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A new framework of action recognition with discriminative parts, spatio-temporal and causal interaction descriptors

机译:具有区分性,时空和因果相互作用描述符的新动作识别框架

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摘要

To improve action recognition performance, a novel discriminative spectral clustering method is firstly proposed, by which the candidate parts with the internal trajectories being close in spatial position, consistent in appearance and similar in motion velocity are mined. Furthermore, the discriminative constraint is introduced to select discriminative parts. Meanwhile, by fully considering the local and global distributions of data, a new similarity matrix is constructed, which enhances clustering effect. Secondly, the spatio-temporal interaction descriptor and causal interaction descriptor are constructed respectively, which fully mine the spatio-temporal and implicit causal interactive relationships between parts. Finally, a new framework is proposed. By associating the discriminative parts, spatio-temporal and causal interaction descriptors together as the inputs of Latent Support Vector Machine (LSVM), the correlations between action categories and action parts as well as interaction descriptors are mined. Consequently, accuracy is enhanced. The extensive and adequate experiments demonstrate the effectiveness of the proposed method. (C) 2018 Elsevier Inc. All rights reserved.
机译:为了提高动作识别性能,首先提出了一种新的判别谱聚类方法,通过挖掘内部轨迹在空间位置上接近,外观一致,运动速度相似的候选部分。此外,引入区分约束以选择区分部分。同时,通过充分考虑数据的局部和全局分布,构造了一个新的相似度矩阵,增强了聚类效果。其次,分别构造时空交互描述符和因果交互描述符,充分挖掘各部分之间的时空和隐式因果交互关系。最后,提出了一个新的框架。通过将区分部分,时空和因果交互作用描述符关联在一起作为潜在支持向量机(LSVM)的输入,可以挖掘动作类别和动作部分之间的相关性以及交互作用描述符。因此,提高了准确性。大量而充分的实验证明了该方法的有效性。 (C)2018 Elsevier Inc.保留所有权利。

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