Tách nguồn âm thanh sử dụng mô hình phổ nguồn tổng quát trên cơ sở thừa số hoá ma trận không âm

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MINISTRY OF EDUCATION AND TRAINING HANOI UNIVERSITY OF SCIENCE AND TECHNOLOGY DUONG THI HIEN THANH AUDIO SOURCE SEPARATION EXPLOITING NMFBASED GENERIC SOURCE SPECTRAL MODEL DOCTORAL DISSERTATION OF COMPUTER SCIENCE Hanoi - 2019 MINISTRY OF EDUCATION AND TRAINING HANOI UNIVERSITY OF SCIENCE AND TECHNOLOGY DUONG THI HIEN THANH AUDIO SOURCE SEPARATION EXPLOITING NMFBASED GENERIC SOURCE SPECTRAL MODEL Major: Computer Science Code: 9480101 DOCTORAL DISSERTATION OF COMPUTER SCIENCE SUPERVISORS: ASSOC PROF DR NGUYEN QUOC CUONG DR NGUYEN CONG PHUONG Hanoi - 2019 DECLARATION OF AUTHORSHIP I, Duong Thi Hien Thanh, hereby declare that this thesis is my original work and it has been written by me in its entirety I confirm that: • This work was done wholly during candidature for a Ph.D research degree at Hanoi University of Science and Technology • Where any part of this thesis has previously been submitted for a degree or any other qualification at Hanoi University of Science and Technology or any other institution, this has been clearly stated • Where I have consulted the published work of others, this is always clearly attributed • Where I have quoted from the work of others, the source is always given With the exception of such quotations, this thesis is entirely my own work • I have acknowledged all main sources of help • Where the thesis is based on work done by myself jointly with others, I have made exactly what was done by others and what I have contributed myself Hanoi, February 2019 Ph.D Student Duong Thi Hien Thanh SUPERVISORS Assoc.Prof Dr Nguyen Quoc Cuong i Dr Nguyen Cong Phuong ACKNOWLEDGEMENT This thesis has been written during my doctoral study at International Research Institute Multimedia, Information, Communication, and Applications (MICA), Hanoi University of Science and Technology (HUST) It is my great pleasure to thank numer- ous people who have contributed towards shaping this thesis First and foremost I would like to express my most sincere gratitude to my supervi- sors, Assoc Prof Nguyen Quoc Cuong and Dr Nguyen Cong Phuong, for their great guidance and support throughout my Ph.D study I am grateful to them for devoting their precious time to discussing research ideas, proofreading, and explaining how to write good research papers I would like to thank them for encouraging my research and empowering me to grow as a research scientist I could not have imagined having a better advisor and mentor for my Ph.D study I would like to express my appreciation to my supervisor in Master cource, Prof Nguyen Thanh Thuy, School of Information and Communication Technology HUST, and Dr Nguyen Vu Quoc Hung, my supervisor in Bachelors course at Hanoi National University of Education They had shaped my knowledge for excelling in studies In the process of implementation and completion of my research, I have received many supports from the board of MICA directors and my colleagues at Speech Communication department Particularly, I am very much thankful to Prof Pham Thi Ngoc Yen, Prof Eric Castelli, Dr Nguyen Viet Son and Dr Dao Trung Kien, who pro- vided me with an opportunity to join researching works in MICA institute and have access to the laboratory and research facilities Without their precious support would it have been being impossible to conduct this research My warmly thanks go to my colleagues at Speech Communication department of MICA institute for their useful comments on my study and unconditional support over four years both at work and outside of work I am very grateful to my internship supervisor Prof Nobutaka Ono and the members of Ono’s Lab at the National Institute of Informatics, Japan for warmly welcoming me into their lab and the helpful research collaboration they offered I much appreciate his help in funding my conference trip and introducing me to the signal processing research communities I would also like to thank Dr Toshiya ii Ohshima, MSc Yasu- taka Nakajima, MSc Chiho Haruta and other researchers at Rion Co., Ltd., Japan for ii welcoming me to their company and providing me data for experimental I would also like to sincerely thank Dr Nguyen Quang Khanh, dean of Information Technology Faculty, and Assoc Prof Le Thanh Hue, dean of Economic Informatics Department, at Hanoi University of Mining and Geology (HUMG) where I am work- ing I have received the financial and time support from my office and