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An Analysis of the Aurora Large Vocabulary Evaluation. EUROSPEECH 2003. • Authors: Naveen Parihar and Joseph Picone Inst. for Signal and Info. Processing Dept. Electrical and Computer Eng. Mississippi State University • Contact Information: Box 9571 Mississippi State University
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An Analysis of theAurora Large Vocabulary Evaluation EUROSPEECH 2003 • Authors: Naveen Parihar and Joseph Picone Inst. for Signal and Info. Processing Dept. Electrical and Computer Eng. Mississippi State University • Contact Information: Box 9571 Mississippi State University Mississippi State, Mississippi 39762 Tel: 662-325-8335 Fax: 662-325-2298 Email: {parihar,picone}@isip.msstate.edu • URL: isip.msstate.edu/publications/seminars/ece_weekly/2003/evaluation/
INTRODUCTION ABSTRACT In this presentation, we analyze the results of the recent Aurora large vocabulary evaluations (ALV). Two consortia submitted proposals on speech recognition front ends for this evaluation: (1) Qualcomm, ICSI, and OGI (QIO), and (2) Motorola, France Telecom, and Alcatel (MFA). These front ends used a variety of noise reduction techniques including discriminative transforms, feature normalization, voice activity detection, and blind equalization. Participants used a common speech recognition engine to post-process their features. In this presentation, we show that the results of this evaluation were not significantly impacted by suboptimal recognition system parameter settings. Without any front end specific tuning, the MFA front end outperforms the QIO front end by 9.6% relative. With tuning, the relative performance gap increases to 15.8%. Both the mismatched microphone and additive noise evaluation conditions resulted in a significant degradation in performance for both front ends.
Message Source Articulatory Channel Acoustic Channel Linguistic Channel INTRODUCTION SPEECH RECOGNITION OVERVIEW A noisy communication channel model for speech production and perception: • Bayesian formulation for speech recognition: • P(W/A) = P(A/W) P(W) / P(A) • Objective: minimize word error rate by maximizing P(W/A) • Approach: maximize P(A/W) (training) • P(A/W): acoustic model (hidden Markov Model, Gaussians) • P(W): language model (Finite state machines, N-grams) • P(A): acoustics (ignored during maximization)
INTRODUCTION BLOCK DIAGRAM APPROACH Core components: • Transduction • Feature extraction • Acoustic modeling (hidden Markov models) • Language modeling (statistical N-grams) • Search (Viterbi beam) • Knowledge sources
Client/server applications • Evaluate robustness in noisy environments • Propose a standard for LVCSR applications INTRODUCTION AURORA EVALUATION OVERVIEW • WSJ 5K (closed task) with seven (digitally-added) noise conditions • Common ASR system • Two participants: QIO: QualC., ICSI, OGI; MFA: Moto., FrTel., Alcatel
INTRODUCTION MOTIVATION ALV Evaluation Results • ALV goal was at least a 25% relative improvement over the baseline MFCC front end • Two consortia participated: • QIO: QualComm, ICSI, OGI • MFA: Motorola, France Telecom, Alcatel • Generic baseline LVCSR system with no front end specific tuning • Would front end specific tuning change the rankings?
EVALUATION PARADIGM THE AURORA – 4 DATABASE Acoustic Training: • Derived from 5000 word WSJ0 task • TS1 (clean), and TS2 (multi-condition) • Clean plus 6 noise conditions • Randomly chosen SNR between 10 and 20 dB • 2 microphone conditions (Sennheiser and secondary) • 2 sample frequencies – 16 kHz and 8 kHz • G.712 filtering at 8 kHz and P.341 filtering at 16 kHz • Development and Evaluation Sets: • Derived from WSJ0 Evaluation and Development sets • 14 test sets for each • 7 test sets recorded on Sennheiser; 7 on secondary • Clean plus 6 noise conditions • Randomly chosen SNR between 5 and 15 dB • G.712 filtering at 8 kHz and P.341 filtering at 16 kHz
Training Data Monophone Modeling CD-Triphone Modeling State-Tying CD-Triphone Modeling Mixture Modeling (2,4) EVALUATION PARADIGM BASELINE LVCSR SYSTEM Standard context-dependent cross-word HMM-based system: • Acoustic models: state-tied4-mixture cross-word triphones • Language model: WSJ0 5K bigram • Search: Viterbi one-best using lexical trees for N-gram cross-word decoding • Lexicon: based on CMUlex • Real-time: 4 xRT for training and 15 xRT for decoding on an800 MHz Pentium
/ EVALUATION PARADIGM WI007 ETSI MFCC FRONT END Input Speech The baseline HMM system used an ETSI standard MFCC-based front end: Zero-mean and Pre-emphasis • Zero-mean debiasing • 10 ms frame duration • 25 ms Hamming window • Absolute energy • 12 cepstral coefficients • First and second derivatives Energy Fourier Transf. Analysis Cepstral Analysis
FRONT END PROPOSALS QIO FRONT END Input Speech Qualcomm, ICSI, OGI (QIO) front end: • 10 msec frame duration • 25 msec analysis window • 15 RASTA-like filtered cepstral coefficients • MLP-based VAD • Mean and variance normalization • First and second derivatives Fourier Transform Mel-scale Filter Bank MLP-based VAD RASTA DCT Mean/Variance Normalization /
Input Speech Noise Reduction VADNest Waveform Processing Cepstral Analysis Blind Equalization Feature Processing VAD / FRONT END PROPOSALS MFA FRONT END • 10 msec frame duration • 25 msec analysis window • Mel-warped Wiener filter based noise reduction • Energy-based VADNest • Waveform processing to enhance SNR • Weighted log-energy • 12 cepstral coefficients • Blind equalization (cepstral domain) • VAD based on acceleration of various energy based measures • First and second derivatives
EXPERIMENTAL RESULTS FRONT END SPECIFIC TUNING • Pruning beams (word, phone and state) were opened during the tuning process to eliminate search errors. • Tuning parameters: • State-tying thresholds:solves the problem of sparsity of training data by sharing state distributions among phonetically similar states • Language model scale:controls influence of the language model relative to the acoustic models (more relevant for WSJ) • Word insertion penalty:balances insertions and deletions (always a concern in noisy environments)
Parameter tuning clean data recorded on Sennhieser mic. (corresponds to Training Set 1 and Devtest Set 1 of the Aurora-4 database) 8 kHz sampling frequency 7.5% relative improvement EXPERIMENTAL RESULTS FRONT END SPECIFIC TUNING - QIO
EXPERIMENTAL RESULTS FRONT END SPECIFIC TUNING - MFA • Parameter tuning • clean data recorded on Sennhieser mic. (corresponds to Training Set 1 and Devtest Set 1 of the Aurora-4 database) • 8 kHz sampling frequency • 9.4% relative improvement • Ranking is still the same (14.9% vs. 12.5%) !
