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Co-Retrieval: A Boosted Reranking Approach for Video Retrieval

机译:共同检索:一种增强的视频检索重排方法

摘要

Video retrieval compares multimedia queries to items in a video collection in multiple dimensions and combines all the similarity scores into a final retrieval ranking. Although text is the most reliable feature for video retrieval, features from other modalities can provide complementary information. A reranking framework for video retrieval to augment text feature based retrieval with other evidence is presented. A boosted reranking algorithm called co-retrieval is then introduced, which combines a boosting type learning algorithm and a noisy label prediction scheme to select automatically the most useful (weak) features from multiple modalities. The proposed approach is evaluated with queries and video from the 65 h test collection of the 2003 NIST TRECVID evaluation and it achieves considerable improvement over several baseline retrieval algorithms.
机译:视频检索将多媒体查询与视频集合中多个维度的项目进行比较,并将所有相似度得分合并为最终的检索排名。尽管文本是视频检索中最可靠的功能,但其他形式的功能也可以提供补充信息。提供了一种视频检索的重排框架,以利用其他证据来增强基于文本特征的检索。然后介绍了一种称为共检索的增强排序算法,该算法结合了增强类型学习算法和噪声标签预测方案,可以从多种模式中自动选择最有用(弱)的特征。所提出的方法通过2003 NIST TRECVID评估的65小时测试集合中的查询和视频进行评估,与几种基线检索算法相比,它取得了显着改进。

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