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HCSNet December 2005 Auditory Scene Analysis and Automatic Speech Recognition in Adverse Conditions Phil Green Speech and Hearing Research Group, Department.

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Presentation on theme: "HCSNet December 2005 Auditory Scene Analysis and Automatic Speech Recognition in Adverse Conditions Phil Green Speech and Hearing Research Group, Department."— Presentation transcript:

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2 HCSNet December 2005 Auditory Scene Analysis and Automatic Speech Recognition in Adverse Conditions Phil Green Speech and Hearing Research Group, Department of Computer Science, University of Sheffield With thanks to Martin Cooke, Guy Brown, Jon Barker..

3 HCSNet December 2005 Overview Visual and Auditory Scene Analysis ‘Glimpsing’ in Speech Perception Missing Data ASR Finding the glimpses Current Sheffield Work Dealing with Reverberation Identifying Musical Instruments Multisource Decoding Speech Separation Challenge

4 HCSNet December 2005 Visual Scenes and Auditory Scenes Objects are opaque Each spatial pixel images a single object Object recognition has to cope with occlusion Sound is additive Each time/frequency pixel receives contributions from many sound sources Sound source recognition apparently requires reconstruction..

5 HCSNet December 2005 ‘Glimpsing’ in auditory scenes: the dominance effect (Cooke) Although audio signals add ‘additively’, the occlusion metaphor is a good approximation due to loglike compression in the auditory system Consequently, most regions in a mixture are dominated by one or other source, leaving very few ambiguous regions, even for a pair of speech signals mixed at 0 dB.

6 HCSNet December 2005 Can listeners handle glimpses?

7 HCSNet December 2005 The robustness problem in Automatic Speech Recognition Current ASR devices cannot tolerate additive noise, particularly if it’s unpredictable Listener’s noise-tolerance is 1 or 2 orders of magnitude better in equivalent conditions (Lippmann 97) Can glimpsing be used as the basis for robust ASR? Requirements: Adapt statistical ASR to incomplete data case Identify the glimpses Clean speech +noise Missing data Mask (oracle)

8 HCSNet December 2005 Classification with Missing Data A common problem: visual occlusion, sensor failure, transmission losses.. Need to evaluate the likelihood that observation vector x was generated by class C, f(x|C) Assume x has been partitioned into reliable and unreliable parts, (x r,x u ) Two approaches: Imputation: estimate x u, then proceed as normal Marginalisation: integrate over possible range of x u Marginalisation is preferable if there is no need to reconstruct x

9 HCSNet December 2005 The Missing Data Likelihood Computation In ASR by Continuous Density HMMS, State distributions are Gaussian Mixtures with diagonal covariance The marginal is just the reduced dimensionality distribution The integral can be approximated by ERFS This is computed independently for each mixture in the state distribution Cooke et al 2001

10 HCSNet December 2005 Counter-evidence from bounds frequency energy Observed spectrum x Mean spectrum for class C reliableunreliable Class C matches the reliable evidence well but there is insufficient energy in the unreliable components

11 HCSNet December 2005 Finding the glimpses Auditory scene analysis identifies spectral regions dominated by a single source Harmonicity Common amplitude modulation Sound source location Local SNR estimates can be used to compensate for predictable noise sources. Cooke 91

12 HCSNet December 2005 Harmonicity Masks Only meaningful in voiced segments Can be combined with SNR masks

13 HCSNet December 2005 Aurora Results (Sept 2001) Average gain over clean baseline under all conditions: 65% Barker et al 2001

14 HCSNet December 2005 Missing data masks from spatial location Cues for spatial location are used to separate a target source from masking sources Interaural Time Difference from corss-correlation between left and right binaural signals Interaural Level Difference from ratio of energy in left and right ears Soft masks Task: Target source: male speaker straight ahead One or two masking sources (also male speakers) at other positions Added reverberation Sue Harding, Guy Brown

