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A Feature Sequence Kernel for Video Concept Classification

机译:视频概念分类的特征序列内核

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Kernel methods such as Support Vector Machines are widely applied to classification problems, including concept detection in video. Nonetheless issues like modeling specific distance functions of feature descriptors or the temporal sequence of features in the kernel have received comparatively little attention in multimedia research. We review work on kernels for commonly used MPEG-7 visual features and propose a kernel for matching temporal sequences of these features. The sequence kernel is based on ideas from string matching, but does not require discretization of the input feature vectors and deals with partial matches and gaps. Evaluation on the TRECVID 2007 high-level feature extraction data set shows that the sequence kernel clearly outperforms the radial basis function (RBF) kernel and the MPEG-7 visual feature kernels using only single key frames.
机译:支持向量机等内核方法已广泛应用于分类问题,包括视频中的概念检测。然而,诸如建模特征描述符的特定距离函数或内核中特征的时间序列之类的问题在多媒体研究中受到的关注相对较少。我们回顾了针对常用MPEG-7视觉特征的内核的工作,并提出了用于匹配这些特征的时间序列的内核。序列内核基于字符串匹配的思想,但是不需要离散化输入特征向量,并且可以处理部分匹配和缺口。对TRECVID 2007高级特征提取数据集的评估表明,仅使用单个关键帧,序列内核明显优于径向基函数(RBF)内核和MPEG-7视觉特征内核。

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