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Localization of Mobile Robots with Topological Maps and Classification with Reject Option using Convolutional Neural Networks in Omnidirectional Images

机译:使用卷积神经网络在全向图像中对具有拓扑图的移动机器人进行本地化并使用拒绝选项进行分类

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In this paper, we propose a new localization and navigation approach for mobile robots using topological maps and classification with reject option applying convolutional neural networks (CNN) for feature extraction in omnidirectional images. The use of CNN as feature extractor is based on the concept of Transfer Learning. Reject option is used to improve the task of the classifiers, querying information from the topological map. With the objective of evidencing the high performance of the technique considered, an analysis is made between several feature extractors and classifiers, established in the literature. Parameters such as processing time and accuracy are calculated to prove the credibility and effectiveness of the approach, since these properties are fundamental in the analysis of embedded systems. Considering the proposed approach, CNN stands out among the other feature extractors, as it generated the best results in extraction time and accuracy. It obtained an average accuracy of 99.86% and an extraction time of 0.1517s, proving to be a relevant method for the localization and navigation activities.
机译:在本文中,我们提出了一种新的针对移动机器人的定位和导航方法,该方法使用拓扑图和分类(带有拒绝选项)应用卷积神经网络(CNN)进行全方向图像特征提取。 CNN作为特征提取器的使用基于“转移学习”的概念。拒绝选项用于改善分类器的任务,从拓扑图中查询信息。为了证明所考虑技术的高性能,对文献中建立的几个特征提取器和分类器之间进行了分析。计算出诸如处理时间和精度之类的参数以证明该方法的可靠性和有效性,因为这些属性对于嵌入式系统的分析至关重要。考虑到提出的方法,CNN在其他特征提取器中脱颖而出,因为它在提取时间和准确性方面产生了最佳结果。它的平均准确度为99.86%,提取时间为0.1517s,被证明是进行定位和导航活动的一种相关方法。

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