Confidence-based cue integration for visual place recognition

Andrzej Pronobis, B. Caputo
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引用次数: 83

Abstract

A distinctive feature of intelligent systems is their capability to analyze their level of expertise for a given task; in other words, they know what they know. As a way towards this ambitious goal, this paper presents a recognition algorithm able to measure its own level of confidence and, in case of uncertainty, to seek for extra information so to increase its own knowledge and ultimately achieve better performance. We focus on the visual place recognition problem for topological localization, and we take an SVM approach. We propose a new method for measuring the confidence level of the classification output, based on the distance of a test image and the average distance of training vectors. This method is combined with a discriminative accumulation scheme for cue integration. We show with extensive experiments that the resulting algorithm achieves better performances for two visual cues than the classic single cue SVM on the same task, while minimising the computational load. More important, our method provides a reliable measure of the level of confidence of the decision.
基于自信的线索整合视觉位置识别
智能系统的一个显著特征是它们能够分析给定任务的专业水平;换句话说,他们知道他们所知道的。为了实现这一雄心勃勃的目标,本文提出了一种识别算法,该算法能够测量自身的置信度,并在不确定的情况下寻求额外的信息,从而增加自己的知识,最终达到更好的性能。重点研究了拓扑定位的视觉位置识别问题,并采用支持向量机方法。我们提出了一种基于测试图像的距离和训练向量的平均距离来度量分类输出置信水平的新方法。该方法结合了判别积累机制进行线索整合。我们通过大量的实验表明,在相同的任务上,所得到的算法在两个视觉线索上比经典的单线索支持向量机取得了更好的性能,同时最小化了计算负荷。更重要的是,我们的方法提供了决策置信度的可靠度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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