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Dimensionality Reduction for Descriptor Generation in Rushes Editing

机译:Rushes编辑中的描述符生成的维数减少

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Rushes editing, which enables the computer to edit the film like a professional film cutter based on the noisy and redundant footage, is an active topic in multimedia semantic analysis. The most critical problem of rushes editing is how to generate an effective, efficient, and robust descriptor for the footage content analysis. This paper proposes a novel non-linear dimensionality reduction algorithm called Multi-Layer Isometric Feature Mapping (ML-Isomap) for automatic descriptor generation. First, a K-nearest Neighbor Based Clustering (KNBC) algorithm is utilized to partition the high-dimensional data points into a set of data blocks. Second, intra-cluster graphs are constructed based on the individual character of each data block to build the basic layer for the ML-Isomap. Third, the inter-cluster graph is constructed by analyzing the interrelation among these isolated data blocks to build the hyper-layers for the ML-Isomap. Finally, all the data points are mapped into the unique low-dimensional feature space by keeping the corresponding relations of the multiple layers in the high-dimensional feature space to the greatest extent. The comparative experiments on synthetic data as well as the real rushes editing tasks demonstrate that the proposed algorithm can generate the effective descriptor with much lower dimensions for the semantic video analysis.
机译:赶紧编辑,这使得计算机能够根据嘈杂和冗余镜头根据专业薄膜切割机编辑电影,是多媒体语义分析中的一个活动主题。 Rushes编辑的最关键问题是如何为素材内容分析生成有效,有效和强大的描述符。本文提出了一种新的非线性维度减少算法,称为用于自动描述符生成的多层等距特征映射(ML-ISOMAP)。首先,利用K-Collest邻基于基于邻的聚类(KNBC)算法将高维数据点分配给一组数据块。其次,基于每个数据块的各个字符构建簇内图以构建ML-ISOMAP的基本层。第三,群集间曲线图是通过分析这些分离的数据块之间的相互关系来构建超层为ML-Isomap的CWME构成。最后,通过将高维特征空间中的多层相应的关系保持最大程度,所有数据点都被映射到唯一的低维特征空间。合成数据的比较实验以及真正的仓促编辑任务表明,所提出的算法可以生成具有远低维度的有效描述符的语义视频分析。

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