This work is licensed under the Creative Commons Attribution 4.0 International License.
B.C. Li, T.Q. Peng, Z. Peng, Intelligent image processing technology, Beijing: Electronic industry press, 2014.LiB.C.PengT.Q.PengZ.BeijingElectronic industry press2014Search in Google Scholar
J. Astola, Fundamentals of nonlinear digital filtering, Boca Raton, U.S.A: CRC Press, 2017.AstolaJ.Boca Raton, U.S.ACRC Press2017Search in Google Scholar
Y.L. You, D. Kaveh, Fourth-order partial differential equations for noise removal, IEEE Trans. Image Processing 9 (2016) 1723–1730.YouY.L.KavehD.Fourth-order partial differential equations for noise removal, IEEE Trans920161723173010.1109/83.86918418262911Search in Google Scholar
J.Z. Wang, Image-Denoising Method Based on Daubechies Wavelet Transform and Median Filter, Journal of Wuhan Univertisy of Technology 23 (2015) 19–25.WangJ.Z.Image-Denoising Method Based on Daubechies Wavelet Transform and Median Filter2320151925Search in Google Scholar
J.S. Walker, Y.J. Chen, Image denoising using tree-based wavelet subband correlation and shrinkage, Optical Engineering 39 (2016) 715–836.WalkerJ.S.ChenY.J.Image denoising using tree-based wavelet subband correlation and shrinkage392016715836Search in Google Scholar
Z.L. Zhang, C.H. Zhao, X.D. Mei, The modern image processing technology and MATLAB, Beijing: People's posts and telecommunications publishing house 171 (2014).ZhangZ.L.ZhaoC.H.MeiX.D.BeijingPeople's posts and telecommunications publishing house1712014Search in Google Scholar
B.A. Thomas, J.J. Rodriguez, Wavelet-based color image denoising, IEEE International Conference on Image Processing Proceedings 2 (2017) 804–807.ThomasB.A.RodriguezJ.J.Wavelet-based color image denoising2201780480710.1109/ICIP.2000.899831Search in Google Scholar
H.L. Eng, K.K. Ma, Noise Adaptive Soft-Switching Median Filter, IEEE Trans. Image Processing 10 (2015), 242–251.EngH.L.MaK.K.Noise Adaptive Soft-Switching Median Filter, IEEE Trans10201524225110.1109/83.902289Search in Google Scholar
L.Z. Xia, J.X. Li, Digital image processing, Nanjing: Southeast university press (2018) 157–159.XiaL.Z.LiJ.X.NanjingSoutheast university press2018157159Search in Google Scholar
H.L. Li, Z.M. Zhang, Z.Q. Yi, The application of median filtering on image processing, Information Technology 28 (2015) 26–52.LiH.L.ZhangZ.M.YiZ.Q.The application of median filtering on image processing2820152652Search in Google Scholar
Q.Q. Ruan, Digital image processing. Beijing: Electronic industry press, 2016.RuanQ.Q.BeijingElectronic industry press2016Search in Google Scholar
A. Jalobeanu, L. Blanc-Feraud, J. Zerubia, Satellite image deconvolution using complex wavelet packets, IEEE International Conference on Image Processing Proceedings 3 (2017) 809–812.JalobeanuA.Blanc-FeraudL.ZerubiaJ.Satellite image deconvolution using complex wavelet packets3201780981210.1109/ICIP.2000.899579Search in Google Scholar
Z.Z. Zhen, P. Shen, X.H. Yang, Y.L. Wan, Wavelet transform and its application in the MATLAB tools, Beijing: Seismological Press, 2017.ZhenZ.Z.ShenP.YangX.H.WanY.L.BeijingSeismological Press2017Search in Google Scholar
J.Y. Wang, X.G. Zhou, Q.Z. Liao, A Mixed Noise Filter Based on Median-Fuzzy Technology, Journal of Electronics & Information Technology 27 (2018) 901–904.WangJ.Y.ZhouX.G.LiaoQ.Z.A Mixed Noise Filter Based on Median-Fuzzy Technology272018901904Search in Google Scholar
H.X. Ni, Q.D. Hu, A Method of Image De-Noising Based on Wavelet Domain Median Filter, Journal of Dalian Railway Institute 27 (2016) 35–38.NiH.X.HuQ.D.A Method of Image De-Noising Based on Wavelet Domain Median Filter2720163538Search in Google Scholar
Patidar S, Pachori R B, Garg N. Automatic diagnosis of septal defects based on tunable- Q, wavelet transform of cardiac sound signals [J]. Expert Systems with Applications, 2015, 42(7):3315–3326.PatidarSPachoriR BGargNAutomatic diagnosis of septal defects based on tunable- Q, wavelet transform of cardiac sound signals[J].20154273315332610.1016/j.eswa.2014.11.046Search in Google Scholar
Cao J, Zhang J, Wen Z, et al. Fabric defect inspection using prior knowledge guided least squares regression [J]. Multimedia Tools & Applications, 2017, 76(3):4141–4157.CaoJZhangJWenZFabric defect inspection using prior knowledge guided least squares regression[J].20177634141415710.1007/s11042-015-3041-3Search in Google Scholar
Ayad M, Chikouche D, Boukazzoula N, et al. Search of a robust defect signature in gear systems across adaptive Morlet wavelet of vibration signals [J]. Signal Processing Iet, 2014, 8(9):918–926.AyadMChikoucheDBoukazzoulaNSearch of a robust defect signature in gear systems across adaptive Morlet wavelet of vibration signals[J].20148991892610.1049/iet-spr.2013.0439Search in Google Scholar
Hu G H, Zhang G H, Wang Q H. Unsupervised defect detection in textiles based on Fourier analysis and wavelet shrinkage [J]. Applied Optics, 2015, 54(10):2963–80.HuG HZhangG HWangQ HUnsupervised defect detection in textiles based on Fourier analysis and wavelet shrinkage[J].2015541029638010.1364/AO.54.00296325967212Search in Google Scholar
Havale V, Narayanan S. Diagnosis of manufacturing defects in a gear pair using wavelet analysis of vibration and acoustic signals and an ANN-based inference technique [J]. Insight - Non-Destructive Testing and Condition Monitoring, 2014, 56(8):426–433(8).HavaleVNarayananSDiagnosis of manufacturing defects in a gear pair using wavelet analysis of vibration and acoustic signals and an ANN-based inference technique[J].2014568426433(8).10.1784/insi.2014.56.8.426Search in Google Scholar