Current speech recognition systems uniformly employ short-time spectral analysis, usually over windows of 10-30 ms, as the basis for their acoustic representations. Any detail below this timescale is lost, and even temporal structures above this level are usually only weakly represented in the form of deltas etc. We address this limitation by proposing a novel representation of the temporal envelope in different frequency bands by exploring the dual of conventional linear prediction (LPC) when applied in the transform domain. With this technique of frequency-domain linear prediction (FDLP), the 'poles' of the model describe temporal, rather than spectral, peaks. By using analysis windows on the order of hundreds of milliseconds, the procedu...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition s...
Extending previous works done on considerably smaller data sets, the paper studies linear discrimina...
Frequency Domain Linear Prediction (FDLP) provides an efficient way to represent temporal envelopes ...
Autoregressive modeling is applied for approximating the temporal evolution of spectral density in c...
Overview of Frequency-Domain Linear Prediction (FDLP) as a novel approach to speech recognition
Feature extraction of speech signals is typically performed in short-time frames by assuming that th...
Performance of a typical automatic speech recognition (ASR) system severely degrades when it encount...
Frequency domain linear prediction (FDLP) is a technique for auto-regressive (AR) modeling of Hilber...
Abstract This report examines the time windows used for linear prediction (LP) analysis of speech. T...
In this paper, we present a spectro-temporal feature extraction technique using sub-band Hilbert env...
The temporal trajectories of the spectral energy in auditory critical bands over 250 ms segments are...
We present a new feature extraction technique for phoneme recognition that uses short-term spectral ...
Based on extensive prior studies of speech science focused on the spectral-temporal properties of hu...
Some speech analysis techniques used in automatic speech recognition utilize temporal processing of ...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition s...
Extending previous works done on considerably smaller data sets, the paper studies linear discrimina...
Frequency Domain Linear Prediction (FDLP) provides an efficient way to represent temporal envelopes ...
Autoregressive modeling is applied for approximating the temporal evolution of spectral density in c...
Overview of Frequency-Domain Linear Prediction (FDLP) as a novel approach to speech recognition
Feature extraction of speech signals is typically performed in short-time frames by assuming that th...
Performance of a typical automatic speech recognition (ASR) system severely degrades when it encount...
Frequency domain linear prediction (FDLP) is a technique for auto-regressive (AR) modeling of Hilber...
Abstract This report examines the time windows used for linear prediction (LP) analysis of speech. T...
In this paper, we present a spectro-temporal feature extraction technique using sub-band Hilbert env...
The temporal trajectories of the spectral energy in auditory critical bands over 250 ms segments are...
We present a new feature extraction technique for phoneme recognition that uses short-term spectral ...
Based on extensive prior studies of speech science focused on the spectral-temporal properties of hu...
Some speech analysis techniques used in automatic speech recognition utilize temporal processing of ...
The speech signal is inherently characterized by its variations in time, which get reflected as vari...
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition s...
Extending previous works done on considerably smaller data sets, the paper studies linear discrimina...