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Deep Neural Convolutive Matrix Factorization for Articulatory Representation Decomposition

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arxiv 2204.00465 v3 pith:FZXBBKZV submitted 2022-04-01 eess.AS cs.AIeess.SP

Deep Neural Convolutive Matrix Factorization for Articulatory Representation Decomposition

classification eess.AS cs.AIeess.SP
keywords articulatorygesturalneuralphonologicalscoresspeechconvolutivedeep
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most of the research on data-driven speech representation learning has focused on raw audios in an end-to-end manner, paying little attention to their internal phonological or gestural structure. This work, investigating the speech representations derived from articulatory kinematics signals, uses a neural implementation of convolutive sparse matrix factorization to decompose the articulatory data into interpretable gestures and gestural scores. By applying sparse constraints, the gestural scores leverage the discrete combinatorial properties of phonological gestures. Phoneme recognition experiments were additionally performed to show that gestural scores indeed code phonological information successfully. The proposed work thus makes a bridge between articulatory phonology and deep neural networks to leverage informative, intelligible, interpretable,and efficient speech representations.

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