Parameter-adaptive variational autoencoder for linear/nonlinear blind source separation
Yuan-Hao Wei,
Yi-Qing Ni
Abstract:Blind source separation (BSS) serves as an important technique in the field of structural health monitoring (SHM), particularly for solving modal decomposition tasks. This study proposes a novel approach to both linear and nonlinear BSS problems in the Variational Autoencoder (VAE) framework, where the encoding and decoding processes of VAE are interpreted as procedures for inferring sources from observations and remixing these sources, respectively. In this way, the distribution of latent variables inferred b… Show more
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