抓住
滑倒
计算机科学
打滑(空气动力学)
人工智能
触觉传感器
滑脱
计算机视觉
机器人
计算
卷积神经网络
机器人学
算法
数学
工程类
航空航天工程
几何学
结构工程
程序设计语言
作者
Chuangri Zhao,Yang Yu,Zeqi Ye,Ziyang Tian,Yifan Zhang,Ling‐Li Zeng
标识
DOI:10.3389/fnbot.2025.1478758
摘要
Slip detection is to recognize whether an object remains stable during grasping, which can significantly enhance manipulation dexterity. In this study, we explore slip detection for five-finger robotic hands being capable of performing various grasp types, and detect slippage across all five fingers as a whole rather than concentrating on individual fingertips. First, we constructed a dataset collected during the grasping of common objects from daily life across six grasp types, comprising more than 200 k data points. Second, according to the principle of deep double descent, we designed a lightweight universal slip detection convolutional network for different grasp types (USDConvNet-DG) to classify grasp states (no-touch, slipping, and stable grasp). By combining frequency with time domain features, the network achieves a computation time of only 1.26 ms and an average accuracy of over 97% on both the validation and test datasets, demonstrating strong generalization capabilities. Furthermore, we validated the proposed USDConvNet-DG in real-time grasp force adjustment in real-world scenarios, showing that it can effectively improve the stability and reliability of robotic manipulation.
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