Scene Recognition for Urban Search and Rescue using Global Description and Semi-Supervised Labelling

J. Sanchez-Diaz, Francisco Javier Gañán, R. Tapia, J. R. M. Dios, A. Ollero
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Abstract

Autonomous aerial robots for urban search and rescue (USAR) operations require robust perception systems for localization and mapping. Although local feature description is widely used for geometric map construction, global image descriptors leverage scene information to perform semantic localization, allowing topological maps to consider relations between places and elements in the scenario. This paper proposes a scene recognition method for USAR operations using a collaborative human-robot approach. The proposed method uses global image description to train an SVM-based classification model with semi-supervised labeled data. It has been experimentally validated in several indoor scenarios on board a multirotor robot.
基于全局描述和半监督标签的城市搜救场景识别
用于城市搜索和救援(USAR)行动的自主空中机器人需要强大的定位和地图感知系统。虽然局部特征描述被广泛用于几何地图构建,但全局图像描述符利用场景信息执行语义定位,允许拓扑地图考虑场景中地点和元素之间的关系。本文提出了一种基于人机协作的USAR作战场景识别方法。该方法利用全局图像描述训练基于svm的半监督标记数据分类模型。该方法已在多旋翼机器人的多个室内场景中进行了实验验证。
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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