Metadata-Weighted Score Fusion for Multimedia Event Detection

Scott McCloskey, Jingchen Liu
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引用次数: 1

Abstract

We address the problem of multimedia event detection from videos captured 'in the wild,' in particular the fusion of cues from multiple aspects of the video's content: detected objects, observed motion, audio signatures, etc. We employ score fusion, also known as late fusion, and propose a method that learns local weightings of the various base classifier scores which respect the performance differences arising from the video quality. Classifiers working with visual texture features, for instance, are given reduced weight when applied to subsets of the video corpus with high compression, and the weights associated with the other classifiers are adjusted to reflect this lack of confidence. We present a method to automatically partition the video corpus into relevant subsets, and to learn local weightings which optimally fuse scores on a particular subset. Improvements in event detection performance are demonstrated on the TRECVid Multimedia Event Detection (MED) MED Test dataset, and comparisons are provided to several other score fusion methods.
基于元数据加权评分融合的多媒体事件检测
我们解决了从“野外”捕获的视频中检测多媒体事件的问题,特别是融合来自视频内容的多个方面的线索:检测到的物体、观察到的运动、音频签名等。我们采用分数融合,也称为后期融合,并提出了一种学习各种基分类器分数的局部加权的方法,该方法尊重视频质量引起的性能差异。例如,使用视觉纹理特征的分类器在应用于具有高压缩的视频语料库子集时被赋予减少的权重,并且与其他分类器相关联的权重被调整以反映这种缺乏信心。我们提出了一种自动将视频语料库划分为相关子集的方法,并学习局部加权,以最优地融合特定子集上的分数。在TRECVid多媒体事件检测(MED) MED测试数据集上展示了事件检测性能的改进,并与其他几种分数融合方法进行了比较。
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