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Robust Hand Gesture Input Using Computer Vision, Inertial Measurement Unit (IMU) and Flex Sensors

机译:使用计算机视觉,惯性测量单元(IMU)和柔性传感器的可靠手势输入

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Capturing the hand gesture is useful in many virtual reality applications like video games and surgery training for medical students. In this project, we have designed and built a hand tracking glove that is able to track the pose of the hand and the motion of the five fingers. We have employed sensing data from three different kinds of sensors, which includes a camera, an inertial measurement unit (IMU) and flex sensors. The ArUco marker is attached to the back of the glove to obtain the pose information of the hand from the camera. The Kalman filter is applied to stabilize the pose acquired. An IMU is adopted to increase the sampling rate up to 100Hz. Our system uses a sensor fusion scheme. Even if the ArUco marker is occluded temporarily, the pose of the glove can still be obtained. We also make use of the flex sensor to track the finger motion. In our experiment, it is shown that the motion of the hand and fingers can be obtained correctly. A virtual hand model in the computer moves simultaneously with the human hand in the real space.
机译:捕获手势在许多虚拟现实应用程序(例如视频游戏和医学生的手术培训)中很有用。在该项目中,我们设计并制造了一种手跟踪手套,该手套可以跟踪手的姿势和五个手指的运动。我们采用了来自三种不同类型的传感器的传感数据,这些传感器包括照相机,惯性测量单元(IMU)和柔性传感器。 ArUco标记器附在手套的背面,用于从相机获取手的姿势信息。应用卡尔曼滤波器来稳定获取的姿势。采用IMU将采样率提高到100Hz。我们的系统使用传感器融合方案。即使ArUco标记暂时被堵塞,仍可以获取手套的姿势。我们还利用弯曲传感器来跟踪手指的运动。在我们的实验中,表明可以正确获得手和手指的运动。计算机中的虚拟手模型与人的手在真实空间中同时移动。

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