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View-invariant action recognition based on local linear dynamical system

机译:基于本地线性动力系统的视图 - 不变动作识别

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To address recognition of human actions under view changes, this paper proposes a view-invariant human action recognition approach based on local linear dynamical system and sparse coding. We utilize the bag-of-words (BoW) approach, local patches are modeled as linear dynamical systems and the model parameters are used as the descriptors of local patches. The model parameters capture the dynamics in human actions which is insensitive to view changes. The sparse coding algorithm is then applied to learn discriminative codebook and to avoid the initialization problem in the k-means algorithm. The proposed approach is tested on the IXMAS dataset. The experimental results demonstrate that this approach can recognize the viewinvariant actions, obtain high recognition rates, and achieve comparable results in cross-views action recognition.
机译:为了解决在视角变化下对人类行动的认可,本文提出了一种基于局部线性动态系统和稀疏编码的视野不变的人体行动识别方法。我们利用单词袋(弓)方法,本地补丁被建模为线性动态系统,并且模型参数用作本地补丁的描述符。模型参数捕获人类动态的动态,这是对查看更改不敏感的。然后应用稀疏编码算法来学习鉴别性码本并避免K-Means算法中的初始化问题。在IXMA数据集上测试了所提出的方法。实验结果表明,这种方法可以识别视域的动作,获得高识别率,并且实现了跨视图动作识别的可比结果。

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