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SA-Net: Robust State-Action Recognition for Learning from Observations

Nihal Soans, Ehsan Asali, Yi Hong, Prashant Doshi

202024 citationsDOIOpen Access PDF

Abstract

Learning from observation (LfO) offers a new paradigm for transferring task behavior to robots. LfO requires the robot to observe the task being performed and decompose the sensed streaming data into sequences of state-action pairs, which are then input to LfO methods. Thus, recognizing the state-action pairs correctly and quickly in sensed data is a crucial prerequisite. We present SA-Net a deep neural network architecture that recognizes state-action pairs from RGB-D data streams. SA-Net performs well in two replicated robotic applications of LfO - one involving mobile ground robots and another involving a robotic manipulator - which demonstrates that the architecture could generalize well to differing contexts. Comprehensive evaluations including deployment on a physical robot show that SA-Net significantly improves on the accuracy of the previous methods under various conditions.

Topics & Concepts

Computer scienceArtificial intelligenceRobotTask (project management)RGB color modelSoftware deploymentMobile robotAction (physics)Deep learningState (computer science)Artificial neural networkClass (philosophy)Machine learningEngineeringAlgorithmPhysicsQuantum mechanicsSystems engineeringOperating systemAnomaly Detection Techniques and ApplicationsHuman Pose and Action RecognitionRobot Manipulation and Learning