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Real-Time Gesture Recognition from Depth Data through Key Poses Learning and Decision Forests

机译:通过关键姿势学习和决策森林从深度数据进行实时手势识别

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摘要

Human gesture recognition is a challenging task with many applications. The popularization of real time depth sensors even diversifies potential applications to end-user natural user interface (NUI). The quality of such NUI highly depends on the robustness and execution speed of the gesture recognition. This work introduces a method for real-time gesture recognition from a noisy skeleton stream, such as the ones extracted from Kinect depth sensors. Each pose is described using a tailored angular representation of the skeleton joints. Those descriptors serve to identify key poses through a multi-class classifier derived from Support Vector learning machines. The gesture is labeled on-the-fly from the key pose sequence through a decision forest, that naturally performs the gesture time warping and avoids the requirement for an initial or neutral pose. The proposed method runs in real time and shows robustness in several experiments.
机译:手势识别在许多应用中都是一项艰巨的任务。实时深度传感器的普及甚至将潜在的应用多样化到最终用户自然用户界面(NUI)。这种NUI的质量在很大程度上取决于手势识别的鲁棒性和执行速度。这项工作介绍了一种用于从嘈杂的骨骼流(例如从Kinect深度传感器提取的骨骼流)中进行实时手势识别的方法。每个姿势都使用量身定制的骨骼关节角度描述。这些描述符用于通过从支持向量学习机派生的多类分类器来识别关键姿势。从关键姿势序列通过决策森林即时标记该姿势,该决策森林自然执行姿势时间扭曲并避免要求初始姿势或中性姿势。所提出的方法实时运行,并在几个实验中显示出鲁棒性。

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