Posture estimation from Kinect image using RVM regression analysis

Hiroyuki Fujimura, Hyoungseop Kim, J. Tan, S. Ishikawa
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引用次数: 1

Abstract

Kinect is always used as a device to estimate posture. However, there are difficult to estimate the posture in the case of using a Kinect only. Therefore, we propose a method to estimate more accurately posture by synthesizing the posture obtained by Kinect and estimated by the regression analysis. In the regression analysis, we associate the HOG features and joint parameters that consists of 20 coordinate points. Posture data used for learning of the regression model is used difficult posture be obtained with Kinect. Similarity in brightness between frames at around each joint of the skeleton obtained by regression analysis and Kinect is calculated. Then we synthesize the posture by calculating a weighted average. In addition, RVM regression model is used to improve the accuracy of representing the posture by the proposed method.
基于RVM回归分析的Kinect图像姿态估计
Kinect一直被用作估计姿势的设备。然而,在只使用Kinect的情况下,很难估计姿势。因此,我们提出了一种通过综合Kinect获得的姿态和通过回归分析估计的姿态来更准确估计姿态的方法。在回归分析中,我们将HOG特征与由20个坐标点组成的关节参数相关联。用于学习回归模型的姿态数据是使用Kinect获得的困难姿态。计算由回归分析和Kinect得到的骨骼各关节周围帧间亮度的相似度。然后通过计算加权平均值来合成姿态。此外,利用RVM回归模型提高了该方法表示姿态的精度。
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