An elitist approach to articulatory-acoustic feature classification
نویسندگان
چکیده
A novel framework for automatic articulatory-acoustic feature extraction has been developed for enhancing the accuracy of placeand manner-of-articulation classification in spoken language. The “elitist” approach focuses on frames for which neural network (MLP) classifiers are highly confident, and discards the rest. Using this method, it is possible to achieve a frame-level accuracy of 93% for manner information on a corpus of American English sentences passed through a telephone network (NTIMIT). Place information is extracted for each manner class independently, resulting in an appreciable gain in place-feature classification relative to performance for a manner-independent system. The elitist framework provides a potential means of automatically annotating a corpus at the phonetic level without recourse to a word-level transcript and could thus be of utility for developing training materials for automatic speech recognition and speech synthesis applications, as well as aid the empirical study of spoken language.
منابع مشابه
A dutch treatment of an elitist approach to articulatory-acoustic feature classification
A novel approach to articulatory-acoustic feature extraction has been developed for enhancing the accuracy of classification associated with place and manner of articulation information. This “elitist” approach is tested on a corpus of spontaneous Dutch using two different systems, one trained on a subset of the same corpus, the other trained on a corpus from a different language (American Engl...
متن کاملAn elitist approach to automatic articulatory-acoustic feature classification for phonetic characterization of spoken language
A novel framework for automatic articulatory-acoustic feature extraction has been developed for enhancing the accuracy of placeand manner-of-articulation classification in spoken language. The ‘‘elitist’’ approach provides a principled means of selecting frames for which multi-layer perceptron, neural-network classifiers are highly confident. Using this method it is possible to achieve a frame-...
متن کاملAn elitist approach to automatic articulatory-acoustic feature classi cation for phonetic characterization of spoken language
A novel framework for automatic articulatory-acoustic feature extraction has been developed for enhancing the accuracy of placeand manner-of-articulation classi cation in spoken language. The ‘‘elitist’’ approach provides a principled means of selecting frames for which multi-layer perceptron, neural-network classi ers are highly con dent. Using this method it is possible to achieve a frame-lev...
متن کاملMulti-view Acoustic Feature Learning Using Articulatory Measurements
We consider the problem of learning a linear transformation of acoustic feature vectors for phonetic frame classification, in a setting where articulatory measurements are available at training time. We use the acoustic and articulatory data together in a multi-view learning approach, in particular using canonical correlation analysis to learn linear transformations of the acoustic features tha...
متن کاملKernel CCA for multi-view learning of acoustic features using articulatory measurements
We consider the problem of learning transformations of acoustic feature vectors for phonetic frame classification, in a multi-view setting where articulatory measurements are available at training time but not at test time. Canonical correlation analysis (CCA) has previously been used to learn linear transformations of the acoustic features that are maximally correlated with articulatory measur...
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:
دوره شماره
صفحات -
تاریخ انتشار 2001