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On-line human action recognition based on P-LDCNF

机译:基于P-LDCNF的在线人体动作识别

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To better describe the substructures and external dynamics of human action, a probabilistic method of human action recognition is presented that is based on an improved conditional random field (CRF) model. In our method, feature functions are redefined to describe the conversions between the substructures, and a neural network layer is used to perform a pretreatment process. A probabilistic latent-dynamic conditional neural fields (P-LDCNF) model with transition probabilities is proposed in our method, which can be used for online human action recognition. Specifically, spatial-temporal interesting points are extracted as features in the model. The efficiency of the proposed method was evaluated using unsegmented action sequences from the Weizmann and KTH datasets. The experimental results showed that P-LDCNF compares favorably with CRF, hidden conditional random field (HCRF), and latent-dynamic conditional random field (LDCRF) models for online human action recognition tasks.
机译:为了更好地描述人类行为的子结构和外部动力学,提出了一种基于改进的条件随机场(CRF)模型的人类行为识别的概率方法。在我们的方法中,特征函数被重新定义以描述子结构之间的转换,并且使用神经网络层执行预处理过程。我们的方法提出了一个具有转移概率的概率潜在动态条件神经场(P-LDCNF)模型,该模型可用于在线人类动作识别。具体而言,将时空兴趣点提取为模型中的特征。使用来自Weizmann和KTH数据集的未分段动作序列评估了所提出方法的效率。实验结果表明,P-LDCNF与CRF,隐藏条件随机场(HCRF)和潜动态条件随机场(LDCRF)模型在在线人类动作识别任务方面具有良好的对比。

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