single-channel mixtures. It is still a great challenge to recover the transmitted bits from non-cooperative received PCMA signals, due to the high complexity of existing single-channel blind source separation (SCBSS) algorithms. Hence, a double-direction delayed-decision-feedback sequence estimation (DD-DDFSE) algorithm for non-causal high-order channel is proposed to realise the separation of PCMA signals. The proposed algorithm employs the Viterbi algorithm (VA) with low-order channel twice instead of conventional VA with high-order channel once. The symbols estimated by the initial VA are utilised to equalise the causal and non-causal taps of the channel beyond the trellis state in the second VA. The relationship between the decision-feedback error from the initial VA and the performance of the second VA is also derived. Compared with state-of-the-art maximum likelihood sequence estimation algorithms, DD-DDFSE algorithm can not only decrease the computation complexity but also improve the separation performance.
- Author(s): Yi Yu ; Haiquan Zhao ; Badong Chen
- Source: IET Signal Processing, Volume 12, Issue 1, p. 42 –50
- DOI: 10.1049/iet-spr.2017.0131
- Type: Article
- + Show details - Hide details
-
p.
42
–50
(9)
In order to improve the performances of recently presented improved normalised subband adaptive filter (INSAF) and proportionate INSAF algorithms for highly noisy system, this study proposes their set-membership versions by exploiting the theory of set-membership filtering. Apart from obtaining smaller steady-state error, the proposed algorithms significantly reduce the overall computational complexity. In addition, to further improve the steady-state performance for the algorithms, their smooth variants are developed by using the smoothed absolute subband output errors to update the step sizes. Simulation results in the context of acoustic echo cancellation have demonstrated the superiority of the proposed algorithms.
- Author(s): Vindheshwari P. Singh and Ajit K. Chaturvedi
- Source: IET Signal Processing, Volume 12, Issue 1, p. 51 –63
- DOI: 10.1049/iet-spr.2017.0054
- Type: Article
- + Show details - Hide details
-
p.
51
–63
(13)
In this study, the authors consider robust transceiver design for amplify-and-forward relay aided multiple-input multiple-output interference systems assuming direct transmitter–receiver links and imperfect channel state information (CSI). The imperfect CSI of each link consists of the estimated channel and the covariance matrix of the channel estimation error. The authors address two transceiver optimisation problems: one is minimising the sum of averaged mean squared error (MSE) at all the receivers and the other is minimising the maximum averaged MSE among all the receivers, both of which are subject to power constraints at the transmitter and relay nodes. The formulated sum-MSE minimisation and max-MSE minimisation based optimisation problems are non-convex with matrix variables and therefore a globally optimal solution is difficult to obtain. To solve these non-convex optimisation problems, they develop sub-optimal iterative algorithms based on alternating minimisation approach to jointly optimise the precoding matrices at the transmitter and relay nodes and the receiver filter matrices. Simulation results demonstrate the effectiveness of the proposed algorithms and their improved performance against CSI uncertainties at similar computational cost as the existing non-robust designs.
- Author(s): Xingwang Li ; Jingjing Li ; Lihua Li ; Liutong Du ; Jin Jin ; Di Zhang
- Source: IET Signal Processing, Volume 12, Issue 1, p. 64 –73
- DOI: 10.1049/iet-spr.2017.0078
- Type: Article
- + Show details - Hide details
-
p.
64
–73
(10)
Small cell networks (SCNs) have emerged as promising technologies to meet the data traffic demands for the future wireless communications. However, the benefits of SCNs are limited to their hard handovers between base stations (BSs). In addition, the interference is another challenging issue. To solve this problem, this study employs a cooperative transmission mechanism focusing on correlated Rician/Gamma fading channels with zero-forcing receivers. The analytical expressions for the achievable sum rate, symbol error rate and outage probability are derived, which are applicable to arbitrary Rician factors, correlation coefficients, the number of antennas, and remain tight across entire signal-to-noise ratios (SNRs). Asymptotic analyses at the high and low SNR regimes are carried out in order to further reveal the insights of the model parameters on the system performance. Monte-Carlo simulation results validate the correctness of their derivations. Numerical results indicate that the theoretical expressions provide sufficiently accurate approximation to simulated results.
- Author(s): Jesus Selva
- Source: IET Signal Processing, Volume 12, Issue 1, p. 74 –81
- DOI: 10.1049/iet-spr.2016.0509
- Type: Article
- + Show details - Hide details
-
p.
74
–81
(8)
The so-called non-uniform fast Fourier transform (NFFT) is a family of algorithms for efficiently computing the Fourier transform of finite-length signals, whenever the time or frequency grid is non-uniformly spaced. Among the five usual NFFT types, types 4 and 5 involve an inversion problem, and this makes them the most intensive computationally. The usual efficient methods for these last types are either based on a fast multipole (FM) or on an iterative conjugate gradient (CG) method. The purpose of this study is to present efficient methods for these type-4 and type-5 NFFTs in the one-dimensional case that just require three NFFTs of types 1 or 2 plus some additional fast Fourier transforms (FFTs). Fundamentally, they are based on exploiting the Lagrange formula structure. The proposed methods roughly provide a factor-ten improvement on the FM and CG alternatives in computational burden. The study includes several numerical examples in double precision, in which the proposed and the Gaussian elimination, CG and FM methods are compared, both in terms of round-off error and computational burden.
