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Latent semantic indexing for semantic content detection of video shots

机译:潜在语义索引用于视频镜头的语义内容检测

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摘要

Low-level features are now becoming insufficient to build efficient content-based retrieval systems. The interest of users is not any more to retrieve visually similar content, but they expect retrieval systems to find documents with similar semantic content. Bridging the gap between low-level features and semantic content is a challenging task necessary for future retrieval systems. Latent semantic indexing (LSI) was successfully introduced to efficiently index text documents. We propose to adapt this technique to efficiently represent the visual content of video shots for semantic content detection. Although we restrict our approach to visual features, it can be extended with minor changes to audio and motion features to build a multi-modal system. The semantic content is then detected thanks to two classifiers: k-nearest neighbors and neural network classifiers. Finally, in the experimental section we show the performances of each classifier and the performance gain obtained with LSI features compared to traditional features.
机译:低级功能现在不足以构建有效的基于内容的检索系统。用户的兴趣不再是检索视觉上相似的内容,而是他们希望检索系统查找具有相似语义内容的文档。缩小底层特征和语义内容之间的差距是未来检索系统所必需的具有挑战性的任务。成功引入了潜在语义索引(LSI)以有效地索引文本文档。我们建议采用这种技术来有效地表示视频镜头的视觉内容,以进行语义内容检测。尽管我们将方法限制在视觉功能上,但可以通过对音频和运动功能进行较小的更改来扩展它,以构建多模式系统。然后,通过两个分类器检测语义内容:k最近邻和神经网络分类器。最后,在实验部分中,我们展示了每个分类器的性能以及与传统功能相比使用LSI功能获得的性能增益。

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