Trajectory image based dynamic gesture recognition with convolutional neural networks

Jiani Hu, Chunxiao Fan, Yue Ming
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引用次数: 14

Abstract

Robust dynamic gesture recognition algorithm is of great value for kinds of intelligent interactive systems. Most current researches on this field are based on trajectory time-series, which is unstable and limited. In this paper, we proposed a novel method to realize dynamic gesture recognition by analyzing the static trajectory images with Convolutional Neural Networks (CNN). First of all, a new motion-capture device named Leap Motion is used to track fingertip positions. An effective gesture spotting algorithm is applied to identify the start/end points of dynamic gestures. Then, we map the 3D fingertip coordinates to an image acquisition window frame by frame to get the corresponding trajectory images. After a series of preprocessing steps, the normalized trajectory images are fed to a CNN model. We test the performance of the proposed method on a self-built database, and experimental results show the effectiveness for dynamic gestures recognition of numbers 0-9, with the average recognition rate up to 98.8%.
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基于轨迹图像的卷积神经网络动态手势识别
鲁棒动态手势识别算法对各类智能交互系统具有重要的应用价值。目前该领域的研究大多基于轨迹时间序列,具有不稳定性和局限性。本文提出了一种利用卷积神经网络(CNN)分析静态轨迹图像,实现动态手势识别的新方法。首先,一种名为Leap Motion的新型动作捕捉设备用于跟踪指尖位置。采用一种有效的手势识别算法来识别动态手势的起始点和结束点。然后,将三维指尖坐标逐帧映射到图像采集窗口,得到相应的轨迹图像。经过一系列预处理步骤,将归一化的轨迹图像送入CNN模型。实验结果表明,该方法对数字0-9的动态手势识别是有效的,平均识别率可达98.8%。
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