Litcius/Paper detail

Pressing and Rubbing: Physics-Informed Features Facilitate Haptic Terrain Classification for Legged Robots

Liang Ding, Peng Xu, Zhengyang Li, Ruyi Zhou, Haibo Gao, Zongquan Deng, Guangjun Liu

2022IEEE Robotics and Automation Letters27 citationsDOI

Abstract

Non-geometric hazards like sinkage and slipping, correlated to terrain categories, have an apparent effect on the locomotion of legged robots. Tactile-based terrain classification is a more accurate way to distinguish terrains in different properties than the vision, but selecting representative features instead of cumbersome ones in the complex foot-terrain interaction for efficient classification is still a challenge. In this letter, two specific leg motions are designed to inspect terrain bearing and friction properties, and manually designed features are extracted based on the foot-terrain interaction model for classification. These features are physics-informed, tidy and interpretable, and can be used with different classifiers under different foot configurations. Four classic classifiers with physics-informed features are trained for terrain classification and evaluated on our self-developed dataset. At the same time, the proposed method was compared with other two methods: an artificial feature extraction method and a CNN-based method. The results show that our proposed method reaches remarkable precision in terrain classification and can still guarantee a high accuracy under a small number of training samples.

Topics & Concepts

TerrainArtificial intelligenceRobotComputer scienceSlippingFeature extractionComputer visionRubbingPattern recognition (psychology)Feature (linguistics)Haptic technologyMachine learningEngineeringGeographyCartographyMechanical engineeringPhilosophyLinguisticsRobotic Locomotion and ControlRobot Manipulation and LearningProsthetics and Rehabilitation Robotics