Publication | Closed Access
Transferable Task Execution from Pixels through Deep Planning Domain Learning
40
Citations
25
References
2020
Year
Unknown Venue
Artificial IntelligenceSymbolic OperatorsMachine LearningEngineeringIntelligent RoboticsCognitive RoboticsTransferable Task ExecutionIntelligent SystemsTask PlanningMulti-task LearningRobot LearningDomain DefinitionSensor DataComputer EngineeringAction Model LearningComputer ScienceWorld ModelDeep LearningDomain AdaptationTransfer LearningPlanningRobotics
While robots can learn models to solve many manipulation tasks from raw visual input, they cannot usually use these models to solve new problems. On the other hand, symbolic planning methods such as STRIPS have long been able to solve new problems given only a domain definition and a symbolic goal, but these approaches often struggle on the real world robotic tasks due to the challenges of grounding these symbols from sensor data in a partially-observable world. We propose Deep Planning Domain Learning (DPDL), an approach that combines the strengths of both methods to learn a hierarchical model. DPDL learns a high-level model which predicts values for a large set of logical predicates consisting of the current symbolic world state, and separately learns a low-level policy which translates symbolic operators into executable actions on the robot. This allows us to perform complex, multistep tasks even when the robot has not been explicitly trained on them. We show our method on manipulation tasks in a photorealistic kitchen scenario.
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