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3D finger tracking and recognition image processing for real-time music playing with depth sensors

机译:使用深度传感器实时播放音乐的3D手指跟踪和识别图像处理

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In this research, we propose a state-of-the-art 3D finger gesture tracking and recognition method. We use the depth sensors for both hands in real time music playing. In line with the development of 3D depth cameras, we implemented a set of 3D gesture-based instruments, such as Virtual Cello and Virtual Piano, which need precise finger tracking in 3D space. For hands tracking, model-based tracking for left hand and appearance-based tracking for right hand techniques are proposed. To detect finger gestures, our approaches consist number of systematic steps as reducing noise in depth map and geometrical processing for Virtual Cello. For Virtual Piano, we introduce the Neural Network (NN) method to detect special hand gestures. It has Multilayer Perceptron (MLP) structure with back propagation training. Literature has few examples using touch screen as medium, with fixed-coordinates, and 2D-gestures to control MIDI input. The end users should no longer carry anything on their hands. We use Senz3D and Leap Motion due to a few technical benefits. Senz3D and Leap Motion use a closer distance to hands, thus detailed finger gestures can be precisely identified. In the past years, we announced a set of virtual musical instruments and the MINE Virtual Band. Our research work is tested on lab environment and professional theatrical stage. More information and demonstrations of the proposed method can be accessed at:http://video.minelab.tw/DETS/VMIB/.
机译:在这项研究中,我们提出了一种最新的3D手指手势跟踪和识别方法。在实时音乐播放中,我们使用两只手的深度传感器。为了配合3D深度相机的发展,我们实施了一套基于3D手势的工具,例如Virtual Cello和Virtual Piano,它们需要在3D空间中进行精确的手指跟踪。对于手跟踪,提出了针对左手的基于模型的跟踪和针对右手技术的基于外观的跟踪。为了检测手指手势,我们的方法包括减少虚拟地图的深度图和几何处理中的许多系统步骤。对于虚拟钢琴,我们引入了神经网络(NN)方法来检测特殊手势。它具有带有反向传播训练的多层感知器(MLP)结构。文献中很少有使用触摸屏为媒介,具有固定坐标和2D手势控制MIDI输入的示例。最终用户不应再随身携带任何东西。由于一些技术优势,我们使用Senz3D和Leap Motion。 Senz3D和Leap Motion使用的手距离更近,因此可以精确识别详细的手指手势。在过去的几年中,我们宣布了一套虚拟乐器和MINE虚拟乐队。我们的研究工作在实验室环境和专业戏剧舞台上进行了测试。有关该方法的更多信息和演示,请访问:http://video.minelab.tw/DETS/VMIB/。

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