使用回归森林的实时手指动作捕捉

Pei-Chi Hsieh, Shih-Chung Hsu, Chung-Lin Huang
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引用次数: 1

摘要

本文提出了一种基于Kinect的实时手指动作捕捉方法。它包括三个模块:手部区域分割、特征点提取和关节角度估计。第一个模块从深度图像中提取手部区域。第二个模块使用像素分类器将手部区域分割成8个特征子区域和残差子区域。提取每个特征子区域的质心作为特征点。第三个模块将这些特征点转换为特征向量,利用回归森林进行手指关节角度估计。该估计过程具有速度快、精度高的优点,并且可以处理新手势的手指运动参数。实验结果表明,该方法能够捕获手部平面内全局旋转的手指运动参数,并具有足够的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Hand Finger Motion Capturing Using Regression Forest
This paper proposes a real-time hand finger motion capturing method using Kinect. It consists of three modules: hand region segmentation, feature points extraction, and joint angle estimation. The first module extracts the hand region from the depth image. The second module applies a pixel classifier to segment the hand region into eight characteristic sub-regions and the residual sub-region. The centroid of each characteristic sub-region is extracted as the feature point. The third module converts these feature points to the feature vector for finger joint angle estimation by using the regression forest. The estimation process has both the speed and precision advantages and it can also deal with the hand finger motion parameter of novel hand gesture. The experimental results show that our method can capture the hand finger motion parameters of global in-plane hand rotation with sufficient estimation accuracy.
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