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Temporal Multiple Correspondence Analysis for Big Data Mining in Soccer Videos

机译:足球视频中大数据挖掘的时间多重对应分析

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A multimedia big data mining framework consisting of two phases for interesting event detection in soccer videos has been proposed in this paper. In the pre-processing phase, it utilizes the multi-modal multi-filtering content analysis techniques for shot boundary detection and feature extraction. A pre-filtering process based on domain knowledge analysis is then applied to clean the noise and obtain a candidate set. In the event detection phase, a temporal multiple correspondence analysis (TMCA) algorithm that adopts an indicator weighting scheme is proposed to efficiently and effectively incorporate the temporal semantic information for improving the detection results. Furthermore, another enhanced MCA (EN-MCA) approach is presented to better capture the correspondence between feature items and classes by thoroughly utilizing the pair-wise principal components. Finally, a re-ranking procedure is performed to retrieve the missed interesting event. Our proposed semantic re-ranking framework is evaluated on a large collection of soccer videos for interesting event detection. The experimental results demonstrate the effectiveness of the proposed framework.
机译:本文提出了一个由足球足球视频中有趣事件检测的两个阶段组成的多媒体大数据挖掘框架。在预处理阶段,它利用多模式多过滤内容分析技术进行镜头边界检测和特征提取。然后应用基于领域知识分析的预过滤过程来清除噪声并获得候选集。在事件检测阶段,提出了一种采用指标加权方案的时间多重对应分析(TMCA)算法,以有效地结合时间语义信息,提高检测结果的准确性。此外,提出了另一种增强的MCA(EN-MCA)方法,通过充分利用成对的主成分来更好地捕获特征项和类之间的对应关系。最后,执行重新排序过程以检索错过的有趣事件。我们对大量足球视频进行了评估,从而提出了语义重新排序框架,以进行有趣的事件检测。实验结果证明了所提出框架的有效性。

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