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Time-varying Normalizing Flow for Generative Modeling of Dynamical Signals | IEEE Conference Publication | IEEE Xplore

Time-varying Normalizing Flow for Generative Modeling of Dynamical Signals


Abstract:

We develop a time-varying normalizing flow (TVNF) for explicit generative modeling of dynamical signals. Being explicit, it can generate samples of dynamical signals, and...Show More

Abstract:

We develop a time-varying normalizing flow (TVNF) for explicit generative modeling of dynamical signals. Being explicit, it can generate samples of dynamical signals, and compute the likelihood of a (given) dynamical signal sample. In the proposed model, signal flow in the layers of the normalizing flow is a function of time, which is realized using an encoded representation that is the output of a recurrent neural network (RNN). Given a set of dynamical signals, the parameters of TVNF are learned according to maximum-likelihood approach in conjunction with gradient descent (backpropagation). Use of the proposed model is illustrated for a toy application scenario - maximum-likelihood based speech-phone classification task.
Date of Conference: 29 August 2022 - 02 September 2022
Date Added to IEEE Xplore: 18 October 2022
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Conference Location: Belgrade, Serbia

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