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y Fast Matching of Binary Descriptors for Large-scale Applications in Robot Vision

机译:Y基二元描述符在机器人视觉中进行大型应用的快速匹配

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摘要

The introduction of computationally efficient binary feature descriptors has raised new opportunities for real-world robot vision applications. However, brute force feature matching of binary descriptors is only practical for smaller datasets. In the literature, there has therefore been an increasing interest in representing and matching binary descriptors more efficiently. In this article, we follow this trend and present a method for efficiently and dynamically quantizing binary descriptors through a summarized frequency count into compact representations (called fsum) for improved feature matching of binary pointfeatures. With the motivation that real-world robot applications must adapt to a changing environment, we further present an overview of the field of algorithms, which concerns the efficient matching of binary descriptors and which are able to incorporate changes over time, such as clustered search trees and bag-of-features improved by vocabulary adaptation. The focus for this article is on evaluation, particularly large scale evaluation, compared to alternatives that exist within the field. Throughout this evaluation it is shown that the fsum approach is both efficient in terms of computational cost and memory requirements, while retaining adequate retrieval accuracy. It is further shown that the presented algorithm is equally suited to binary descriptors of arbitrary type and that the algorithm is therefore a valid option for several types of vision applications.
机译:计算有效的二进制特征描述符的引入为现实世界机器人视觉应用程序提出了新的机会。然而,二进制描述符的蛮力特征匹配仅适用于较小的数据集。在文献中,因此,更有效地表示和匹配二元描述符的越来越令人兴趣。在本文中,我们遵循该趋势并通过概述频率计数归一下和动态地量化二进制描述符的方法,进入紧凑的表示(称为FSUM),以改进二进制码针的特征匹配。通过现实世界机器人应用程序必须适应变化环境的动机,我们进一步介绍了算法领域的概述,涉及二进制描述符的有效匹配,并且能够随时间结合改变,例如集群搜索树词汇改编和功能袋改善。与现场内存在的替代方案相比,本文的重点是评估,特别是大规模评估。在整个评估过程中,表明FSUM方法在计算成本和内存要求方面都有高效,同时保留充分的检索精度。进一步示出了呈现的算法同样适用于任意类型的二进制描述符,因此该算法是用于几种类型的视觉应用的有效选择。

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