Human Action Recognition Using Wavelets of Derived Beta Distributions

Neziha Jaouedi, Noureddine Boujnah, M. Bouhlel
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引用次数: 2

Abstract

In the framework of human machine interaction systems enhancement, we focus throw this paper on human behavior analysis and action recognition. Human behavior is characterized by actions and reactions duality (movements, psychological modification, verbal and emotional expression. Its worth noting that many information are hidden behind gesture, sudden motion points trajectories and speeds, many research works reconstructed an information retrieval issues. In our work we will focus on motion extraction, tracking and action recognition using wavelet network approaches. Our contribution uses an analysis of human subtraction by Gaussian Mixture Model (GMM) and body movement through trajectory models of motion constructed from kalman filter. These models allow to remove the noise using the extraction of the main motion features and constitute a stable base to identify the evolutions of human activity .Each modality is used to recognize a human action using wavelets of derived beta distributions approach. The proposed approach has been validated successfully on a subset of KTH and UCF sport database
利用衍生Beta分布的小波进行人体动作识别
在人机交互系统增强的框架下,重点研究了人的行为分析和动作识别。人类行为的特点是行动和反应的二元性(动作、心理修正、语言和情感表达)。值得注意的是,许多信息隐藏在手势、突然运动点的轨迹和速度背后,许多研究工作重构了信息检索问题。在我们的工作中,我们将重点关注运动提取,跟踪和动作识别使用小波网络方法。我们的贡献使用高斯混合模型(GMM)对人体减法进行分析,并通过卡尔曼滤波构建的运动轨迹模型对身体运动进行分析。这些模型允许通过提取主要运动特征来去除噪声,并构成一个稳定的基础来识别人类活动的演变。每个模态都被用来识别人类行为,使用衍生的β分布方法的小波。该方法已在KTH和UCF体育数据库的一个子集上成功验证
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