首页 /研究 /Tactile Sensor-Based Estimation of Grasp Force and Contact State With Soft Fingers
MANIPULATION

Tactile Sensor-Based Estimation of Grasp Force and Contact State With Soft Fingers

Hun Jang, Joonbum Bae, Kevin Haninger

发表年份
2025
引用次数
1

摘要

Soft robotic fingers can improve adaptability in grasping and manipulation, compensating for geometric variation in object or environmental contact, but today lack force capacity and fine dexterity. Integrated tactile sensors can provide grasp and task information which can improve dexterity, but should ideally not require object-specific training. The total force vector exerted by a finger provides general information to the internal grasp forces (e.g. for grasp stability) and, when summed over fingers, an estimate of the external force acting on the grasped object (e.g. for task-level control). In this study, we investigate the efficacy of estimating finger force from integrated soft sensors and use it to estimate contact states. We use a neural network for force regression, collecting labelled data with a force/torque sensor and a range of test objects. Subsequently, we apply this model in a plug-in task scenario and demonstrate its validity in estimating contact states.

关键词

GRASPTactile sensorContact forceComputer scienceArtificial intelligencePhysicsRobotClassical mechanics

相关论文

查看 MANIPULATION 分类全部论文