Fast Dual Variational Inference for Non-Conjugate Latent Gaussian Models
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Tracking algorithms are traditionally based on either a variational approach or a Bayesian one. In the variational case, a cost function is established between two consecutive frames and minimized by standard optimization algorithms. In the Bayesian case, ...