- Author(s): Tatiana Chakravorti ; Rajesh Kumar Patnaik ; Pradipta Kishore Dash
- Source: IET Signal Processing, Volume 12, Issue 1, p. 82 –94
- DOI: 10.1049/iet-spr.2016.0352
- Type: Article
- + Show details - Hide details
-
p.
82
–94
(13)
This study presents multi-scale morphological gradient filter (MSMGF) and short-time modified Hilbert transform (STMHT) techniques, respectively, to detect and classify multiclass power system disturbances in a distributed generation (DG)-based microgrid environment. The non-stationary power signal samples measured near the target DG's are processed through the proposed MSMGF and STMHT techniques, respectively, and some computations over them generates the target parameter sets. Depending on the complexity of the overlapping in the target attribute values for different disturbance patterns, fuzzy judgment tree structure is incorporated for multiclass event classification, which proves to be robust for most of the classes. In this regard, an extensive simulation on the proposed microgrid models, subjected to a number of multiclass disturbances has been performed in MATLAB/Simulink environment. The faster execution, lower computational burden, superior efficiency as well as better accuracy in multiclass power system disturbance classification by the proposed judgment tree-based MSMGF and STMHT techniques, respectively, as compared to some of the conventional techniques, is significantly illustrated in the performance evaluation section. Further, as illustrated in this section, the real-time capability of the proposed techniques has been verified in the hardware environment, where the results shown are satisfactory.
- Author(s): Rahul Kumar Vijay and Satyasai Jagannath Nanda
- Source: IET Signal Processing, Volume 12, Issue 1, p. 95 –103
- DOI: 10.1049/iet-spr.2016.0639
- Type: Article
- + Show details - Hide details
-
p.
95
–103
(9)
From the decades, due to the independent and Poisson nature of background seismicity, they are extensively used for hazard analysis, modelling of prediction phenomenon and also used for earthquake simulations. In this study, a tetra-stage cluster identification model is proposed for accurate estimation of background seismicity and triggered seismicity. The proposed method considers a seismic event's occurrence time, location, magnitude and depth information available in the given catalogue to classify the event as a background or aftershock. The model has flexible threshold parameters which can be tuned to a proper value according to the specific seismic zone to be analysed. It exploits the current seismic activities of the region by taking care the past samples of the region over last 25 years. The analyses of Japan, Himalaya and Taiwan catalogues are carried out using the proposed model. Superior results with the proposed model are achieved, compared with benchmark models by Nanda et al., Gardner–Knopoff and Uhrhammer et al. in terms of percentage of background seismicity, lambda plot and cumulative plot. The ergodicity present in the original seismic catalogue and catalogue after de-clustering are compared using Thirumalai-Mountain metric to justify the stationary and linearity.
- Author(s): Tang Tang ; Lijuan Jia ; Jian Lou ; Ran Tao ; Yue Wang
- Source: IET Signal Processing, Volume 12, Issue 1, p. 104 –112
- DOI: 10.1049/iet-spr.2016.0686
- Type: Article
- + Show details - Hide details
-
p.
104
–112
(9)
The problem of finite impulse response (FIR) filtering in errors-in-variables (EIV) system is studied. Due to the input noise, traditional recursive least-squares (RLS) algorithms are biased in EIV system. Most existing bias-compensated approaches are proposed in the case that both the input–output noises are white Gaussian random processes. However, taking account of the situation where the output is corrupted by coloured noise, there are rare existing algorithms work well. Two bias-compensated RLS algorithms with acceptable computational complexity are proposed, which can obtain unbiased real-time filtering in non-stationary system when the input noise is white while the output noise is coloured. Under the assumption that the input signal is a coloured process, linear prediction technique is used to estimate the sample of the input signal. Exploiting the statistical properties of the cross-correlation function between the least-squares error and the forward/backward prediction error, the input noise variance can be estimated and the bias can be compensated. Simulation results illustrate the good performance of the proposed algorithms.
- Author(s): Guimei Zheng and Dong Zhang
- Source: IET Signal Processing, Volume 12, Issue 1, p. 113 –118
- DOI: 10.1049/iet-spr.2017.0018
- Type: Article
- + Show details - Hide details
-
p.
113
–118
(6)
For polarimetric multi-input multi-output (MIMO) radar with spatially spread crossed-dipole, this article studies the problem of joint direction of arrival (DOA) and polarisation parameter estimation based on block-orthogonal matching pursuit (BOMP) algorithm. First, the signal model of polarimetric MIMO radar with spatially spread crossed-dipole is established, and then the covariance matrix of the received data is calculated. Using the relationship between polarisation parameter and DOA in the crossed-dipole, sparse dictionary matrix is constructed within only DOA parameter and it will be translated into a block sparse problem. Then, fast BOMP algorithm is used to estimate their support positions and their amplitudes. Last, DOA estimation is calculated by support positions and polarisation parameter is estimated by the amplitudes of the support positions. The proposed algorithm has three advantages. One is that overcomplete dictionary is constructed within only the DOA, which has a small computational complexity. Another one is that the problem of strong mutual coupling among collocated crossed-dipole is solved by using the spatially spread crossed-dipole. The last one is that the DOA and polarisation estimations can pair automatically without any additional processing. Computer simulation results demonstrate the effectiveness of the proposed algorithm.
