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Hand gesture recognition using color and depth images enhanced with hand angular pose data

机译:使用彩色图像和深度图像进行手势识别,并增强手部角度姿势数据

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In this paper we propose a hand gesture recognition system that relies on color and depth images, and on a small pose sensor on the human palm. Monocular and stereo vision systems have been used for human pose and gesture recognition, but with limited scope due to limitations on texture, illumination, etc. New RGB-Depth sensors, that reply on projected light such as the Microsoft Kinect, have overcome many of those limitations. However, the point clouds for hand gestures are still in many cases noisy and partially occluded, and hand gesture recognition is not trivial. Hand gesture recognition is much more complex than full body motion, since we can have the hands in any orientation and can not assume a standing body on a ground plane. In this work we propose to add a tiny pose sensor to the human palm, with a minute accelerometer and magnetometer that combined provide 3D angular pose, to reduce the search space and have a robust and computationally light recognition method. Starting with the full depth image point cloud, segmentation can be performed by taking into account the relative depth and hand orientation, as well as skin color. Identification is then performed by matching 3D voxel occupancy against a gesture template database. Preliminary results are presented for the recognition of Portuguese Sign Language alphabet, showing the validity of the approach.
机译:在本文中,我们提出了一种手势识别系统,该系统依赖于颜色和深度图像以及人手掌上的小型姿态传感器。单目和立体视觉系统已用于人体姿势和手势识别,但由于纹理,照明等方面的限制,其范围受到限制。响应投影光的新型RGB深度传感器(例如Microsoft Kinect)已经克服了许多这些限制。但是,在许多情况下,手势的点云仍然嘈杂且部分被遮挡,手势识别也不是一件容易的事。手势识别比全身运动要复杂得多,因为我们可以使手处于任何方向,而不能在地面上假设站立的身体。在这项工作中,我们建议在人的手掌上增加一个微小的姿态传感器,并结合分钟加速度计和磁力计来提供3D角度姿态,以减少搜索空间并具有可靠的计算光识别方法。从全深度图像点云开始,可以通过考虑相对深度和手的方向以及肤色来进行分割。然后通过将3D体素占用与手势模板数据库进行匹配来执行识别。初步结果显示了对葡萄牙语手语字母的识别,表明了该方法的有效性。

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