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On aggregation of local binary descriptors

机译:关于局部二元描述符的聚合

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摘要

This paper addresses the problem of aggregating local binary descriptors for large scale image retrieval in mobile scenarios. Binary descriptors are becoming increasingly popular, especially in mobile applications, as they deliver high matching speed, have a small memory footprint and are fast to extract. However, little research has been done on how to efficiently aggregate binary descriptors. Direct application of methods developed for conventional descriptors, such as SIFT, results in unsatisfactory performance. In this paper we introduce and evaluate several algorithms to compress high-dimensional binary local descriptors, for efficient retrieval in large databases. In addition, we propose a robust global image representation; Binary Robust Visual Descriptor (B-RVD), with rank-based multi-assignment of local descriptors and direction-based aggregation, achieved by the use of L1-norm on residual vectors. The performance of the B-RVD is further improved by balancing the variances of residual vector directions in order to maximize the discriminatory power of the aggregated vectors. Standard datasets and measures have been used for evaluation showing significant improvement of around 4% mean Average Precision as compared to the state-of-the-art.
机译:本文讨论了移动方案中大规模图像检索的局限性二进制描述符的问题。二进制描述符越来越受欢迎,特别是在移动应用中,因为它们提供高匹配速度,具有小的内存占用空间,并快速提取。但是,在如何有效地聚合二进制描述符时已经完成了很少的研究。直接应用为传统描述符开发的方法,例如筛选,导致表现不令人满意。在本文中,我们介绍并评估了多个算法来压缩高维二进制本地描述符,以便在大型数据库中有效检索。此外,我们提出了一种强大的全球图像表示;二进制强大的视觉描述符(b-rvd),具有基于秩的本地描述符和基于方向的聚合的多分配,通过在剩余向量上使用L1-NOM来实现。通过平衡残留矢量方向的差异来进一步改善B-RVD的性能,以便最大化聚合向量的辨别力。标准数据集和措施已被用于评估,显示与最先进的平均平均精度约为4%的平均精度大约。

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