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Robust object re-identification with Grassmann subspace feature for key points aggregation

机译:具有Grassmann子空间功能的强大对象重新识别,可用于关键点聚合

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Object Re-identification is a key technology for enabling mobile visual search, virtual reality and augmented reality, and a variety of security and surveillance applications. One key problem in re-identification is to have effective key point feature aggregation schemes that can preserve recall performance in short listing, while offering indexing and hashing efficiency. In the MPEG Compact Descriptor for Visual Search (CDVS) Standardization effort, the Scalable Compressed Fisher Vector (SCFV) was proved to be most efficient in this role. In this paper we develop a novel aggregation scheme that captures the subspaces where key points reside, and uses the Grassmannian distance metric to discriminate the aggregated information. Simulation demonstrates that the proposed scheme captures discriminative information complementary to the Fisher Vector (FV) aggregation, and can significantly improve the matching performance.
机译:对象重新识别是一项关键技术,可用于实现移动视觉搜索,虚拟现实和增强现实以及各种安全和监视应用程序。重新识别中的一个关键问题是拥有有效的关键点特征聚合方案,该方案可以在入围时保留召回性能,同时提供索引和哈希效率。在MPEG用于视觉搜索的紧凑描述符(CDVS)标准化工作中,可伸缩压缩Fisher向量(SCFV)被证明在该角色中最有效。在本文中,我们开发了一种新颖的聚合方案,可捕获关键点所在的子空间,并使用Grassmannian距离度量来区分聚合的信息。仿真表明,该方案捕获了与Fisher向量(FV)聚合互补的判别信息,并且可以显着提高匹配性能。

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