leaders for completing my doctoral thesis Grateful thanks also go to my wonderful colleagues and friends Nguyen Thu Hang, Pham Thi Nguyet, Vu Thi Kim Lien, Vo Thi Thu Trang, Pham Quang Hien, Nguyen The Binh, Nguyen Thuy Duong, Nong Thi Oanh and Nguyen Thi Hai Yen, who have the unconditional support and help during a long time A special thank goes to Dr Le Hong Anh for the encouragement and his precious advice Last but not the least, I would like to express my deepest gratitude to my family I am very grateful to my mother-in-law and father-in-law for their support in the time of need, and always allow me to focus on my work I dedicate this thesis to my mother and father with special love, they have been being a great mentor in my life and had constantly encouraged me to be a better person The struggle and sacrifice of my parents always motivate me to work hard in my studies I would also like to express my love to my younger sisters and younger brother for their encouraging and helping This work has become more wonderful because of the love and affection that they have provided A special love goes to my beloved husband Tran Thanh Huan for his patience and understanding, for always being there for me to share the good and bad times I also appreciate my sons Tran Tuan Quang and Tran Tuan Linh for always cheering me up with their smiles Without love from them, this thesis would not have been completed Thank you all! Hanoi, February 2019 Ph.D Student Duong Thi Hien Thanh CONTENTS DECLARATION OF AUTHORSHIP i i DECLARATION OF AUTHORSHIP ACKNOWLEDGEMENT ii CONTENTS iv NOTATIONS AND GLOSSARY viii LIST OF TABLES xi LIST OF FIGURES xii INTRODUCTION Chapter AUDIO SOURCE SEPARATION: FORMULATION AND STATE OF THE ART 10 1.1 Audio source separation: a solution for cock-tail party problem 10 1.1.1 General framework for source separation 10 1.1.2 Problem formulation 11 State of the art 13 1.2.1 13 1.2.1.1 Gaussian Mixture Model 14 1.2.1.2 Nonnegative Matrix Factorization 15 1.2.1.3 Deep Neural Networks 16 Spatial models 18 1.2.2.1 Interchannel Intensity/Time Difference (IID/ITD) 18 1.2.2.2 Rank-1 covariance matrix 19 1.2.2.3 Full-rank spatial covariance model 20 Source separation performance evaluation 21 1.3.1 Energy-based criteria 22 1.3.2 Perceptually-based criteria 23 Summary 23 1.2 1.2.2 1.3 1.4 Spectral models Chapter NONNEGATIVE MATRIX FACTORIZATION 2.1 NMF introduction 24 24 2.2 2.3 2.1.1 NMF in a nutshell 24 2.1.2 Cost function for parameter estimation 26 2.1.3 Multiplicative update rules 27 Application of NMF to audio source separation 29 2.2.1 Audio spectra decomposition 29 2.2.2 NMF-based audio source separation 30 Proposed application of NMF to unusual sound detection 32 2.3.1 Problem formulation 33 2.3.2 Proposed methods for non-stationary frame detection 34 2.3.2.1 Signal energy based method 34 2.3.2.2 Global NMF-based method 35 2.3.2.3 Local NMF-based method 35 Experiment 37 2.3.3.1 Dataset 37 2.3.3.2 Algorithm settings and evaluation metrics 37 2.3.3.3 Results and discussion 38 Summary 43 2.3.3 2.4 Chapter SINGLE-CHANNEL AUDIO SOURCE SEPARATION EXPLOITING NMF-BASED GENERIC SOURCE SPECTRAL MODEL WITH MIXED GROUP SPARSITY CONSTRAINT 44 3.1 General workflow of the proposed approach 44 3.2 GSSM formulation 46 3.3 Model fitting with sparsity-inducing penalties 46 3.3.1 Block sparsity-inducing penalty 47 3.3.2 Component sparsity-inducing penalty 48 3.3.3 Proposed mixed sparsity-inducing penalty 49 3.4 Derived algorithm in unsupervised case 49 3.5 Derived algorithm in semi-supervised case 52 3.5.1 Semi-GSSM formulation 52 3.5.2 Model fitting with mixed sparsity and algorithm 54 Experiment 54 3.6.1 Experiment data 54 3.6.1.1 55 3.6 Synthetic dataset 3.6.2 3.6.3 3.7 3.6.1.2 SiSEC-MUS dataset 55 3.6.1.3 SiSEC-BNG dataset 56 Single-channel source separation performance with unsupervised setting 57 3.6.2.1 Experiment settings 57 3.6.2.2 Evaluation method 57 3.6.2.3 Results and discussion 61 Single-channel source separation performance with semi-supervised setting 65 3.6.3.1 Experiment settings 65 3.6.3.2 Evaluation method 65 3.6.3.3 Results and discussion 65 Summary 66 Chapter MULTICHANNEL AUDIO SOURCE SEPARATION EXPLOITING NMF-BASED GSSM IN GAUSSIAN MODELING FRAMEWORK 68 4.1 Formulation and modeling 68 4.1.1 Local Gaussian model 68 4.1.2 NMF-based source variance model 70 4.1.3 Estimation of the model parameters 71 Proposed GSSM-based multichannel approach 72 4.2.1 GSSM construction 72 4.2.2 Proposed source variance fitting criteria 73 4.2.2.1 Source variance denoising 73 4.2.2.2 Source