15 HCSNet December 2005 Time (frames) Frequency channel Localisation mask, ITD only 20406080100120 10 20 30 40 50 60 Time (frames) Frequency channel Localisation mask, ILD/ITD 20406080100120 10 20 30 40 50 60 Frequency channel Localisation mask, ILD only Time (frames) 20406080100120 10 20 30 40 50 60 Oracle ITD only, ILD only, combined ITD and ILD. Best performance is with combined ITD and ILD: Missing data masks from spatial location (2) % Accuracy 57.51015203040 30 40 50 60 70 80 90 100 % Accuracy Azimuth of masker (degrees)

16 HCSNet December 2005 MD for reverberant conditions (1) Palomäki, Brown and Barker have applied MD to the problem of room reverberation: Use spectral normalization to deal with distortion caused by early reflections; Treat late reverberation as additive noise, and apply standard MD techniques. Select features which are uncontaminated by reverberation and contain strong speech energy. Approach based on modulation filtering: Each rate map channel passed through modulation filter Identify periods with enough energy in the filtered output Use these to define mask on original rate map

17 HCSNet December 2005 MD for reverberant conditions (2) Recognition of connected digits (Aurora 2) Reverberated using recorded room impulse responses Performance comparable with Brian Kingsbury’s hybrid HMM-MLP recognizer K. J. Palomäki, G. J. Brown and J. Barker (2004) Speech Communication 43 (1-2), pp. 123-142

18 HCSNet December 2005 MD for music analysis (1) Eggink and Brown have used MD techniques to identify concurrent musical instrument sounds Part of a system for transcribing chamber music Identify the F0 of the target note, and only keep its harmonics in the MD mask Uses a GMM classifier for each instrument, trained on isolated tones and short phrases Tested on tones, phrases and commercial CD

19 HCSNet December 2005 MD for music analysis (2) Example: duet for flute and clarinet All instrument tones correctly identified in this example J. Eggink and G. J. Brown (2003) Proc. ICASSP, Hong Kong, IV, pp. 553-556 J. Eggink and G. J. Brown (2004) Proc. ICASSP, Montreal, V, pp. 217-220 Time (frames) Fundamental Frequency (Hz) Flute Clarinet

20 HCSNet December 2005 Multisource Decoding Use primitive ASA and local SNR to identify time-frequency regions (fragments) dominated by a single source… i.e. possible segregations S … but NOT to decide what the best segregation is Based on missing data techniques – regions hypothesised as non- speech are missing Decoding algorithm finds best subset of fragments to match speech source Instead, jointly optimise over the word sequence W and S Barker, Cooke & Ellis 2003

21 HCSNet December 2005 Multisource decoding algorithm Work forward in time, maintaining a set of alternative decodings – Viterbi searches based on a choice of speech fragments. When new fragment arrives, split decodings - speech or non-speech? When fragment ends, merge decoders which differ in its interpretation.

22 HCSNet December 2005 Multisource Decoding on Aurora 2

23 Multisource decoding with a competing speaker Andre Coy and Jon Barker Utterances of male and female speakers mixed at 0 db Voiced regions: Soft Harmonicity masks from autocorrelation peaks Voiceless regions: fragments from ‘image processing’ Gender-dependent HMMs. Separate decoding for male & female 73.7% accuracy on a connected digit task

24 HCSNet December 2005 Informing Multisource Decoding – Work in progress Ning Ma, Andre Coy, Phil Green HMM Duration constraints Links between fragments – pitch continuity ‘Speechiness’

25 HCSNet December 2005 Speech separation challenge Organisers: Martin Cooke (University of Sheffield, UK), Te- Won Lee (UCSD, USA) see http://www.dcs.shef.ac.uk/~martin Global comparison of techniques for separating and recognising speech Special session of Interspeech 2006 in Pittsburgh (USA) from 17-21 September, 2006. Task- recognise speech from a target talker in the presence of either stationary noise or other speech. Training and test data supplied. One signal per mixture (i.e. the task is "single microphone"). Speech material- simple sentences from the ‘Grid Task’, e.g. “place white at L 3 now"


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