基于多模态传感器和深度学习的智能软机器人抓手

Qiongfeng Shi, Zhongda Sun, Xianhao Le, J. Xie, Chengkuo Lee
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引用次数: 0

摘要

在这里,我们报告了一种智能软机器人抓手,该抓手由超声波遥感器和摩擦电传感器集成而成。由于超声波传感器具有非接触式的距离传感能力,因此可以通过横向扫描来获取物体的位置和高度等视觉信息。然后利用这些信息调整机器人抓取器到合适的抓取位置,然后进行抓取操作,通过摩擦电弯曲和触觉传感器获得物体的触觉信息。为了高效分析多模态信息,构建了基于特征级数据融合的深度学习神经网络,对14个物体进行分类,准确率达到99.3%,使智能软爪机器人能够适应各种智能应用。
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Intelligent Soft Robotic Gripper Enabled by Multimodal Sensors and Deep Learning
Here we report an intelligent soft robotic gripper enabled by the integration of an ultrasonic remote sensor and triboelectric sensors. Due to the noncontact distance sensing ability, the ultrasonic sensor is used to find the object’s visual information including position and height by lateral scanning. The information is then used for adjusting the robotic gripper to an appropriate grasp location, after which grasp operation is performed to obtain the object’s tactile information through triboelectric bending and tactile sensors. To efficiently analyze the multimodal information, a deep-learning neural network based on feature-level data fusion is constructed, which is able to achieve a high accuracy of 99.3% in classifying 14 objects, enabling the intelligent soft robotic gripper for various smart applications.
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