Temporal envelope compensation for robust phoneme recognition using modulation spectrum.
نویسندگان
چکیده
A robust feature extraction technique for phoneme recognition is proposed which is based on deriving modulation frequency components from the speech signal. The modulation frequency components are computed from syllable-length segments of sub-band temporal envelopes estimated using frequency domain linear prediction. Although the baseline features provide good performance in clean conditions, the performance degrades significantly in noisy conditions. In this paper, a technique for noise compensation is proposed where an estimate of the noise envelope is subtracted from the noisy speech envelope. The noise compensation technique suppresses the effect of additive noise in speech. The robustness of the proposed features is further enhanced by the gain normalization technique. The normalized temporal envelopes are compressed with static (logarithmic) and dynamic (adaptive loops) compression and are converted into modulation frequency features. These features are used in an automatic phoneme recognition task. Experiments are performed in mismatched train/test conditions where the test data are corrupted with various environmental distortions like telephone channel noise, additive noise, and room reverberation. Experiments are also performed on large amounts of real conversational telephone speech. In these experiments, the proposed features show substantial improvements in phoneme recognition rates compared to other speech analysis techniques. Furthermore, the contribution of various processing stages for robust speech signal representation is analyzed.
منابع مشابه
Hilbert envelope based spectro-temporal features for phoneme recognition in telephone speech
In this paper, we present a spectro-temporal feature extraction technique using sub-band Hilbert envelopes of relatively long segments of speech signal. Hilbert envelopes of the sub-bands are estimated using Frequency Domain Linear Prediction (FDLP). Spectral features are derived by integrating the sub-band Hilbert envelopes in short-term frames and the temporal features are formed by convertin...
متن کاملModulation Spectrum Analysis for Recognition of Reverberant Speech
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition systems. This is mainly due to the conventional short-term analysis/compensation techniques. In this paper, we present a feature extraction technique based on modeling long segments of temporal envelopes of the speech signal in narrow sub-bands using frequency domain linear prediction (FDLP). FDLP...
متن کاملFepstrum Features: Design and Application to Conversational Speech Recognition
In this paper, we present the Fepstrum features – a principled approach to estimate the modulation spectrum of the speech signals using the Hilbert envelopes in a nonparametric way. The importance of the modulation spectrum as a feature in the automatic speech recognition (ASR) has long been established by several researchers in the past twothree decades. However, traditionally, in the speech r...
متن کاملTandem representations of spectral envelope and modulation frequency features for ASR
We present a feature extraction technique for automatic speech recognition that uses Tandem representation of short-term spectral envelope and modulation frequency features. These features, derived from sub-band temporal envelopes of speech estimated using frequency domain linear prediction, are combined at the phoneme posterior level. Tandem representations derived from these phoneme posterior...
متن کاملRobust front end processing for speech recognition in reverberant environments: utilization of speech characteristics
This paper proposes two methods for robust automatic speech recognition (ASR) in reverberant environments. Unlike other methods which mostly apply inverse filtering by blindly estimated room impulse responses to achieve dereverberation, the proposed methods are based on the utilization of the characteristics of speech. The first method Harmonicity based Feature Analysis – takes advantage of the...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- The Journal of the Acoustical Society of America
دوره 128 6 شماره
صفحات -
تاریخ انتشار 2010