EXPERIMENTAL RESULTS COMPARISON OF TUNING • Same Ranking: relative performance gap increased from9.6% to 15.8% • On TS1, MFA FE significantly better on all 14 test sets (MAPSSWE p=0.1%) • On TS2, MFA FE significantly better only on test sets 5 and 14
40 30 ETSI MFA QIO 20 10 0 Sennheiser Secondary EXPERIMENTAL RESULTS MICROPHONE VARIATION • Train on Sennheiser mic.; evaluate on secondary mic. • Matched conditions result in optimal performance • Significant degradation for all front ends on mismatched conditions • Both QIO and MFA provide improved robustness relative to MFCC baseline
EXPERIMENTAL RESULTS 70 • Performance degrades on noise condition when systems are trained only on clean data • Both QIO and MFA deliver improved performance 60 50 40 30 ETSI MFA QIO 20 10 0 TS2 TS3 TS4 TS5 TS6 TS7 40 • Exposing systems to noise and microphone variations (TS2) improves performance 30 20 10 0 TS2 TS3 TS4 TS5 TS6 TS7 ADDITIVE NOISE
SUMMARY AND CONCLUSIONS WHAT HAVE WE LEARNED? • Front end specific parameter tuning did not result in significant change in overall performance (MFA still outperforms QIO) • Both QIO and MFA front ends handle convolution and additive noise better than ETSI baseline • Both QIO and MFA front ends achieved ALV evaluation goal of improving performance by at least 25% relative over ETSI baseline • WER is still high ( ~ 35%), further research on noise robust front end is needed
Aurora Project Website: recognition toolkit, multi-CPU scripts, database definitions, publications, and performance summary of the baseline MFCC front end • Speech Recognition Toolkits: compare front ends to standard approaches using a state of the art ASR toolkit • ETSI DSR Website: reports and front end standards SUMMARY AND CONCLUSIONS AVAILABLE RESOURCES
SUMMARY AND CONCLUSIONS BRIEFBIBLIOGRAPHY • N. Parihar, Performance Analysis of Advanced Front Ends, M.S. Dissertation, Mississippi State University, December 2003. • N. Parihar, J. Picone, D. Pearce, and H.G. Hirsch, “Performance Analysis of the Aurora Large Vocabulary Baseline System,” submitted to the Eurospeech 2003, Geneva, Switzerland, September 2003. • N. Parihar and J. Picone, “DSR Front End LVCSR Evaluation - AU/384/02,” Aurora Working Group, European Telecommunications Standards Institute, December 06, 2002. • D. Pearce, “Overview of Evaluation Criteria for Advanced Distributed Speech Recognition,” ETSI STQ-Aurora DSR Working Group, October 2001. • G. Hirsch, “Experimental Framework for the Performance Evaluation of Speech Recognition Front-ends in a Large Vocabulary Task,” ETSI STQ-Aurora DSR Working Group, December 2002. • “ETSI ES 201 108 v1.1.2 Distributed Speech Recognition; Front-end Feature Extraction Algorithm; Compression Algorithm,” ETSI, April 2000.
SUMMARY AND CONCLUSIONS BIOGRAPHY • Naveen Parihar is a M.S. student in Electrical Engineering in the Department of Electrical and Computer Engineering at Mississippi State University. He currently leads the Core Speech Technology team developing a state-of-the-art public-domain speech recognition system. Mr. Parihar’s research interests lie in the development of discriminative algorithms for better acoustic modeling and feature extraction. Mr. Parihar is a student member of the IEEE. • Joseph Picone is currently a Professor in the Department of Electrical and Computer Engineering at Mississippi State University, where he also directs the Institute for Signal and Information Processing. For the past 15 years he has been promoting open source speech technology. He has previously been employed by Texas Instruments and AT&T Bell Laboratories. Dr. Picone received his Ph.D. in Electrical Engineering from Illinois Institute of Technology in 1983. He is a Senior Member of the IEEE and a registered Professional Engineer.