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Temporal aggregation for large-scale query-by-image video retrieval

机译:时间聚合,用于大规模按图像查询视频检索

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We address the challenge of using image queries to retrieve video clips from a large database. Using binarized Fisher Vectors as global signatures, we present three novel contributions. First, an asymmetric comparison scheme for binarized Fisher Vectors is shown to boost retrieval performance by 0.27 mean Average Precision, exploiting the fact that query images contain much less clutter than database videos. Second, aggregation of frame-based local features over shots is shown to achieve retrieval performance comparable to aggregation of those local features over single frames, while reducing retrieval latency and memory requirements by more than 3X. Several shot aggregation strategies are compared and results indicate that most perform equally well. Third, aggregation over scenes, in combination with shot signatures, is shown to achieve one order of magnitude faster retrieval at comparable performance. Scene aggregation also outperforms the recently proposed aggregation in random groups.
机译:我们解决了使用图像查询从大型数据库检索视频剪辑的挑战。使用二值化的Fisher向量作为全局签名,我们提出了三个新颖的贡献。首先,利用查询图像包含的杂波比数据库视频少得多的事实,显示了用于二值化Fisher向量的非对称比较方案可将检索性能提高0.27平均平均精度。其次,显示出基于帧的局部特征在镜头上的聚合可实现与单个帧上的那些局部特征的聚合相比可实现的检索性能,同时将检索延迟和内存需求降低了三倍以上。比较了几种镜头聚集策略,结果表明大多数镜头性能均相同。第三,场景聚合与镜头签名相结合,可以在可比的性能下更快地实现一个数量级的检索。场景聚合还优于最近提出的随机组聚合。

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