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Full-Body Human Motion Capture from Monocular Depth Images

机译:从单眼深度图像捕获人体的全动作

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Optical capturing of human body motion has many practical applications, ranging from motion analysis in sports and medicine, over ergonomy research, up to computer animation in game and movie production. Unfortunately, many existing approaches require expensive multi-camera systems and controlled studios for recording, and expect t he person to wear special marker suits. Furthermore, marker-less approaches demand dense camera arrays and indoor recording. These requirements and the high acquisition cost of the equipment makes it applicable only to a small number of people. This has changed in recent years. when the availability of inexpensive depth sensors, such as time-of-flight cameras or the Microsoft Kinect has spawned new research on tracking human motions from monocular depth images. These approaches have the potential to make motion capture accessible to much larger user groups. However. despite significant progress over the last years, there are still unsolved challenges that limit applicability of depth-based monocular full body motion capture. Algorithms are challenged by very noisy sensor data, (self) occlusions, or other ambiguities implied by the limited information that a depth sensor can extract of the scene. In this article, we give an overview on the state-of-the-art in full body human motion capture using depth cameras. Especially, we elaborate on the challenges current algorithms face and discuss possible solutions. Furthermore, we investigate how the integration of additional sensor modalities may help to resolve some of the ambiguities and improve tracking results.
机译:光学捕获人体运动具有许多实际应用,从运动和医学中的运动分析,人体工程学研究到游戏和电影制作中的计算机动画,不一而足。不幸的是,许多现有方法需要昂贵的多摄像机系统和受控的录音室来进行记录,并且期望人们穿着特殊的标记服。此外,无标记方法需要密集的摄像机阵列和室内记录。这些要求和设备的高昂购置成本使其仅适用于少数人。近年来,情况发生了变化。当廉价的深度传感器(例如飞行时间相机或Microsoft Kinect)的出现催生了从单眼深度图像跟踪人体运动的新研究。这些方法具有使运动捕捉可供更大的用户组使用的潜力。然而。尽管在过去的几年中取得了长足的进步,但仍然存在一些尚未解决的挑战,这些挑战限制了基于深度的单眼全身运动捕捉的适用性。深度传感器可以提取场景的有限信息隐含了非常嘈杂的传感器数据,(自身)遮挡或其他模糊性,从而挑战了算法。在本文中,我们概述了使用深度相机进行人体人体动作捕捉的最新技术。特别是,我们详细阐述了当前算法面临的挑战,并讨论了可能的解决方案。此外,我们研究了附加传感器模态的集成如何帮助解决某些歧义并改善跟踪结果。

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