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Progress in symmetry preserving robot perception and control through geometry and learning

Maani Ghaffari, Ray Zhang, Minghan Zhu, Chien Erh Lin, Tzu-Yuan Lin, Sangli Teng, Tingjun Li, Tianyi Liu, Jingwei Song

2022Frontiers in Robotics and AI13 citationsDOIOpen Access PDF

Abstract

This article reports on recent progress in robot perception and control methods developed by taking the symmetry of the problem into account. Inspired by existing mathematical tools for studying the symmetry structures of geometric spaces, geometric sensor registration, state estimator, and control methods provide indispensable insights into the problem formulations and generalization of robotics algorithms to challenging unknown environments. When combined with computational methods for learning hard-to-measure quantities, symmetry-preserving methods unleash tremendous performance. The article supports this claim by showcasing experimental results of robot perception, state estimation, and control in real-world scenarios.

Topics & Concepts

RobotComputer scienceArtificial intelligenceRoboticsSymmetry (geometry)PerceptionGeneralizationControl (management)EstimatorState (computer science)Measure (data warehouse)AlgorithmMathematicsGeometryData miningMathematical analysisStatisticsNeuroscienceBiologyRobotics and Sensor-Based LocalizationAdvanced Vision and ImagingRobotic Path Planning Algorithms
Progress in symmetry preserving robot perception and control through geometry and learning | Litcius