Publication | Open Access
Deep Variational Bayes Filters: Unsupervised Learning of State Space Models from Raw Data
77
Citations
14
References
2016
Year
Artificial IntelligenceEngineeringMachine LearningSequential LearningAutoencodersState Space ModelsRaw DataState EstimationData SciencePattern RecognitionHidden Markov ModelGenerative ModelBayesian Hierarchical ModelingVariational InferenceFeature LearningComputer ScienceDeep LearningComputer VisionInformation ContentSpatial Dependencies
We introduce Deep Variational Bayes Filters (DVBF), a new method for unsupervised learning and identification of latent Markovian state space models. Leveraging recent advances in Stochastic Gradient Variational Bayes, DVBF can overcome intractable inference distributions via variational inference. Thus, it can handle highly nonlinear input data with temporal and spatial dependencies such as image sequences without domain knowledge. Our experiments show that enabling backpropagation through transitions enforces state space assumptions and significantly improves information content of the latent embedding. This also enables realistic long-term prediction.
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