RMBench
收藏arXiv2023-03-07 更新2024-06-21 收录
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https://github.com/xiangyanfei212/RMBench-2022.git
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资源简介:
RMBench是由清华大学全球变化研究院等机构的研究人员开发的首个机器人操作基准数据集,专注于评估深度强化学习算法在复杂机器人操作任务中的性能。该数据集包含九种代表性机器人操作任务,如提升、放置、到达、堆叠和重新组装,旨在通过直接从观察到的原始像素中学习灵巧操作,评估算法的人类级能力。数据集创建过程中,研究人员实施并评估了多种强化学习算法,使用原始像素作为输入,以验证算法在连续状态和动作空间中的性能和训练稳定性。RMBench的应用领域主要集中在机器人操作的自动化和智能化,旨在解决机器人如何高效、准确地执行复杂操作任务的问题。
RMBench is the first robotic manipulation benchmark dataset developed by researchers from the Institute of Global Change at Tsinghua University and other institutions. It is dedicated to evaluating the performance of deep reinforcement learning (DRL) algorithms on complex robotic manipulation tasks. This dataset encompasses nine representative robotic manipulation tasks, including lifting, placing, reaching, stacking, and reassembly, aiming to assess the human-level capabilities of algorithms by learning dexterous manipulation directly from raw observed pixels. During the dataset development process, researchers implemented and evaluated multiple reinforcement learning algorithms that take raw pixels as input, to validate the algorithms' performance and training stability in continuous state and action spaces. The primary application domains of RMBench focus on the automation and intelligence of robotic manipulation, with the goal of addressing the challenge of how robots can efficiently and accurately perform complex manipulation tasks.
提供机构:
清华大学全球变化研究院
创建时间:
2022-10-20



