Publication | Closed Access
Embed to control: a locally Linear Latent dynamics model for control from raw images
440
Citations
23
References
2015
Year
Unknown Venue
EngineeringMachine LearningRaw Pixel ImagesAutoencodersLearning ControlModel LearningGenerative SystemGenerative ModelRobot LearningOptimal Control FormulationSynthetic Image GenerationRaw ImagesMotion SynthesisAction Model LearningWorld ModelHuman Image SynthesisDeep LearningComputer VisionGenerative Adversarial Network
We introduce Embed to Control (E2C), a method for model learning and control of non-linear dynamical systems from raw pixel images. E2C consists of a deep generative model, belonging to the family of variational autoencoders, that learns to generate image trajectories from a latent space in which the dynamics is constrained to be locally linear. Our model is derived directly from an optimal control formulation in latent space, supports long-term prediction of image sequences and exhibits strong performance on a variety of complex control problems.
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