The Feeling of Success
收藏sites.google.com2017-10-16 更新2025-02-19 收录
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资源简介:
The Feeling of Success 数据集由加州大学伯克利分校和麻省理工学院的研究团队创建,旨在研究触觉感知在机器人抓取任务中的作用。该数据集包含超过9000次抓取试验,涉及106种不同物体。数据来源为配备GelSight高分辨率触觉传感器的两指夹持器和前置RGB相机,记录抓取过程中的视觉与触觉信息。数据集创建过程通过自动化机器人操作完成,涵盖抓取前、抓取时和抓取后的多模态图像数据。其应用领域主要集中在机器人学习、抓取预测以及多模态感知研究,旨在通过视觉与触觉的融合提升机器人抓取的成功率和一致性。
The Feeling of Success dataset was created by a research team from the University of California, Berkeley and the Massachusetts Institute of Technology, aiming to investigate the role of tactile perception in robotic grasping tasks. This dataset contains over 9000 grasping trials involving 106 distinct objects. The data is collected using a two-finger gripper equipped with GelSight high-resolution tactile sensors and a front-mounted RGB camera, which records visual and tactile information throughout the grasping process. The dataset was constructed through automated robotic operations, covering multimodal image data across pre-grasping, during-grasping, and post-grasping stages. Its primary application domains focus on robotic learning, grasping prediction, and multimodal perception research, with the goal of improving the success rate and consistency of robotic grasping via the fusion of visual and tactile information.
提供机构:
加州大学伯克利分校和麻省理工学院
创建时间:
2017-10-16
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集名为'The Feeling of Success',专注于研究触觉感知在预测机器人抓取结果中的作用,通过结合视觉和触觉的多模态感知框架进行实验。数据集包含超过9,000次抓取试验,使用配备高分辨率GelSight触觉传感器的双指夹爪收集,旨在评估触觉数据对提升抓取性能的贡献。数据以hdf5格式提供,并附带测试代码和演示文件,支持深度学习模型训练和抓取结果预测分析。
以上内容由遇见数据集搜集并总结生成



