论文标题
Magni人类运动数据集:准确,复杂,多模式,自然,语义丰富和上下文化
The Magni Human Motion Dataset: Accurate, Complex, Multi-Modal, Natural, Semantically-Rich and Contextualized
论文作者
论文摘要
社会机器人的快速发展刺激了人类运动建模,解释和预测,主动碰撞,人类机器人的相互作用和共享空间中共同损害的积极研究。现代的方法需要高质量的数据集进行培训和评估。但是,大多数可用数据集都遭受了不准确的跟踪数据或跟踪人员的不自然的脚本行为。本文试图通过在语义丰富的环境中提供运动捕获,眼睛凝视跟踪器和板载机器人传感器的高质量跟踪信息来填补这一空白。为了诱导记录参与者的自然行为,我们利用了松散的脚本化任务分配,这使参与者以自然而有目的的方式导航遍历动态的实验室环境。本文介绍的运动数据集设置了高质量的标准,因为使用语义信息可以增强现实和准确的数据,从而使新算法的开发不仅依赖于跟踪信息,还依赖于移动代理的上下文提示,静态和动态环境。
Rapid development of social robots stimulates active research in human motion modeling, interpretation and prediction, proactive collision avoidance, human-robot interaction and co-habitation in shared spaces. Modern approaches to this end require high quality datasets for training and evaluation. However, the majority of available datasets suffers from either inaccurate tracking data or unnatural, scripted behavior of the tracked people. This paper attempts to fill this gap by providing high quality tracking information from motion capture, eye-gaze trackers and on-board robot sensors in a semantically-rich environment. To induce natural behavior of the recorded participants, we utilise loosely scripted task assignment, which induces the participants navigate through the dynamic laboratory environment in a natural and purposeful way. The motion dataset, presented in this paper, sets a high quality standard, as the realistic and accurate data is enhanced with semantic information, enabling development of new algorithms which rely not only on the tracking information but also on contextual cues of the moving agents, static and dynamic environment.