Litcius/Paper detail

Recent Advances of Deep Robotic Affordance Learning: A Reinforcement Learning Perspective

Xintong Yang, Ze Ji, Jing Wu, Yu‐Kun Lai

2023IEEE Transactions on Cognitive and Developmental Systems21 citationsDOIOpen Access PDF

Abstract

As a popular concept proposed in the field of psychology, affordance has been regarded as one of the important abilities that enable humans to understand and interact with the environment. Briefly, it captures the possibilities and effects of the actions of an agent applied to a specific object or, more generally, a part of the environment. This article provides a short review of the recent developments of deep robotic affordance learning (DRAL), which aims to develop data-driven methods that use the concept of affordance to aid in robotic tasks. We first classify these papers from a reinforcement learning (RL) perspective and draw connections between RL and affordances. The technical details of each category are discussed and their limitations are identified. We further summarize them and identify future challenges from the aspects of observations, actions, affordance representation, data-collection, and real-world deployment. A final remark is given at the end to propose a promising future direction of the RL-based affordance definition to include the predictions of arbitrary action consequences.

Topics & Concepts

AffordanceComputer scienceReinforcement learningPerspective (graphical)Human–computer interactionAction (physics)Artificial intelligenceRepresentation (politics)Field (mathematics)Software deploymentObject (grammar)Cognitive scienceSoftware engineeringPsychologyQuantum mechanicsMathematicsPure mathematicsPhysicsPoliticsLawPolitical scienceRobot Manipulation and LearningReinforcement Learning in RoboticsRobotic Locomotion and Control
Recent Advances of Deep Robotic Affordance Learning: A Reinforcement Learning Perspective | Litcius