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Deep Learning in Robotics: Survey on Model Structures and Training Strategies

Artúr I. Károly, Péter Galambos, József Kuti, Imre J. Rudas

2020IEEE Transactions on Systems Man and Cybernetics Systems139 citationsDOIOpen Access PDF

Abstract

The ever-increasing complexity of robot applications induces the need for methods to approach problems with no (viable) analytical solution. Deep learning (DL) provides a set of tools to address this kind of problems. This survey presents a categorization of the major challenges in robotics that leverage DL technologies and introduces representative examples of successful solutions for the described problems. We also consider the question when and whether to use modular, monolithic models or end-to-end DL, in order to provide a guideline for the selection of the correct model structure and training strategy. By doing so, the current role and adaptability of different techniques at different hierarchical levels of a robot-application can be highlighted, thus providing a well-structured basis to assist future approaches.

Topics & Concepts

Artificial intelligenceAdaptabilityLeverage (statistics)RoboticsComputer scienceMachine learningCategorizationRobotDeep learningModular designSet (abstract data type)Programming languageBiologyOperating systemEcologyRobot Manipulation and LearningMachine Learning and AlgorithmsMachine Learning in Materials Science
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