Leveraging Hierarchical Parametric Networks for Skeletal Joints Based Action Segmentation and Recognition

Di Wu, Ling Shao
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引用次数: 206

Abstract

Over the last few years, with the immense popularity of the Kinect, there has been renewed interest in developing methods for human gesture and action recognition from 3D skeletal data. A number of approaches have been proposed to extract representative features from 3D skeletal data, most commonly hard wired geometric or bio-inspired shape context features. We propose a hierarchial dynamic framework that first extracts high level skeletal joints features and then uses the learned representation for estimating emission probability to infer action sequences. Currently gaussian mixture models are the dominant technique for modeling the emission distribution of hidden Markov models. We show that better action recognition using skeletal features can be achieved by replacing gaussian mixture models by deep neural networks that contain many layers of features to predict probability distributions over states of hidden Markov models. The framework can be easily extended to include a ergodic state to segment and recognize actions simultaneously.
基于层次参数网络的骨骼关节动作分割与识别
在过去的几年里,随着Kinect的巨大普及,人们对开发基于3D骨骼数据的人类手势和动作识别方法重新产生了兴趣。已经提出了许多方法来从3D骨骼数据中提取代表性特征,最常见的是硬连线几何或生物启发形状上下文特征。我们提出了一个分层的动态框架,首先提取高层次的骨骼关节特征,然后使用学习到的表示来估计发射概率来推断动作序列。目前,高斯混合模型是隐马尔可夫模型发射分布建模的主流技术。我们表明,通过包含多层特征的深度神经网络来预测隐马尔可夫模型状态的概率分布,可以通过骨骼特征代替高斯混合模型来实现更好的动作识别。该框架可以很容易地扩展到包含遍历状态,以同时分割和识别动作。
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