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Structure-Based Learning in Sampling, Representation and Analysis for Multimedia Big Data

机译:多媒体大数据采样,表示和分析中基于结构的学习

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This paper presents disruptive insights and techniques on structure-based learning for multimedia big data. Along this viewpoint, significant technical challenges for multimedia big data are investigated, including sampling and reconstruction, representation, and analysis. For multi-dimensional compressive sampling, the union of data-driven subspace is addressed via subspace learning with structured sparsity. To enrich the correlated reconstruction, spatio-temporal regularity is presented within various multimedia data. Inspired by this insight, multi-scale dictionary learning is proposed to leverage spatio-temporal structures for sparse representation and make learning-based structured prediction and analysis.
机译:本文提出了关于基于结构的多媒体大数据学习的突破性见解和技术。基于这种观点,研究了多媒体大数据的重大技术挑战,包括采样和重建,表示和分析。对于多维压缩采样,通过具有结构化稀疏性的子空间学习来解决数据驱动子空间的并集。为了丰富相关的重建,在各种多媒体数据中提供了时空规律性。受到这种见识的启发,提出了多尺度词典学习,以利用时空结构进行稀疏表示,并进行基于学习的结构化预测和分析。

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