基于马尔可夫毯子的序列数据特征选择用于人体运动识别

Chao Zhuang, Hongjun Zhou, Mingyu You, Lei Liu
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引用次数: 2

摘要

人体运动识别是人机界面研究领域的一个热点,人体运动通常用时间序列传感器数据来表示。本文研究了基于特征选择序列Kinect骨骼数据的人体运动识别。我们从人体关节的笛卡尔坐标中提取特征,用于机器学习和识别。由于存在与传感器相关的误差,除了其他不确定因素外,人体运动序列传感器数据通常还包含一些不相关和误差的特征。为了提高识别率,减少原始序列数据中的不相关特征和错误特征是一种有效的方法。静态情况(如照片图像)的特征选择方法被广泛使用。然而,文献中很少有关于序列数据模型的研究,如HMM(隐马尔可夫模型)、CRF(条件随机场)、DBN(动态贝叶斯网络)等。本文提出了一种将马尔可夫包层法与包装法相结合的序列数据特征选择方法。采用四组人体运动数据和两种类型的学习器(HMM和DBN)对该算法进行了评估,结果表明该算法比传统方法和非特征选择模型具有更好的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markov blanket based sequential data feature selection for human motion recognition
Human motion recognition is a hot topic in the field of human-machine interface research, where human motion is often represented in time sequential sensor data. This paper investigates human motion recognition based on feature-selected sequential Kinect skeleton data. We extract features from the Cartesian coordinates of human body joints for machine learning and recognition. As there are errors associated with the sensor, in addition to other uncertain factors, human motion sequential sensor data usually includes some irrelative and error features. To improve the recognition rate, an effective method is to reduce the amount of irrelative and error features from original sequential data. Feature selection methods for static situations, such as photo images, are widely used. However, very few investigations in the literature discuss this with regards to sequential data models, such as HMM (Hidden Markov Model), CRF (Conditional Random Field), DBN (Dynamic Bayesian Network), and so on. Here, we propose a novel method which combines a Markov blanket with the wrapper method for sequential data feature selection. The proposed algorithm is assessed using four sets of human motion data and two types of learners (HMM and DBN), and the results show that it yields better recognition accuracy than traditional methods and non-feature selection models.
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