Prediction of object manipulation using tactile sensor information by a humanoid robot

Shigeyuki Uematsu, Yuichi Kobayashi, A. Shimizu, T. Kaneko
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引用次数: 2

Abstract

This paper presents a framework of lifting-up manipulation acquisition based on tactile sensing information by a humanoid robot. Feature extraction from sensor information, including tactile information, is presented using linear and nonlinear mappings. Information acquired from sensors is mapped to a lower-dimensional space for predicting success of lifting-up task. Robot judges success or failure of the manipulation using the obtained feature space and object orientation. The proposed method was evaluated by simulation with a humanoid robot. Sensor information obtained at the beginning stage of lifting-up task was utilized to predict whether the robot can accomplish the task without dropping down the object. It was verified that the proposed feature extraction provides sufficient information to predict success of the task. The prediction will be utilized to modify posture of the robot.
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利用触觉传感器信息预测仿人机器人的物体操作
提出了一种基于触觉感知信息的仿人机器人抬起动作采集框架。利用线性和非线性映射对传感器信息(包括触觉信息)进行特征提取。将传感器获取的信息映射到较低维空间,用于预测吊装任务的成功与否。机器人根据获得的特征空间和对象方向判断操作的成功或失败。通过一个仿人机器人的仿真对该方法进行了验证。利用在提升任务开始阶段获得的传感器信息来预测机器人能否在不放下物体的情况下完成任务。验证了所提出的特征提取方法为预测任务的成功提供了足够的信息。该预测结果将用于调整机器人的姿态。
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