Machine learning techniques rely on large and diverse datasets for generalization. Computer vision, natural language processing, and other applications can often reuse public datasets to train many different models. However, due to differences in physical configurations, it is challenging to leverage public datasets for training robotic control policies on new robot platforms or for new tasks. In this work, we propose a novel framework, ExAug to augment the experiences of different robot platforms from multiple datasets in diverse environments. ExAug leverages a simple principle: by extracting 3D information in the form of a point cloud, we can create much more complex and structured augmentations, utilizing both generating synthetic images and geometric-aware penalization that would have been suitable in the same situation for a different robot, with different size, turning radius, and camera placement. The trained policy is evaluated on two new robot platforms with three different cameras in indoor and outdoor environments with obstacles.
翻译:计算机视觉、自然语言处理和其他应用往往可以再利用公共数据集来训练许多不同的模型。然而,由于物理配置的不同,很难利用公共数据集来培训新机器人平台的机器人控制政策或新任务。在这项工作中,我们提出了一个新颖的框架,即ExAug,以扩大不同环境中多个数据集中不同机器人平台的经验。ExAug利用了一个简单的原则:通过以点云形式提取三维信息,我们可以创造更复杂和更结构化的增强功能,同时利用生成合成图像和几何觉觉觉觉悟的处罚方法,在同样的情况下适合不同机器人使用不同尺寸、半径和摄像头的位置。经过培训的政策在两个新的机器人平台上进行评估,在室内和室外环境中有三个不同相机,有障碍。