基于内容的视频检索的统计建模方法

M. Naphade, S. Basu, John R. Smith, Ching-Yung Lin, Belle L. Tseng
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引用次数: 15

摘要

统计:基于内容的检索建模在最近的TREC视频基准练习的背景下进行了检查。TREC视频练习可以被视为一个测试平台,用于评估和比较多媒体检索的一组高级查询上的各种不同算法。我们报告了从统计学习理论中采用的技术的使用。我们的方法依赖于基于大数据集的模型训练。特别是,我们使用高斯混合模型等统计模型来构建各种语义概念的计算表示,包括火箭发射,室外绿化,天空等。训练需要大量的标注(标记)数据。因此,我们探索了在标注引擎中使用主动学习,以最大限度地减少要标记的训练样本的数量,以获得令人满意的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A statistical modeling approach to content based video retrieval
Statistical: modeling for content based retrieval is examined in the context of recent TREC Video benchmark exercise. The TREC Video exercise can be viewed as a test bed for evaluation and comparison of a variety of different algorithms on a set of high-level queries for multimedia retrieval. We report on the use of techniques adopted from statistical learning theory. Our method depends on training of models based on large data sets. Particularly, we use statistical models such as Gaussian mixture models to build computational representations for a variety of semantic concepts including rocket-launch, outdoor greenery, sky etc. Training requires a large amount of annotated (labeled) data. Thus, we explore the use of active learning for the annotation engine that minimizes the number of training samples to be labeled for satisfactory performance.
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