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首页> 外文期刊>International Journal of Computer Vision >Real-Time Body Pose Recognition Using 2D or 3D Haarlets
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Real-Time Body Pose Recognition Using 2D or 3D Haarlets

机译:使用2D或3D Haarlets进行实时身体姿势识别

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摘要

This article presents a novel approach to marker-less real-time pose recognition in a multicamera setup. Body pose is retrieved using example-based classification based on Haar wavelet-like features to allow for real-time pose recognition. Average Neighborhood Margin Maximization (ANMM) is introduced as a powerful new technique to train Haar-like features. The rotation invariant approach is implemented for both 2D classification based on silhouettes, and 3D classification based on visual hulls.
机译:本文提出了一种在多相机设置中实现无标记实时姿势识别的新颖方法。使用基于示例的分类(基于类似Haar小波的特征)检索身体姿势,以实现实时姿势识别。引入平均邻域余量最大化(ANMM)是一种强大的新技术,可训练类似Haar的特征。对于基于轮廓的2D分类和基于视觉船体的3D分类,均实现了旋转不变方法。

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