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Cyclops: Wearable and Single-Piece Full-Body Gesture Input Devices

机译:Cyclops:可穿戴和单件式全身手势输入设备

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This paper presents Cyclops, a single-piece wearable device that sees its user's whole body postures through an egocentric view of the user that is obtained through a fisheye lens at the center of the user's body, allowing it to see only the user's limbs and interpret body postures effectively. Unlike currently available body gesture input systems that depend on external cameras or distributed motion sensors across the user's body, Cyclops is a single-piece wearable device that is worn as a pendant or a badge. The main idea proposed in this paper is the observation of limbs from a central location of the body. Owing to the ego-centric view, Cyclops turns posture recognition into a highly controllable computer vision problem. This paper demonstrates a proof-of-concept device and an algorithm for recognizing static and moving bodily gestures based on motion history images (MHI) and a random decision forest (RDF). Four example applications of interactive bodily workout, a mobile racing game that involves hands and feet, a full-body virtual reality system, and interaction with a tangible toy are presented. The experiment on the bodily workout demonstrates that, from a database of 20 body workout gestures that were collected from 20 participants, Cyclops achieved a recognition rate of 79% using MHI and simple template matching, which increased to 92% with the more advanced machine learning approach of RDF.
机译:本文呈现独眼巨人,通过通过用户身体中心的Fisheye镜头获得的用户的Egocentric视图,将其用户的整个身体姿势看到其用户的整个身体姿势,允许它只能看到用户的四肢和解释身体姿势有效。与当前可用的身体手势输入系统不同,依赖于用户身体的外部摄像机或分布式运动传感器,Cyclops是一个单体可穿戴设备,其作为吊坠或徽章佩戴。本文提出的主要思想是从身体的中心位置观察肢体。由于以自我为中心的视图,Cyclops将姿势识别变为高度可控的计算机视觉问题。本文展示了概念证据,用于基于运动历史图像(MHI)和随机决策林(RDF)识别静态和移动体手势的算法。互动身体锻炼的四个例子应用,涉及手脚的移动赛车游戏,一个全身虚拟现实系统以及与有形玩具的互动。身体锻炼的实验表明,从20名参与者收集的20个身体锻炼手势的数据库中,通过MHI和简单的模板匹配来实现79%的识别率为79%,随着更先进的机器学习增加到92%。 RDF的方法。

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