Subspace clustering is a classical technique that has been widely used for human motion segmentation and other related tasks. However, existing segmentation methods often cluster data without guidance from prior knowledge, resulting in unsatisfactory segmentation results. To this end, we propose a novel Consistency and Diversity induced human Motion Segmentation (CDMS) algorithm. Specifically, our model factorizes the source and target data into distinct multi-layer feature spaces, in which transfer subspace learning is conducted on different layers to capture multi-level information. A multi-mutual consistency learning strategy is carried out to reduce the domain gap between the source and target data. In this way, the domain-specific knowledge and domain-invariant properties can be explored simultaneously. Besides, a novel constraint based on the Hilbert Schmidt Independence Criterion (HSIC) is introduced to ensure the diversity of multi-level subspace representations, which enables the complementarity of multi-level representations to be explored to boost the transfer learning performance. Moreover, to preserve the temporal correlations, an enhanced graph regularizer is imposed on the learned representation coefficients and the multi-level representations of the source data. The proposed model can be efficiently solved using the Alternating Direction Method of Multipliers (ADMM) algorithm. Extensive experimental results on public human motion datasets demonstrate the effectiveness of our method against several state-of-the-art approaches.
翻译:子空间集群是一种古典技术,广泛用于人类运动分解和其他相关任务;然而,现有的分解方法往往在未经事先知识指导的情况下将数据集中在一起,导致分解结果不尽人意;为此,我们提议采用新的一致性和多样性引致人类运动分解算法;具体地说,我们的模型将源和目标数据分解成不同的多层次特征空间,在不同的层次上进行分层转让分空学习,以获取多层次信息;实施多层次一致性学习战略,以缩小源数据和目标数据之间的域间差距;通过这种方式,可以同时探讨特定领域知识和域变量特性;此外,根据希尔伯特·施密特独立标准(HSCIC)引入了一个新的限制,以确保多层次分空间代表的多样性,从而可以探索多层次代表的互补性,以获取多层次信息;此外,为了保持时间相关性,对源数据和目标数据之间的域间差异进行强化的图形定律。为此,可以同时探讨特定领域的知识和域异性特性特性特性;此外,根据Hilbert Schmict 独立标准引入新的限制,确保多层次分层空间代表制。