{"title":"KIT手工操作数据集","authors":"F. Krebs, Andre Meixner, Isabel Patzer, T. Asfour","doi":"10.1109/HUMANOIDS47582.2021.9555788","DOIUrl":null,"url":null,"abstract":"Learning models of bimanual manipulation tasks from human demonstration requires capturing human body and hand motions, as well as the objects involved in the demonstration, to provide all the information needed for learning manipulation task models on symbolic and subsymbolic level. We provide a new multi-modal dataset of bimanual manipulation actions consisting of accurate human whole-body motion data, full configuration of both hands, and the 6D pose and trajectories of all objects involved in the task. The data is collected using five different sensor systems: a motion capture system, two data gloves, three RGB-D cameras, a headmounted egocentric camera and three inertial measurement units (IMUs). The dataset includes 12 actions of bimanual daily household activities performed by two healthy subjects with a large number of intra-action variations and three repetitions of each action variation, resulting in 588 recorded demonstrations. A total of 21 household items are used to perform the various actions. In addition to the data collection, we developed tools and methods for the standardized representation and organization of multi-modal sensor data in large-scale human motion databases. We extended our Master Motor Map (MMM) framework to allow the mapping of collected demonstrations to a reference model of the human body as well as the segmentation and annotation of recorded manipulation tasks. The dataset includes raw sensor data, normalized data in the MMM format and annotations, and is made publicly available in the KIT Whole-Body Human Motion Database.","PeriodicalId":320510,"journal":{"name":"2020 IEEE-RAS 20th International Conference on Humanoid Robots (Humanoids)","volume":"1 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-07-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"13","resultStr":"{\"title\":\"The KIT Bimanual Manipulation Dataset\",\"authors\":\"F. Krebs, Andre Meixner, Isabel Patzer, T. Asfour\",\"doi\":\"10.1109/HUMANOIDS47582.2021.9555788\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Learning models of bimanual manipulation tasks from human demonstration requires capturing human body and hand motions, as well as the objects involved in the demonstration, to provide all the information needed for learning manipulation task models on symbolic and subsymbolic level. We provide a new multi-modal dataset of bimanual manipulation actions consisting of accurate human whole-body motion data, full configuration of both hands, and the 6D pose and trajectories of all objects involved in the task. The data is collected using five different sensor systems: a motion capture system, two data gloves, three RGB-D cameras, a headmounted egocentric camera and three inertial measurement units (IMUs). The dataset includes 12 actions of bimanual daily household activities performed by two healthy subjects with a large number of intra-action variations and three repetitions of each action variation, resulting in 588 recorded demonstrations. A total of 21 household items are used to perform the various actions. In addition to the data collection, we developed tools and methods for the standardized representation and organization of multi-modal sensor data in large-scale human motion databases. We extended our Master Motor Map (MMM) framework to allow the mapping of collected demonstrations to a reference model of the human body as well as the segmentation and annotation of recorded manipulation tasks. 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引用次数: 13
摘要
从人体演示中学习双手操作任务模型需要捕获人体和手部动作以及演示中涉及的对象,以提供在符号和亚符号层面学习操作任务模型所需的所有信息。我们提供了一个新的双手操作动作的多模态数据集,包括准确的人体全身运动数据,双手的完整配置,以及任务中所有物体的6D姿态和轨迹。数据收集使用五种不同的传感器系统:一个运动捕捉系统,两个数据手套,三个RGB-D摄像头,一个头戴式自我中心摄像头和三个惯性测量单元(imu)。该数据集包括由两名健康受试者进行的12个手工日常家庭活动动作,其中有大量的动作内变化,每个动作变化重复3次,共记录了588次演示。总共有21个家庭物品被用来执行各种动作。除了数据收集之外,我们还开发了用于大规模人体运动数据库中多模态传感器数据的标准化表示和组织的工具和方法。我们扩展了Master Motor Map (MMM)框架,允许将收集到的演示映射到人体的参考模型,以及对记录的操作任务进行分割和注释。该数据集包括原始传感器数据、规范化的MMM格式数据和注释,并在KIT全身人体运动数据库中公开提供。
Learning models of bimanual manipulation tasks from human demonstration requires capturing human body and hand motions, as well as the objects involved in the demonstration, to provide all the information needed for learning manipulation task models on symbolic and subsymbolic level. We provide a new multi-modal dataset of bimanual manipulation actions consisting of accurate human whole-body motion data, full configuration of both hands, and the 6D pose and trajectories of all objects involved in the task. The data is collected using five different sensor systems: a motion capture system, two data gloves, three RGB-D cameras, a headmounted egocentric camera and three inertial measurement units (IMUs). The dataset includes 12 actions of bimanual daily household activities performed by two healthy subjects with a large number of intra-action variations and three repetitions of each action variation, resulting in 588 recorded demonstrations. A total of 21 household items are used to perform the various actions. In addition to the data collection, we developed tools and methods for the standardized representation and organization of multi-modal sensor data in large-scale human motion databases. We extended our Master Motor Map (MMM) framework to allow the mapping of collected demonstrations to a reference model of the human body as well as the segmentation and annotation of recorded manipulation tasks. The dataset includes raw sensor data, normalized data in the MMM format and annotations, and is made publicly available in the KIT Whole-Body Human Motion Database.