一种基于外观的判别闭环方法

T. A. Ciarfuglia, G. Costante, P. Valigi, E. Ricci
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引用次数: 14

摘要

位置识别模块是SLAM系统的基本组成部分,不正确的闭环可能导致轨迹估计的严重误差。在基于外观的方法中,通常使用词袋方法来识别位置。本文介绍了一种改进闭环检测性能的新算法,该算法采用一组离线学习的视觉词权值,根据一个判别准则来提高闭环检测性能。提出的基于大余量范式的权重学习方法可以用于一般相似函数,并且在训练阶段依赖于有效的在线学习算法。由于计算的权重通常非常稀疏,因此在识别时的计算成本也会有所增加。我们在公开可用的数据集上进行的实验表明,判别权值导致闭环检测结果比传统的词袋方法更准确,并且我们的位置识别方法与最先进的方法具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A discriminative approach for appearance based loop closing
The place recognition module is a fundamental component in SLAM systems, as incorrect loop closures may result in severe errors in trajectory estimation. In the case of appearance-based methods the bag-of-words approach is typically employed for recognizing locations. This paper introduces a novel algorithm for improving loop closures detection performance by adopting a set of visual words weights, learned offline accordingly to a discriminative criterion. The proposed weights learning approach, based on the large margin paradigm, can be used for generic similarity functions and relies on an efficient online leaning algorithm in the training phase. As the computed weights are usually very sparse, a gain in terms of computational cost at recognition time is also obtained. Our experiments, conducted on publicly available datasets, demonstrate that the discriminative weights lead to loop closures detection results that are more accurate than the traditional bag-of-words method and that our place recognition approach is competitive with state-of-the-art methods.
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