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A Study of Single Channel Blind Source Separation and Recognition Based on Mixed-State Prediction. Reporter : Chia-Cheng Chen Advisor : Wen-Ping Chen. Department of Electrical Engineering National Kaohsiung University of Applied Sciences. Network Application Laboratory. Outline.
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A Study of Single Channel Blind Source Separation and Recognition Based on Mixed-State Prediction Reporter:Chia-Cheng Chen Advisor :Wen-Ping Chen Department of Electrical Engineering National Kaohsiung University of Applied Sciences Network Application Laboratory
Outline • Introduction and Motivation • Background • Research Methods • Experimental Results • Conclusion and Future Works • Research Results
Introduction • The applications of voiceprintrecognition system • Call routing (1997) • Jupiter (1997) • Let’s Go! (2002) • Siri(2010) • Skyvi (2011) • Vlingo (2011)
Introduction • Current Ecological Status of the Survey: • Sensor networks • Wireless networks • Database • Voiceprint recognition system • Advantage • Reduce the cost of human resource and time • Save and share the raw data conveniently
Introduction Blind Source Separation http://metadata.froghome.org/about.php台灣地區兩棲類物種描述資料
Introduction ? Blind Source Separation
Introduction • Voiceprint recognition • C.J. Huang, Y.J. Yang, D.X. Yang and Y.J. Chen, “Frog classification using machine learning techniques,” Expert Systems with Applications, Vol. 36, No. 2, pp. 3737-3743, 2009. (SCI) • S.C. Hsieh, W.P. Chen, W.C. Lin, F.S. Chou, and J.R. Lai, “Endpoint detection of frog croak syllableswith using average energy entropy method,” Taiwan Journal of Forest Science, Vol.27, No.2, pp.149-161, Jun. 2012. (EI) • W.P. Chen, S.S. Chen, C.C. Lin, Y.Z. Chen and W.C. Lin, “Automatic recognition of frog call using multi-stage average spectrum,” Computers & Mathematics with Applications, Vol. 64, No. 5, pp. 1270-1281, Sep. 2012. (SCI)
Introduction • Single channel source separation • M.N. Schmidt and M. Mørup, “Nonnegative matrix factor 2-D deconvolution for blind single channel source separation,” Proceedings of International Conferences Independent Component Analysis and Blind Signal Separation, Vol. 3889, pp. 700-707, Mar. 2006. (SCI) • S. Kırbız and B. Gunsel, “Perceptually weighted non-negative matrix factorization for blind single-channel music source separation,” 21st International Conference on Pattern Recognition, Nov. 2012. (EI)
Motivation • Automatic frog species voiceprint recognition system • Predicting the number of mixed signal • Single channel blind source separation • Biologist • People
Outline • Introduction and Motivation • Background • Research Methods • Experimental Results • Conclusion and Future Works • Research Results
Background • Voiceprint Recognition
SignalProcessing • Signal Processing Resample 44100Hz Frog Signal Pre-emphasis Frame Hamming Window
Syllable Segmentation • Endpoint Detection Algorithm • Energy • Time Domain • Simple • Square of the Amplitude or Absolute Value of the Amplitude • Vulnerable to Noise Impact • Entropy • Frequency Domain • Complex • Noise Immunity
Average Energy Entropy • Signal Transform • Average Energy s(n):windowed signal N:frame size k:frequency component u:the mean for energy of input signal A(n):the amplitude value of input signal N:total number of input signal
Average Energy Entropy • Probability Density Function E(fi):the spectral energy for the frequency fi :the corresponding probability density M:total number of frequency components in FFT β: Multiples
Average Energy Entropy • Average Energy Entropy H’:the negative entropy for each frame
Endpoint Detection Algorithm Signal AEE Absolute Energy Square Energy
Adaptive Multi-stage Average Spectral • Adaptive Clustering Cluster B Cluster A
Adaptive Multi-stage Average Spectral • Adaptive Clustering Cluster B Cluster A
Adaptive Multi-stage Average Spectral • Adaptive Clustering
Adaptive Multi-stage Average Spectral • Template Training Frame 1 Stage 1 Frame 2 Frame 3 Stage 2 Frame 4 Frame 5 Frame 6 Stage 3 Frame 7
Adaptive Multi-stage Average Spectral • Template Training
Adaptive Multi-stage Average Spectral • Template Training Minimum Cumulative Difference
Adaptive Multi-stage Average Spectral • Template Maching Minimum Cumulative Difference
Blind Source Separation , • Non-negative Matrix Factor 2-D Deconvolution • αbasis matrix and βcoefficient matrix • Obtain the relations between the time and the pitch • Shift operator , V: Original Signal : Reconstructed Signal
Non-negative Matrix Factor 2-D Deconvolution • Non-negative Matrix Factor 2-D Deconvolution • Cost function • Based on Euclidean Distance • Based on Kullback-Leibler Divergence
Outline • Introduction and Motivation • Background • Research Methods • Experimental Results • Conclusion and Future Works • Research Results
Research Methods • Mixed-State Prediction voiceprint recognition method • Training • Mixed signals states • Testing • Two stages voiceprint recognition • Mixed-State Prediction
First Stage Independent signal Mixed signal Latouche'sfrog MFCC Moltrecht's green tree frog + Latouche'sfrog MFCC
Mixed States • Average Energy Independent signal Mixed signal E:the average energy for the frequency X(k) N:the length of the syllable
Predicting the number of mixed signal E:the mean spectral energy for test syllable a:the mean energy of training data T:the separation threshold
Outline • Introduction and Motivation • Background • Research Methods • Experimental Results • Conclusion and Future Works • Research Results
Experimental Results • Recognition Experiment • Independent signals
Experimental Results • Recognition Experiment • Mixed signals
Conclusion and Future Works • The proposed method • Improve the mixed signal recognition rate • Proposed a method to predict the number of mixed signal
Conclusion and Future Works • Future Works • Study of de-noise methods • Collect more features between independent and mixed signals • Mixed signals recognition within same species • Collect various sound of species. Then, improve the system performance • Adopt Support Vector Machines(SVM), Neural Network…
Research Results • Competition • 第七屆數位訊號處理創思設計競賽—入圍 • 青蛙物種聲紋辨識系統 • 計畫協助