- Author(s): Ting-An Chang ; Wei-Chen Liao ; Jar-Ferr Yang
- Source: IET Signal Processing, Volume 12, Issue 1, p. 119 –128
- DOI: 10.1049/iet-spr.2016.0550
- Type: Article
- + Show details - Hide details
-
p.
119
–128
(10)
With advances in three-dimension television (3DTV) technology, accurate depth information for 3DTV broadcasting has gained much attention recently. The depth map, either retrieved by stereo matching or captured by the RGB-D camera, is mostly with lower resolution and often with noisy or missing values than the texture frame. How to effectively utilise high-resolution texture image to enhance the corresponding depth map becomes an important and inevitable approach. In this study, the authors propose texture similarity-based hole filling, texture similarity-based depth enhancement and rotating counsel depth refinement to enhance the depth map. Thus, the proposed depth enhancement system could suppress the noise, fill the holes and sharpen the object edges simultaneously. Experimental results demonstrate that the proposed system provides a superior performance, especially around the object boundary comparing to the state-of-the-art depth enhancement methods.
- Author(s): Basheera M. Mahmmod ; Abd Rahman bin Ramli ; Sadiq H. Abdulhussain ; Syed Abdul Rahman Al-Haddad ; Wissam A. Jassim
- Source: IET Signal Processing, Volume 12, Issue 1, p. 129 –142
- DOI: 10.1049/iet-spr.2016.0449
- Type: Article
- + Show details - Hide details
-
p.
129
–142
(14)
Discrete orthogonal functions are important tools in digital signal processing. These functions received considerable attention in the last few decades. This study proposes a new set of orthogonal functions called discrete Krawtchouk–Tchebichef transform (DKTT). Two traditional orthogonal polynomials, namely, Krawtchouk and Tchebichef, are combined to form DKTT. The theoretical and mathematical frameworks of the proposed transform are provided. DKTT was tested using speech and image signals from a well-known database under clean and noisy environments. DKTT was applied in a speech enhancement algorithm to evaluate the efficient removal of noise from speech signal. The performance of DKTT was compared with that of standard transforms. Different types of distance (similarity index) and objective measures in terms of image quality, speech quality, and speech intelligibility assessments were used for comparison. Experimental tests show that DKTT exhibited remarkable achievements and excellent results in signal compression and speech enhancement. Therefore, DKTT can be considered as a new set of orthogonal functions for futuristic applications of signal processing.
Parameter estimation of micro-motion targets for high-range-resolution radar using high-order difference sequence
Impulse noise detection technique based on fuzzy set
Image block encryption algorithm based on chaotic maps
Reducing errors for root-MUSIC-based methods in uniform circular arrays
Single-channel blind source separation for paired carrier multiple access signals
Set-membership improved normalised subband adaptive filter algorithms for acoustic echo cancellation
Statistically robust transceiver design algorithms for relay aided multiple-input multiple-output interference systems
Performance analysis of cooperative small cell systems under correlated Rician/Gamma fading channels
Efficient type-4 and type-5 non-uniform FFT methods in the one-dimensional case
Detection and classification of islanding and power quality disturbances in microgrid using hybrid signal processing and data mining techniques
Tetra-stage cluster identification model to analyse the seismic activities of Japan, Himalaya and Taiwan
Adaptive EIV-FIR filtering against coloured output noise by using linear prediction technique
BOMP-based angle estimation with polarimetric MIMO radar with spatially spread crossed-dipole
Robust depth enhancement based on texture and depth consistency
Signal compression and enhancement using a new orthogonal-polynomial-based discrete transform
Most viewed content
Most cited content for this Journal
-
Parameter estimation algorithms for dynamical response signals based on the multi-innovation theory and the hierarchical principle
- Author(s): Ling Xu and Feng Ding
- Type: Article
-
Acoustic vector sensor: reviews and future perspectives
- Author(s): Jiuwen Cao ; Jun Liu ; Jianzhong Wang ; Xiaoping Lai
- Type: Article
-
Two-dimensional DOA estimation for L-shaped array with nested subarrays without pair matching
- Author(s): Yang-Yang Dong ; Chun-Xi Dong ; Ying-Tong Zhu ; Guo-Qing Zhao ; Song-Yang Liu
- Type: Article
-
Image super-resolution reconstruction using the high-order derivative interpolation associated with fractional filter functions
- Author(s): Deyun Wei
- Type: Article
-
Convolution and correlation theorems for the two-dimensional linear canonical transform and its applications
- Author(s): Qiang Feng and Bing-Zhao Li
- Type: Article