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Union of Data-driven Subspaces via Subspace Clustering for Compressive Video Sampling

机译:通过子空间聚类对压缩视频采样的子空间群集联盟

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The standard Compressive Sensing (CS) theory indicates that robust signals recovery can be obtained from just a few collection of incoherent projections. To further decrease the necessary measurements, an alternative to the generic CS framework assumes that signals lie on a union of subspaces (UoS). However, UoS model is limited to the specific type of signal regularity. This paper considers a more general and adaptive model which presumes that signals lie on a union of data-driven subspaces (UoDS). The UoDS model inherits the merit from UoS that signals have structural sparse representation. Meanwhile, it allows to recover signals using fewer degrees of freedom for a desirable recovery quality than UoS. To construct the UoDS model, a subspace clustering method is utilized to form an adaptive group set. The corresponding adaptive basis is learned by applying a linear subspace learning (LSL) method to each group. A corresponding recovery algorithm with provable performance is also given. Experiment results demonstrate that the proposed model for video sampling is valid and applicable.
机译:标准压缩感测(CS)理论表明,可以从几个非连贯的投影中获得稳健的信号恢复。为了进一步减少必要的测量,赋予通用CS框架的替代方法假定信号位于子空间的联合(U​​OS)上。但是,UOS模型限于特定类型的信号规律性。本文考虑了更通用的和自适应模型,推定了信号位于数据驱动子空间的联盟(UOD)上。 UOD模型继承了信号具有结构稀疏表示的UOS的优点。同时,它允许使用更少的自由度来恢复比UOS的更少自由度。为了构建UODS模型,利用子空间聚类方法来形成自适应组集。通过向每个组应用线性子空间学习(LSL)方法来学习相应的自适应基础。还给出了一种具有可提供性能的相应恢复算法。实验结果表明,用于视频采样的建议模型是有效和适用的。

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