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Article Dans Une Revue Transactions on Machine Learning Research Journal Année : 2024

Mixture of Dynamical Variational Autoencoders for Multi-Source Trajectory Modeling and Separation

Résumé

In this paper, we present an unsupervised probabilistic model and associated estimation algorithm for multi-object tracking (MOT) based on a dynamical variational autoencoder (DVAE), called DVAE-UMOT. The DVAE is a latent-variable deep generative model that can be seen as an extension of the variational autoencoder for the modeling of temporal sequences. It is included in DVAE-UMOT to model the objects' dynamics, after being pre-trained on an unlabeled synthetic dataset of single-object trajectories. Then the distributions and parameters of DVAE-UMOT are estimated on each multi-object sequence to track using the principles of variational inference: Definition of an approximate posterior distribution of the latent variables and maximization of the corresponding evidence lower bound of the data likehood function. DVAE-UMOT is shown experimentally to compete well with and even surpass the performance of two state-of-the-art probabilistic MOT models. Code and data are publicly available.
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hal-03584014 , version 1 (22-02-2022)

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  • HAL Id : hal-03584014 , version 1

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Xiaoyu Lin, Laurent Girin, Xavier Alameda-Pineda. Mixture of Dynamical Variational Autoencoders for Multi-Source Trajectory Modeling and Separation. Transactions on Machine Learning Research Journal, 2024, pp.1-19. ⟨hal-03584014⟩
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