variance separation 74 4.2.3 Derivation of MU rule for updating the activation matrix 75 4.2.4 Derived algorithm 77 Experiment 79 4.3.1 Dataset and parameter settings 79 4.3.2 Algorithm analysis 80 4.2 4.3 4.3.2.1 4.3.2.2 4.3.3 Algorithm convergence: separation results as functions of EM and MU iterations 80 Separation results with different choices of λ and γ 81 Comparison with the state of the art 82 4.4 Summary 91 CONCLUSIONS AND PERSPECTIVES 93 BIBLIOGRAPHY 96 LIST OF PUBLICATIONS 113 vii [96] Nugraha, A., Liutkus, A., and Vincent, E (2016) Multichannel audio source separation with deep neural networks IEEE/ACM Transactions on Audio, Speech, and Language Processing, 14(9):1652–1664 106 [97] O’Grady, P D., Pearlmutter, B A., and Rickard, S T (2005) Survey of sparse and non-sparse methods in source separation International Journal of Imaging 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pages 25–32 Springer-Verlag [159] Zdunek, R (2013) Improved Convolutive and Under-Determined Blind Audio Source Separation with MRF Smoothing Cognitive Computation, 5(4):493–503 [160] Zhang, Z.-Y (2012) Nonnegative Matrix Factorization: Models, Algorithms and Applications In Data Mining: Foundations and Intelligent Paradigms, volume 24, pages 99–134 Springer Berlin Heidelberg 113 LIST OF PUBLICATIONS Hien-Thanh Thi Duong, Quoc-Cuong Nguyen, Cong-Phuong Nguyen, Thanh Huan Tran, and Ngoc Q K Duong (2015) Speech enhancement based on nonnegative matrix factorization with mixed group spar- sity constraint Proc ACM International Symposium on Information and Communication Technology (SoICT 2015), pp 247251, Hue, Vietnam ISBN 978-1-4503-3843-1, DOI:10.1145/2833258.2833276 Hien-Thanh Thi Duong, Quoc-Cuong Nguyen, Cong-Phuong Nguyen, and Ngoc Q K Duong (2016) Single-channel speaker-dependent speech enhancement exploiting generic noise model learned by nonnegative matrix factorization Proc IEEE International Conference on Electronics, Information and Communication, pp 268-271, Danang, Vietnam, Electronic ISBN 978-1-4673-8016-4, PoD ISBN 978-1-46738017-1, DOI 10.1109/ELINFOCOM.2016.7562952 Thanh Thi Hien Duong, Nobutaka Ono, Yasutaka Nakajima and Toshiya Ohshima (2016) Non-stationary Segment Detection Methods based on Single-basis Non-negative Matrix Factorization for Effective Annotation Proc IEEE Asia-Pacific Signal and Information Processing Association Annual Summit Conference (IEEE APSIPA ASC), pp 1-6, Jeju, Korea, Electronic ISBN 978-9-8814-7682-1, PoD ISBN 978-1-5090-2401-8, DOI 10.1109/APSIPA.2016.7820760 Thanh Thi Hien Duong, Phuong Cong Nguyen, and Cuong Quoc Nguyen (2018) Exploiting Nonnegative Matrix Factorization with Mixed Group Sparsity Constraint to Separate Speech Signal from Singlechannel Mixture with Unknown Ambient Noise EAI Endorsed Transactions on Context-Aware Systems and Applications vol 18(13), pp 1-8 ISSN 2409-0026 Duong Thi Hien Thanh, Nguyen Cong Phuong, and Nguyen Quoc Cuong (2018) Combination of Nonnegative Matrix Factorization and mixed group sparsity constraint to exploit generic source spectral model in single-channel audio source separation Journal of Military 114 Science and Technology Vol 45(4), pp: 83-94 ISSN 1859 - 1043 (In Viet- 115 namese) Thanh Thi Hien Duong, Ngoc Q K Duong, Phuong Cong Nguyen, and Cuong Quoc Nguyen (2018) Multichannel source separation exploiting NMF-based generic source spectral model in Gaussian modeling framework In Latent Variable Analysis and Signal Separation, vol 10891, pp 547-557 Springer International Publishing DOI 10.1007/9 78-3-319-93764-9 50 (SCOPUS) Thanh Thi Hien Duong, Ngoc Q K Duong, Phuong Cong Nguyen, and Cuong Quoc Nguyen (2019) Gaussian modeling-based multichannel audio source separation exploiting generic source spectral model IEEE/ACM Transactions on Audio, Speech, and Language Processing, vol 27(1), pp 32-43 ISSN 2329-9304, DOI 10.1109/TASLP.2018.28 69692 (ISI - Q1) 116 ... a Vector A Matrix AT Matrix transpose AH Matrix conjugate transposition (Hermitian conjugation) diag(a) Diagonal matrix with a as its diagonal det(A) Determinant of matrix A tr(A) Matrix trace... source image Time-domain j th original source signal x(n, f ) ∈ CI Time-frequency domain mixture signal s(n, f ) ∈ CJ Time-frequency domain source signals cj (n, f ) ∈ CI Time-frequency domain j... element-wise Hadamard product of two matrices (of the same dimension) with elements [A B]ij = Aij Bij (n) A.(n) The matrix with entries [A]i kak1 `1 -norm of vector kAk1 `1 -norm of matrix j Indices
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