Combination Strategies for 2D Features to Recognize 3D Gestures

O. Aran
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Abstract

In this study, using a two camera setup, we designed a system that recognizes 3D gestures. When 3D reconstruction is not possible or infeasible, combining 2D hand trajectories at feature or decision level increases the system performance drastically. The trajectories are extracted by tracking the center-of-mass of the hand and the width, height and orientation of the enclosing ellipse. Trajectories are then smoothed using a Kalman filter. Following the translation and scale normalization, the trajectories are modelled using hidden Markov models (HMM) and using support vector machines (SVM) by converting the trajectories to fixed length using re-sampling. Trajectories extracted from different cameras are combined at different levels and the effect to the system performance is observed. The best result is obtained by modelling the trajectories using HMMs and combining at decision level, with %1 error in 210 test examples
二维特征组合策略识别三维手势
在这项研究中,我们使用双摄像头设置,设计了一个识别3D手势的系统。当三维重建不可能或不可行时,在特征或决策层面结合二维手轨迹可以显著提高系统性能。通过跟踪手的质心和外围椭圆的宽度、高度和方向来提取轨迹。然后使用卡尔曼滤波器平滑轨迹。在平移和尺度归一化之后,使用隐马尔可夫模型(HMM)和支持向量机(SVM)对轨迹进行建模,通过重采样将轨迹转换为固定长度。从不同摄像机提取的轨迹在不同层次上进行组合,观察对系统性能的影响。利用hmm模型对轨迹进行建模,并在决策层面进行组合,得到了最佳结果,210个测试样例的误差为%1
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